Accepted Manuscript Cumulative exposure to childhood stressors and subsequent psychological distress. An analysis of US Panel Data Emma Björkenstam, Bo Burström, Lars Brännström, Bo Vinnerljung, Charlotte Björkenstam, Anne R. Pebley PII:
S0277-9536(15)30058-7
DOI:
10.1016/j.socscimed.2015.08.006
Reference:
SSM 10189
To appear in:
Social Science & Medicine
Received Date: 2 May 2015 Revised Date:
29 July 2015
Accepted Date: 3 August 2015
Please cite this article as: Björkenstam, E., Burström, B., Brännström, L., Vinnerljung, B., Björkenstam, C., Pebley, A.R., Cumulative exposure to childhood stressors and subsequent psychological distress. An analysis of US Panel Data, Social Science & Medicine (2015), doi: 10.1016/j.socscimed.2015.08.006. This is a PDF file of an unedited manuscript that has been accepted for publication. As a service to our customers we are providing this early version of the manuscript. The manuscript will undergo copyediting, typesetting, and review of the resulting proof before it is published in its final form. Please note that during the production process errors may be discovered which could affect the content, and all legal disclaimers that apply to the journal pertain.
ACCEPTED MANUSCRIPT Cumulative exposure to childhood stressors and subsequent psychological distress. An analysis of US Panel Data Emma Björkenstam1, 2, Bo Burström2, Lars Brännström3, Bo Vinnerljung3, Charlotte Björkenstam4, Anne R. Pebley1 1
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Department of Community Health Sciences, Fielding School of Public Health and California Center for Population Research, University of California Los Angeles, Los Angeles, California, United States 2 Department of Public Health Sciences, Division of Social Medicine, Karolinska Institutet, Stockholm, Sweden 3 Department of Social Work, Stockholm University, Stockholm, Sweden 4 Department of Epidemiology, Fielding School of Public Health, University of California Los Angeles, Los Angeles, California, United States
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Corresponding author: Emma Björkenstam Department of Community Health Sciences, Fielding School of Public Health and California Center for Population Research, University of California Los Angeles, Los Angeles, California, United States Telephone: +1 (323)229-6239 E-mail:
[email protected]
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Cumulative exposure to childhood stressors and subsequent psychological
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distress. An analysis of US Panel Data
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Key words: adverse childhood experience, childhood stressors, psychological distress, depression,
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socioeconomic, latent class analysis,
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ACCEPTED MANUSCRIPT Abstract
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Research has shown that childhood stress increases the risk of poor mental health later in life. We
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examined the effect of childhood stressors on psychological distress and self-reported depression
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in young adulthood. Data were obtained from the Child Development Supplement (CDS) to the
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national Panel Study of Income Dynamics (PSID), a survey of US families that incorporates data
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from parents and their children. In 2005 and 2007, the Panel Study of Income Dynamics was
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supplemented with two waves of Transition into Adulthood (TA) data drawn from a national
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sample of young adults, 18–23 years old. This study included data from participants in the CDS
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and the TA (n=2,128), children aged 4-13 at baseline. Data on current psychological distress was
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used as an outcome variable in logistic regressions, calculated as odds ratios (OR) with 95%
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confidence intervals (CI). Latent Class Analyses were used to identify clusters based on the
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different childhood stressors. Associations were observed between cumulative exposure to
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childhood stressors and both psychological distress and self-reported depression. Individuals
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being exposed to three or more stressors had the highest risk (crude OR for psychological
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distress: 2.49 (95% CI: 1.16-5.33), crude OR for self-reported depression: 2.07 (95% CI: 1.15-
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3.71). However, a large part was explained by adolescent depressive symptoms. Findings support
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the long-term negative impact of cumulative exposure to childhood stress on psychological
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distress. The important role of adolescent depression in this association also needs to be taken
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into consideration in future studies.
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ACCEPTED MANUSCRIPT Introduction
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Experiences of stressful or traumatic childhood experiences, often referred to as adverse
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childhood experiences (ACEs), can negatively affect childhood development, and a series of
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studies, primarily in the field of psychiatry, have shown that ACEs have negative long-term
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health and social consequences throughout the life course (Anda, 2008; Bellis et al., 2014;
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Chapman et al., 2004; Green et al., 2010; McLaughlin et al., 2010; Slopen et al., 2014;
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Wadsworth & Butterworth, 2006). These studies have shown that children exposed to ACEs have
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increased risk for depression (Anda, 2008; Chapman et al., 2004; Dube et al., 2003), alcohol
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abuse (Anda, 2008; Dube et al., 2003), and psychological distress in general (Bellis et al., 2014).
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Research has pointed out several explanations for the association between childhood stress
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and negative health. Evidence from neurobiology suggests that early life stress causes enduring
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brain dysfunction which, in turn, affects health and quality of life throughout the lifespan (Anda,
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2008). This is congruent with the allostatic load theory, suggesting that the neurobiological stress
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management systems can be permanently altered by cumulative or chronic stress in childhood
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(Beckie, 2012; McEwen, 2004). Psychological and psychosocial explanations on the other hand
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suggest that childhood adversity may damage emotional regulation and concept of self-worth,
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reducing the child’s self- esteem (Wadsworth & Butterworth, 2006), leading to an increased
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vulnerability for psychological distress. Another discussed explanation for the relationship is that
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the physical or mental illness in childhood may precede the childhood stressors (e.g. marital
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distress or financial problem) that in turn lead to health problems in young adulthood (Corman &
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Kaestner, 1992).
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Prior research has shown that people from disadvantaged family backgrounds are more likely
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to accumulate risk factors associated with subsequent health problems, compared to peers born to
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more privileged families (Anda, 2008; Halldorsson et al., 2000; Kuh et al., 2004; McMunn et al.,
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2001).
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A life course approach offers a framework for studying long-term health effects of physical or social exposures during gestation, childhood, adolescence, young adulthood and later adult life
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(Kuh et al., 2003; Lynch & Smith, 2005). It emphasizes the importance of time and timing in
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understanding the causal links between exposure and outcome (Lynch & Smith, 2005). There are
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several hypotheses on how the effect of exposure can be linked to health-related outcomes.
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Accumulation of risks over the life span has been suggested as one etiologic pathway to
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persistent health problems (Kuh et al., 2003). Risk factors in childhood tend to occur in clusters,
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rather than as single events or experiences (Anda, 2008; Bjorkenstam et al., 2013; Dong et al.,
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2004), and have a strong positive association with psychiatric and psychological distress (Anda,
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2008; Bjorkenstam et al., 2013; Chapman et al., 2004; Dube et al., 2003; Slopen et al., 2014).
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Although much is already known about childhood stressors and the risk for future adverse health,
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less is known on what clusters of stressors are most closely associated with subsequent distress.
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The current study uses data from the Panel Study of Income Dynamics (PSID) to examine the
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association between cumulative exposure to childhood stressors, and risk of psychological
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distress in early adulthood. The studied indicators of childhood stress were parental death, single
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parent household, fair or poor self-rated health in childhood, multiple school changes during the
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school year, teenage parenthood, household public assistance recipiency, and long-term parental
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unemployment. The indicators chosen were based on prior research that has shown them to have
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significant adverse health or social implications (Berg et al., 2014; Conger et al., 1993; Duncan &
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Brooks-Gunn, 1997; Halldorsson et al., 2000; Hodgkinson et al., 2014; Kuh et al., 2004; Sleskova
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et al., 2006; Wadsworth & Butterworth, 2006; Weitoft et al., 2003; Wood et al., 1993).
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We seek to answer the following research questions: -
psychological distress in young adulthood in a large nationally-representative US sample?
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Is there an association between cumulative exposure to childhood stressors and
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What clusters of childhood stressors are most closely associated with future psychological distress? 4
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Study population
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We used data from the three waves of the Child Development Supplement (CDS-I through CDS-
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III) and the four waves of the Transition into Adulthood (TA) surveys from the Panel Study of
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Income Dynamics (PSID). The PSID is a longitudinal study that began in 1968 with a nationally
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representative sample of about 5,000 families in the United States, with an oversampling of
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African American and low-income families (McGonagle et al., 2012). The household heads
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(defined by PSID as the person, at least 16 years old, with the most financial responsibility in the
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household) were reinterviewed annually until 1997 and every other year thereafter.
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In 1997, the PSID began collecting data on a random sample of the PSID families that had
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children under the age of 13 in the Child Development Study (CDS)-I. The CDS was designed as
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a nationally representative sample of children in the United States (McGonagle & Sastry, 2014;
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McGonagle et al., 2012). All PSID families with a child aged 0-12 in the calendar year 1997 were
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invited to participate, with up to two chosen children per family. Subsequent waves of interviews
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were carried out in 2002-2003 and 2007-2008, in each case including only children who still were
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under the age of 18 at the time of the study wave. Most information in the CDS is collected from
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the participant’s primary caregiver, who must be living with the child. In over 90% this is the
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child’s biological mother. The children are also interviewed. The entire CDS sample size in 1997
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is approximately 3,500 children residing in 2,400 households. A follow-up study with these
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children and families was conducted in 2002–03 (CDS-II), and another one in 2007-2008 (CDS-
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III). No new children were included in CDS-II and CDS-III.
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In 2005, another supplementary study to the PSID was introduced, the Transition to
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Adulthood (TA) study (Institute for Social Research). The TA component comprises young
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adults who were children in the CDS and subsequently turned 18. These former children
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themselves answer all questions in the TA. The TA data have been collected every other year
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since 2005, with a final wave planned for 2015 (McGonagle & Sastry, 2014). 5
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The sample used in this study combined data from all three waves of the CDS, and all four available waves of the TA. Our sample included 2,128 individuals, born between 1984 and 1993,
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who participated in the first CDS and at least in one of the TA. Of these individuals, 88% were
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reinterviewed in CDS-II, and 36% in CDS-III (due to the fact that when the child turned 18,
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she/he were no longer eligible to answer the CDS) (for additional information on data
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missingness, see supplementary table 1).
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Exposure: childhood stressors
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The studied indicators are principally based on questions answered by the primary caregivers
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(PCGs) or other care givers (OCG). We used questions asked when the children were between the
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ages of 4 and 14. Thus, we used CDS 1997 for all participants (during this year children were
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between the ages of 4 and 13), CDS 2002 for participants born between 1988 and 1993 (children
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were between the ages of 9 and 14) and CDS 2007 for those born in 1993 (children were 14 years
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old). Supplementary table 2 illustrates which waves were used for the different birth cohorts.
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Additionally, the original PSID studies were used to obtain information household public
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assistance recipiency and long-term parental unemployment (see below).
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To assess cumulative exposure to the studied indicators, the total number was summed. For each indicator, ever reporting an indicator during any interview was considered one exposure.
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Parental death: Death of a parent is a traumatic life event that is likely to increase stress levels in
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children (Berg et al., 2014). Captured from the three waves of the CDS, the PCGs were asked if
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the child’s biological mother and father were still alive. This indicator was coded as 1 if one or
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both parents died and 0 otherwise.
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Single parent household: Growing up in a single parent family has become increasingly
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common, and it may entail disadvantages for the child in terms of socioeconomic circumstances
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and health (Weitoft et al., 2003). In the CDS, the PCGs were asked whether the child was living 6
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only one parent at the time of the interview this indicator was coded as 1.
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Fair or poor self-rated health in childhood: Poor child health is often associated with childhood
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adversity in terms of poverty and family economic adversity (Duncan & Brooks-Gunn, 1997).
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The PCGs were asked about the child’s health in general, based on the survey questions: “In
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general, would you say [child’s name]’s health is excellent, very good, good, fair, or poor?”.
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Two or more school changes during the school year: Frequent changes of residence during
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childhood implying that the child changed schools, are associated with an increased risk of
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psychological distress (Wood et al., 1993). PCGs were asked: “Since the beginning of the school
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year, how many times has your child changed schools?” This indicator was defined as two or
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more school changes.
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Child’s own teenage parenthood: Teenage parenthood is associated with excess stress, and risk
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of adverse development in many areas (Hodgkinson et al., 2014). For this indicator, we used
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questions from both the CDS and the TA for both female and male children. Teenage parenthood
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was recorded as yes if one or more of the following was true: a) Have you ever been pregnant or
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fathered a child? (from CDS); b) Have you ever been pregnant or fathered a child, and if so, how
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old were you when the first child was born? (from TA). Pregnancies from age 12 up until age 18
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were considered.
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Household public assistance recipiency: Many studies indicate that financial problems during
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childhood may have long-term influences on physical and mental health (Halldorsson et al.,
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2000; Kuh et al., 2004; Wadsworth & Butterworth, 2006) . Receiving public assistance may be
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considered an indicator of poverty (Ringback Weitoft et al., 2008) and children whose families
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have received public assistance tend to have less satisfactory long-term health (Duncan &
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Brooks-Gunn, 1997; Ringback Weitoft et al., 2008). An individual was classified as a recipient if
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her/his family had received public assistance, including food stamps, ADF/AFDC/TANF,
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Supplemental Security Income (SSI), Social Security Income or other welfare within the
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between the ages of 0 and 14.
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Long-term parental unemployment: Through continued stress, parental unemployment has been
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associated with increased risk of psychological distress in their children (Conger et al., 1993;
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Sleskova et al., 2006). In the PSID, the parents were annually asked if they had been unemployed
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and, if so, for how many weeks. This indicator was defined as an unemployment spell of more
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than six months during a year, i.e. if an individual had been unemployed for less than six month,
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the child was not classified as exposed to this indicator. This indicator was obtained when the
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child was between the ages of 0 and 14.
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Outcomes
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Psychological distress was assessed using two different measures. First we used the K6 scale, a
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self-rated 6-item scale that screens for mood and anxiety disorders (Kessler et al., 2002). K6 was,
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together with the K10 scale, developed for use in the US National Health Interview Survey. This
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measure is specifically designed for population-based surveys (Kessler et al., 2002). It has been
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validated in the United States and around the world as a measure of psychological distress, and it
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is used in many population-based surveys to estimate the prevalence of mental illness (Kessler et
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al., 2002; Kessler et al., 2010a). Respondents are asked how often during the past 30 days they
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felt: so sad that nothing could cheer them up (item A); nervous (item B); restless or fidgety (item
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C); hopeless (item D); worthless (item E); that everything was an effort (item F). Each item is
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scaled from 0 (none of the time) to 4 (all of the time). These six items were selected from a pool
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of 135 items derived from the symptoms used in the diagnosis of major depression and
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generalized anxiety disorder. The total psychological distress score is computed by summing up
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the six items scores. Thus, the final score ranges from 0 to 24. Previous research has shown that
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dichotomous scoring of responses in the range 13+ versus 0–12 discriminates between
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respondents with and without serious psychological distress with good accuracy (Kessler et al.,
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2003; Kessler et al., 2010a), with scores 1-7 indicating a low score, 8-12 indicating a likelihood
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of having mild to moderate mental illness, and a score of 13 and more indicating serious mental
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illness. In this study, we dichotomized K6 and used the 13 as the cut-point indicating
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psychological distress.
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As a second measure we used a question on indications of depression included in each TA study. In young adulthood, individuals were asked: “In the past 12 months, have you had two
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weeks or longer when nearly every day you felt sad, empty, or depressed for most of the day?”.
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The responses were dichotomized as “yes’ and “no’.
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Potential confounders
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In the analyses, we controlled for several potentially confounding factors, including age
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(calculated based on birth year), sex, and parental socioeconomic position (SEP). Low socioeconomic position (SEP) in childhood is associated with increased risks of mental
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disorder in adulthood (Marmot et al., 2001; McMunn et al., 2001) and is also associated with
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exposure to a range of risk factors for both somatic ill-health and mental disorders (Bjorkenstam
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et al., 2013). Hence, we adjusted for socioeconomic background, including parental education,
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income and occupation during the respondent’s childhood (when the child was 15 years old).
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Highest attained parental educational level was grouped into the following categories: 0-6th grade,
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7th-11th grade, high school graduate, post-high school education, and missing. Parental occupation
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was based on the PCG’s or the OCG’s self-reported occupation at the time of the interview. To
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create occupational groups across multiple PSID waves, we used the Cross-National Equivalent
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File’s (CNEF) 2-digit occupational codes prepared at the Ohio State University (Lillard et al.,
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2015). From a total of approximately 100 codes, we collapsed occupations into seven larger
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groups: professional, office, administrative, service/manual, skilled/semi-skilled manual, not
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applicable (non-working) and missing/item non-response. Finally, family income was obtained
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from the PSID main family data. As this variable was obtained over a 10-year period, we used
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consumer-price index to calculate income in real dollars, i.e., to remove the effects of inflation.
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Prior research has shown that most mental disorders begin early in life, usually during adolescence, even if they might not be discovered until later in life (Kessler et al., 2005; Suvisaari
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et al., 2009). In the analyses, we adjusted for adolescent depressive symptoms based on the short
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form of the Children’s Depression Inventory (CDI), which was included in the second and third
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wave of the CDS. The CDI is a psychological assessment that rates the severity of symptoms
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related to depression and/or dysthymic disorder in children and adolescents. This widely used
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assessment with good reliability and validity was developed by Kovacs and was first published in
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1979 (Allgaier et al., 2012). Adolescents were given 10 sets of three statements and were asked to
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select one statement from each set to indicate how they had felt over the last two weeks.
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Measured symptoms included being bothered by things; having no friends; hating oneself;
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disliking how one looks; and feeling sad, alone, like crying, unloved, that things never work out,
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and that they do things wrong. Responses were summarized, resulting in a scale ranging from 0 to
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20. When dichotomizing this variable, a cutoff≥3 was chosen (Allgaier et al., 2012).
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Statistical analysis
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Logistic regression analyses were used to statistically evaluate the association between childhood
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stressors and psychological distress and self-reported depression, presented as odds ratios (OR)
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with 95% confidence intervals (CI). Each indicator was analyzed separately. We also analyzed
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cumulative effects of the studied indicators, in which the total number of indicators was summed.
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As the PSID is oversampled for African American and low-income families, we used weights
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provided by the PSID to allow the sample to approximate a representative sample of the US
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population, i.e. to adjust analyses for attrition and oversampling of low-income families.
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Binary logistic regression models based on the KHB method proposed by Karlson, Holm and Breen (Karlson et al., 2012) were used to estimate OR. The KHB method ensures that the crude 10
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and adjusted coefficients presented are measured on the same scale. As the PSID data are
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clustered, i.e. there are up to two siblings per household, our analysis must take within family
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correlation into account. Therefore all models used robust standard errors obtained by using the
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cluster-option in STATA. There were some missing data for the different childhood stressors. We used both STATA’s
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multiple imputation command with iteratively chained equations, and the MI and MIANALYZE
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procedure in SAS to impute missing information (Sterne et al., 2009). However, regression
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analyses including the imputed values generated similar results as the original data. Thus, except
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for data on adolescent depressive symptoms, we only present analyses based on the original data.
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we conducted Latent Class Analysis (LCA), using Latent Gold 4.5 (Statistical Innovations Inc.,
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Belmont, MA). The LCA included the 2,066 individuals, for which we had no missing data. The
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goal of LCA is to identify the smallest number of latent classes that adequately describes the
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association among the observed indicators (Magidson & Vermunt, 2004). We started with the
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most parsimonious 1-class model and fitted successive models with increasing numbers of
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classes. There are several strategies available to determine the number of classes (Magidson &
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Vermunt, 2001; Tein et al., 2013). Goodness-of-fit statistics were used to select the optimal
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model. We examined the Bayesian information criterion (BIC), the p-value-based likelihood ratio
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tests, classification error, conditional bootstrap, reduction in L2, and the bivariate residuals
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(BVRs) in order to determine the best-fitting model (Magidson & Vermunt, 2001, 2004). We first
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fitted a one-class solution followed by a 2-class solution, and so on, until we reached the best
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solution. We finally ended up with a 4-class model with two covariates (number of siblings and
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sex), based on the values of the bootstrap p-value, the entropy R2, conditional bootstrap and the
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BVRs (Tein et al., 2013) (table 1).
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The next step was to determine whether there were significant differences in ORs across the
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LCA classes. The modal assignment rule was used to assign cases to classes (Magidson &
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Vermunt, 2004).
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Results
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Table 2 provides both unweighted and weighted descriptive characteristics for the 2,128 sample
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members. The sample was equally distributed between the sexes. Forty-three percent of the
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respondents reported symptoms related to depression in adolescence. Approximately half of the
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PCGs attended school after high school, and one in five belonged to the high SEP group
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(measured from occupation) during the participant’s childhood. Around 40 percent (52 percent
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unweighted) had experienced at least one of the indicators of childhood stress. Living in a single
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parent household during childhood was common (28 percent), as was growing up in a household
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receiving public assistance (26 percent). Among the six percent who had experienced three or
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more indicators in childhood, the combination of single parent household, household public
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assistance and parental unemployment was most common. When comparing the unweighted and
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weighted numbers in table 2, it appeared that all indicators were more common in our sample
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than in the total population as a whole. This was probably due to the oversampling of low income
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and African American families.
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The studied childhood stressors were highly inter-correlated (supplementary table 3). Specifically single-parent household and public assistance were highly correlated. Table 3 shows the distribution of psychological distress (based on the K6 scale and self-
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reported depression), by childhood stressors. In total, seven percent reported a K6 scale of 13 or
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more. Those who had experienced one or more indicators reported psychological distress more
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frequently than did those who had not. As the number of indicators increased, the psychological
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distress rate increased in a graded fashion, e.g. 14 percent of those with three or more indicators
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reported psychological distress.
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Seventeen percent in the sample reported clear symptoms of depression in the last 12
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months. As in the case of K6 scores, people who had experienced childhood stress reported
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indications of depression to a larger extent. Among young adults with three or more indicators,
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24 percent reported depression. The corresponding proportion of those with no indicators was 14 13
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percent. Individuals who had depressive symptoms in adolescence more often also reported
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psychological distress in young adulthood. Results in table 4 suggest an association between almost all of the studied childhood
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stressors and psychological distress and self-reported depression. Long-term parental
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unemployment was related to the highest odds of psychological distress crude OR: 2.70; (95%
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CI: 1.14-6.37) compared with those not experiencing parental unemployment, followed by
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teenage parenthood crude OR: 2.67 (95% CI: 1.37-5.19). After adjustments were made for social
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and demographic variables including parental SEP, and for symptoms of depression in
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adolescence (Model II), OR decreased for a majority of the studied indicators and fewer were
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statistically significant. The OR for parental unemployment remained significant (OR for
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psychological distress: 2.67; 1.11-6.43). The ORs indicated an increased risk of psychological
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distress with cumulative number of indicators. The crude ORs revealed that, compared to
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adolescents with no indicators, those with one or two indicators had slightly increased risk of
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psychological distress based on the K6 score (not statistically significant). Those who
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experienced more indicators had 2.5 times higher risk of psychological distress (95% CI: 1.16-
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5.33) (Model I).
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As for the outcome of self-reported depression (table 4), experiencing teenage parenthood
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was associated with the highest OR, followed by long-term parental unemployment and
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household receipt of public assistance. Further, the ORs increased in a graded fashion as the
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number of indicators increased.
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Latent class analysis
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Figure 1 depicts the identified classes along with the conditional probabilities for each of the
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exposure variables. The classes were labeled according to the levels of the conditional
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probabilities, and cases were assigned to classes using the modal assignment rule (Magidson &
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Vermunt, 2001, 2004). Around 68 % (n =1,413) of the individuals were assigned class 1. This 14
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conditional probabilities for the exposure variables are more or less zero for all indicators. As
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shown in Figure 1, class 2 represents individuals who were mainly exposed to household public
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assistance and single parent families (approximately 21% of the sample (n=434)). Class 3 is
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characterized by people who were mainly exposed to single parent households (around 7% (n =
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151)). Finally, class 4 represents the 3 % (n=69) experiencing teenage parenthood, single parent
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households and household public assistance. In this class, girls constituted 85 %, whereas for
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other classes the distribution was similar between the sexes.
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Particularly individuals in class 4 reported psychological distress (table 3). Over 40 percent of the individuals in class 4 reported to have been depressed in the past 12 months, and 13
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percent scored above 12 on the K6 scale. Individuals in class 4 had a fourfold risk of self-reported
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depression compared to class 1 (crude OR: 4.42; 95% CI: 2.15-9.09). A substantial risk increase
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remained even after controlling for demographic variables (OR: 3.61; 95% CI: 1.78-7.31).
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Discussion
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Our study of 2,128 young adults shows that our indicators of childhood stress were associated
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with an increased risk of psychological distress. The risk of psychological distress increased with
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higher number of indicators. Application of LCA yielded four classes, where one class,
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characterized by exposure to teenage parenthood, household public assistance and single parent
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household, presented particularly increased risks for psychological distress in terms of self-
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reported depression. Findings further suggest that the effects of childhood stress on psychological
345
distress in young adults to a large extent are explained by adolescent depression.
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When the indicators were studied separately, experience of teenage parenthood was
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particularly associated with future psychological distress. In our sample two thirds of the ones
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reporting to have experienced teenage parenthood were girls, and when stratifying the analyses
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by sex (data not shown), females with teenage parenthood had slightly higher ORs than males
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who experienced teenage parenthood. Studies have shown that teenage parenthood may be
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associated with adverse outcomes later in life, including single parenthood, and enduring long-
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term poverty (Felice et al., 1999; Hodgkinson et al., 2014), both which are associated with
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psychological distress (Felice et al., 1999; Hodgkinson et al., 2014). However, important
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selection factors may contribute to both teenage pregnancy and later ill health. Public health
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policies in the US and UK have included teenage parenthood as a national public health problem
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requiring targeted interventions (Felice et al., 1999).
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Consistent with prior research in various settings, both from the US and Europe (Anda, 2008;
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Bellis et al., 2014; Bjorkenstam et al., 2013; Chapman et al., 2004; Dube et al., 2003; Slopen et
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al., 2014), we found indications of a graded relationship between cumulative exposure to
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childhood stressors and psychological distress. These findings provide evidence that childhood
361
stressors often are interrelated rather than occurring separately. This information has important
362
implications for intervention because it means that prevention or amelioration of only a single
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stressor in youths exposed to many stressors is unlikely to have important preventive effects
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(Green et al., 2010; Kessler et al., 2010b). In an attempt to disentangle the complex associations between social factors and childhood
366
stress, we adjusted for important parental variables including parental education, occupation and
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income. After these adjustments were made, risk estimates decreased to a large extent. Thus, our
368
findings support previous research (Gilman et al., 2002; Marmot et al., 2001) that has shown an
369
association between parental SEP and offspring’s mental health.
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The ORs were attenuated when taking adolescent depressive symptoms into account.
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Consistent with prior research (Kessler et al., 2005; Suvisaari et al., 2009), depressive symptoms
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in adolescence were in themselves associated with an increased risk of subsequent psychological
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distress, also when childhood adversity and parental SEP were held constant. This result is in line
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with past research, showing that many persistent mental disorders have antecedents in
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adolescence (Kessler et al., 2005; Suvisaari et al., 2009). One could consider adolescent
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depression an outcome in this study. However, as adolescent depression was captured in the
377
CDS, i.e. at the same time as the exposure (and possibly even before), we chose to include it as a
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confounder instead.
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The graded relationship between cumulative exposure to the studied indicators of childhood
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stress and psychological distress was less evident when adjusting for demographic variables and
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parental SEP. An inevitable question in the interpretation of these results is why the pattern is not
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as evident as other studies have shown, i.e. the typical dose-response manner in cumulative
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exposure and psychological distress. There may be several explanations to this finding. A recent
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US study argued that using cumulative risk by summing dichotomous scores has its shortcomings
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(Evans et al., 2013), some of which we may have encountered in this study. For instance we do
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not capture the level of intensity of a particular adverse experience – for example, a parent’s
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death may have a much more profound effect on a child than changing schools -- a shortcoming
388
that was pointed out in a recent US study (Slopen et al., 2014). Moreover, we do not consider the
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timing of exposure to adversity although research on divorce, for example, suggests that the
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effects on children differ by children’s age (Amato & Keith, 1991). As an alternative approach to the cumulative risk measure, we used LCA to identify
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important subgroups with various patterns of coexisting indicators. Even though several studies
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have shown that indicators of childhood stress tend to occur in clusters rather than as single
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events, less is known about what these clusters may look like. Our LCA revealed four classes.
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We identified one risk group (class 4) with particularly pronounced ORs for psychological
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distress in terms of depression. The class was foremost represented by girls who had grown up in
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households receiving public assistance, and who had experienced teenage parenthood. Although a
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rather small class (n=69), this group had three times higher risk of self-reported depression
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compared to those with no indicators. A recent US study identified a similar group as a high-risk
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group for psychological distress, showing that adolescent parenthood is associated with a range of
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mental health problems, and that teen mothers are more likely to reside in families that are
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socially and economically disadvantaged (Hodgkinson et al., 2014). Our results reinforce the
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importance of paying attention to the psychosocial stressors faced by young mothers, when
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interacting with these women in primary care settings.
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Strengths and limitations
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The strengths of the current study include the use of the PSID, one of few nationally
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representative longitudinal data sets in the U.S. spanning the entire life course (and multiple
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generations). Another strength includes the ability to estimate latent classes to identify important
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subgroups. We were also able to take multiple measures of parental SEP into account.
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The study also has methodological weaknesses, some of which have been addressed above.
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The structure of the data means that alternative causal pathways cannot be fully discounted. Thus,
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it is possible that psychological distress in early adolescence also leads to future distress. We tried
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to handle this by adjusting for adolescent depressive symptoms. Regarding the exposure 18
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416
were only able to obtain exposure information once (i.e. in CDS-I), whereas for the younger,
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additional information was captured in the CDS-II and CDS-III. Hence, the older children may
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have been exposed to childhood adversity before the first interview took place. This potential
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misclassification of exposure may lead to a dilution. The findings in our study are also limited by
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the difficulty in truly capturing the concepts being measured. While tested and used widely, the
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measures of psychological distress are only survey instruments, and not diagnostic tools. Further,
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the prevalence of some of the indicators may be underreported, which would bias our findings
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towards the null. Finally, the assessment of cumulative adversity was not comprehensive, and
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important childhood stressors (e.g. substance abuse and crime in the home) might have been
425
omitted which would bias our results towards the null.
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Conclusion
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Despite the above limitations, the association we found between cumulative exposure to
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childhood stress and psychological distress calls for further attention. The important role of
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adolescent depression in this association also needs to be taken into consideration in future
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studies. Sources of childhood stress, including the indicators studied here, can be seen as key risk
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factors for poor outcomes that policy can address. Sufficient evidence is already available for
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governments to prioritize and invest in preventative interventions.
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Wood, D., Halfon, N., Scarlata, D., Newacheck, P., & Nessim, S. (1993). Impact of family relocation on children's growth, development, school function, and behavior. JAMA, 270, 1334-1338.
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ACCEPTED MANUSCRIPT Figures and tables
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Figure 1. Conditional Probabilites for Latent Classes
Table1. Model Fit Statistics for Latent Class Analysis L² 848.71
2 3 4 5 6 7
7,271.74 7,259.81 7,306.22 7,356.22 7,412.33 7,467.33
326.11 237.84 207.92 181.58 161.36 140.02
Classification Error Reduction in L 0.00 0.0%
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BIC(LL) 7,718.01
0.09 0.08 0.09 0.09 0.10 0.13
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Model 1
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61.6% 72.0% 75.5% 78.6% 81.0% 83.5%
2
2
Bootstrap P-value 0.000
Entropy R 1.000
0.000 0.004 0.018 0.084 0.180 0.346
0.613 0.724 0.742 0.753 0.732 0.774
ACCEPTED MANUSCRIPT Table 2. Sample characteristics of the participants in the Child Development Supplement Study of the Panel Study of Income Dynamics, absolute numbers and percent. Unweighted
Weighted
1,076 (51) 1,052 (49)
1,084 1,044
Age at baseline (i.e. 1997) 4-6 7-9 10-13
568 (27) 658 (31) 902 (42)
542.7 693.1 892.2
Adolescent depressive symptoms 0 1-2 ≥3
412 (19) 795 (37) 921 (43)
411.3 (19) 756.1 (36) 960.6 (45)
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Parental educational level None - 6th grade 7th - 11th grade High school graduate Post high school education Missing
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Demographic characteristics Sex Women Men
133.9 (6) 166.7 (8) 591.3 (28) 1,186.0 (56) 50 (2)
415 (20) 478 (22) 489 (23) 359 (17) 290 (14) 89 (4) 8 (0)
471.0 (22) 503.3 (24) 464.6 (22) 321.9 (15) 280.9 (13) 84.5 (4) 1.9 (0)
528 (25) 530 (25) 529 (25) 528 (25) 13 (1)
405.3 (19) 481.4 (23) 554.8 (26) 677.2 (32) 9.3 (0)
Indicators of childhood stress Parental death Single parent household Poor/fair health in childhood Two or more school changes Teenage pregnancy Household receiving public assistance Long-term parental unemployment (i.e. ≥6 months of a year) Household receiving public assistance (excluding food stamps)
68 (3) 756 (36) 88 (4) 48 (2) 226 (11) 702 (33) 96 (5) 459 (22)
40.6 (2) 603.7 (28) 82.0 (4) 37.5 (2) 137.5 (6) 548.9 (26) 48.6 (2) 336.6 (16)
Cumulative number of childhood stressors 0 1 2 3+
993 (47) 507 (24) 384 (18) 218 (10)
1,179.0 (56) 472.9 (22) 323.9 (15) 118.1 (6)
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Family income < 31,416 31,417 - 56,437 56,438 - 98,422 98,423> Missing
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Parental occupation 1-9: Prof. 10-21: Office workers 30-49: Admin. 50-64: Service/Manual 70-101: Skilled/semi-skilled manual 0: Not applicable (non-working) Missing/Item non-response
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Table 3. Psychological distress (based on the K6 scale and self-reported depression), by indicators of childhood stress. Weighted numbers and row percent. K6-scores 8-12 550.3 (26)
13+ 159.0 (7)
74.8 (4) 25.4 (4) 11.7 (14) 1.4 (4) 3.9 (3) 27.1 (5) 1.0 (2)
1,318.0 (63) 364.1 (60) 39.8 (49) 24.4 (65) 58.9 (43) 302.4 (55) 25.8 (53)
540.4 (26) 162.8 (27) 25.1 (31) 6.4 (17) 52.1 (38) 164.0 (30) 13.3 (27)
154.0 (7) 51.2 (8) 5.4 (7) 5.3 (14) 22.6 (16) 55.5 (10) 8.5 (17)
Cumulative number of childhood stressors 0 1 2 3+
40.0 (3) 11.3 (2) 16.2 (5) 8.4 (7)
789.0 (67) 282.0 (60) 184.4 (57) 60.1 (51)
Adolescent depressive symptoms 0 1-2 ≥3
21.8 (5) 35.4 (5) 18.6 (2)
303.1 (74) 527.9 (70) 511.9 (53)
Latent classesa Class 1: “No indicators” Class 2: “Public assistance/single parent household” Class 3: “Single parent household” Class 4: “Teenage parenthood, public assistance, and single parent household”
1.5 (3)
2,087.2 (100) 603.5 (100) 82.0 (100) 37.5 (100) 137.5 (100) 549.0 (100) 48.6 (100)
33.9 (84) 483.8 (80) 66.6 (81) 27.7 (74) 86.7 (63) 417.7 (76) 35.8 (74)
6.6 (16) 119.9 (20) 15.4 (19) 9.8 (26) 50.8 (37) 131.2 (24) 12.8 (26)
40.5 (100) 603.7 (100) 82.0 (100) 37.5 (100) 137.5 (100) 548.9 (100) 48.6 (100)
M AN U 70.0 (6) 43.0 (9) 29.1 (9) 16.0 (14)
1,179.0 (100) 473.0 (100) 323.9 (100) 118.0 (100)
1,019.0 (86) 372.0 (79) 247.3 (76) 89.1 (76)
160.1 (14) 100.9 (21) 76.6 (24) 28.9 (24)
1,179.1 (100) 472.9 (100) 323.9 (100) 118.0 (100)
75.4 (18) 162.2 (21) 312.7 (33)
11.0 (3) 30.6 (4) 117.4 (12)
411.3 (100) 756.1 (100) 960.6 (100)
377.1 (92) 693.4 (92) 690.0 (72)
34.2 (8) 62.8 (8) 270.5 (28)
411.3 (100) 756.1 (100) 960.6 (100)
890.1 (66) 275.0 (58) 113.3 (65)
327.9 (24) 131.3 (28) 46.6 (27)
91.9 (7) 46.0 (10) 10.7 (6)
1,352.8 (100) 477.1 (100) 175.5 (100)
1,154.0 (85) 370.6 (78) 144.5 (82)
199.6 (15) 106.7 (22) 31.0 (18)
1,353.6 (100) 477.3 (100) 175.5 (100)
25.6 (43)
25.3 (42)
7.5 (13)
59.9 (100)
34.0 (57)
26.0 (43)
60.0 (100)
Based on the 2,066 individuals included in the Latent Class Analysis
AC C
a
42.9 (3) 24.8 (5) 4.9 (3)
Self-reported depression No depression Depression Total 1,760.0 (83) 367.5 (17) 2,128.0 (100)
280.3 (24) 136.7 (29) 94.2 (29) 33.5 (28)
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Indicators of childhood stress Parental death Single parent household Poor/fair health in childhood 2 or more school changes Teenage pregnancy Household receiving public assistance* Long-term parental unemployment (i.e. ≥6 months of a year)
EP
N (%)
Total 2,128.0 (100)
RI PT
1-7 1,343.0 (63)
SC
0 75.8 (4)
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Table 4. Indicators of childhood stress and the risk of psychological distress, weighted odds ratios (OR) with 95% confidence intervals (CI). Psychological distress (K6 score >12) Model Ia Model IIb
Self-reported depression Model Ia Model IIb
Indicators of childhood stress Parental death Single parent household Poor/fair health in childhood 2 or more school changes Teenage parenthood Household receiving public assistance Long-term parental unemployment (i.e. ≥6 months of a year)
1.79 (0.81-4.54) 1.22 (0.77-1.93) 0.87 (0.36-2.08) 2.07 (0.73-5.87) 2.67 (1.37-5.19) 1.60 (1.01-2.53) 2.70 (1.14-6.37)
1.83 (0.73-4.59) 1.02 (0.64-1.62) 0.97 (0.38-2.49) 1.96 (0.67-5.74) 1.84 (0.98-3.45) 1.29 (0.75-2.23) 2.67 (1.11-6.43)
Cumulative numbers of childhood stressors 0 1 2 3+
1 (REF) 1.58 (0.96-2.62) 1.57 (0.84-2.90) 2.49 (1.16-5.33)
1 (REF) 1.26 (0.74-2.14) 1.42 (0.71-2.83) 2.05 (0.94-4.47)
1 (REF) 1.73 (1.21-2.46) 1.97 (1.27-3.06) 2.07 (1.15-3.71)
1 (REF) 1.41 (0.94-2.11) 1.95 (1.15-3.30) 1.84 (1.01-3.36)
Adolescent depressive symptoms No Yes
1 (REF) 3.77 (2.36-6.01)
1 (REF) 3.27 (2.01-5.30)
1 (REF) 4.33 (3.14-5.87)
1 (REF) 3.66 (2.62-5.12)
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SC
RI PT
0.83 (0.32-2.10) 1.10 (0.74-1.63) 1.26 (0.59-2.72) 1.54 (0.70-3.40) 2.28 (1.44-3.60) 1.63 (1.07-2.46) 1.49 (0.75-2.96)
Psychological distress (K6 score >12) Self-reported depression Model Ia Model IIb Model Ia Model IIb 1 (REF) 1 (REF) 1 (REF) 1 (REF) 1.46 (0.89-2.41) 1.29 (0.72-2.31) 1.66 (1.15-2.40) 1.71 (1.09-2.66) 0.89 (0.39-2.06) 0.93 (0.41-2.13) 1.24 (0.71-2.18) 1.37 (0.72-2.58)
EP
Latent classes Class 1: “No indicators” Class 2: “Public assistance/single parent household” Class 3: “Single parent household” Class 4: “Teenage parenthood, public assistance, and single parent household”
0.94 (0.42-2.08) 1.28 (0.90-1.81) 1.10 (0.54-2.25) 1.67 (0.74-3.80) 3.09 (1.96-4.88) 1.78 (1.26-2.53) 1.74 (0.83-3.64)
1.97 (0.56-6.91)
1.14 (0.37-3.52)
4.42 (2.15-9.09)
AC C
Crude b Adjusted for sex, birth year, parental SEP (income, education and occupation), and adolescent depressive symptoms
26
3.61 (1.78-7.31)
ACCEPTED MANUSCRIPT
TE D
M AN U
SC
RI PT
Supplementary figure 1. A conceptual framework for investigation of the effect of childhood stressors on psychological distress.
Supplementary table 1. Participants age at the different interviews and percentage missingness for each interview. CDS-II Age at interview % Missing
CDS-III Age at interview % Missing N/A
N/A
21
N/A
N/A
20
1984 (n=204)
13
0
N/A
32
1985 (n=232)
12
0
17
13
1986 (n=232)
11
0
16
11
1987 (n=234)
10
0
15
1988 (n=230)
9
0
14
1989 (n=215)
8
0
13
1990 (n=213)
7
0
12
1991 (n=228)
6
0
1992 (n=220)
5
1993 (n=120)
4
EP
Birth year
CDS-I Age at interview % Missing
TA 2005 Age at interview % Missing
TA 2007 Age at interview % Missing
TA 2009 Age at interview % Missing
TA 2011 Age at interview % Missing
13
23
12
25
12
27
16
12
22
16
24
16
26
20
N/A
19
12
21
13
23
14
25
16
N/A
N/A
18
38
20
15
22
14
24
15
16
N/A
N/A
N/A
N/A
19
11
21
11
23
12
12
N/A
N/A
N/A
N/A
18
46
20
8
22
13
9
17
14
N/A
N/A
N/A
N/A
19
8
21
10
11
9
16
11
N/A
N/A
N/A
N/A
18
30
20
7
0
10
8
15
9
N/A
N/A
N/A
N/A
N/A
N/A
19
0
0
9
6
14
9
N/A
N/A
N/A
N/A
N/A
N/A
18
0
AC C
N/A
9
Note. CDS = Child Development Supplement; TA = Transition into Adulthood
27
ACCEPTED MANUSCRIPT
Exposure/background info from CDS
Exposure/background info from PSID
Follow-up
1984 1985 1986 1987 1988 1989 1990 1991 1992 1993
CDS 1997 CDS 1997 CDS 1997 CDS 1997 CDS 1997 and 2002 CDS 1997 and 2002 CDS 1997 and 2002 CDS 1997 and 2002 CDS 1997 and 2002 All waves of CDS
PSID 1984-1998 PSID 1985-1999 PSID 1986-2000 PSID 1987-2001 PSID 1988-2002 PSID 1989-2003 PSID 1990-2004 PSID 1991-2005 PSID 1992-2006 PSID 1993-2007
All waves of TA All waves of TA All waves of TA All waves of TA TA2007 – TA2011 TA2007 – TA2011 TA2009 – TA2011 TA2009 – TA2011 TA2011 TA2011
M AN U
SC
Birth year
RI PT
Supplementary table 2. Study sample from Child Development Supplement (CDS) and Transition into Adulthood (TA), supplemental studies to the Panel Study of Income Dynamics (PSID), 1997-2011
Supplementary table 3. Pearson correlation matrix of sample characteristics and indicators of childhood stress
1.00 -0.01 0.04* -0.01 -0.03 0.02 0.00 0.02 0.04 0.00 0.00
3
4
5
6
7
8
9
10
11
12
1.00 -0.30** 0.30** -0.09** -0.19** -0.09** -0.04** -0.13** -0.29** -0.10**
1.00 0.21*** 0.05* 0.09*** 0.01 -0.02 0.06** 0.13*** 0.07**
1.00 -0.07** -0.25*** -0.07** -0.06** -0.13*** -0.29*** -0.10***
1.00 0.18*** 0.02 0.04* 0.06** 0.14*** 0.01
1.00 0.06** 0.07** 0.14*** 0.42*** 0.14***
1.00 0.06** 0.04 0.16*** 0.02
1.00 0.06** 0.08** -0.02
1.00 0.21*** 0.13***
1.00 0.25***
1.00
TE D
2
EP
1 1.00 0.13*** -0.01 0.00 0.02 -0.01 -0.02 0.00 -0.01 0.00 0.00 0.01
AC C
1. Sex 2. Adolescent Depression Symptoms 3. Parental education 4. Parental occupation 5. Parental income 6. Parental death 7. Single parent household 8. Fair/poor health in childhood 9. Two or more school changes 10. Teenage parenthood 11. Public assistance 12. Long-term parental unemployment Note: * p