Background Abstract Modeling patient flow Model ...

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Phlebotomy. Check-out. Leave clinic. • Clinical reports were available for patients' appointment times from Aug/1/2012 to Jul/31/2013. • Within two observation ...
Evaluating room allocation policies in a cardiovascular outpatient clinic using discrete event simulation

Graduate Engineering and Technology PhD Abstract ID: 191

Vahab Vahdatzad, Jacqueline Griffin, PhD Department of Mechanical and Industrial Engineering, Northeastern University

Modeling patient flow

Abstract Overcrowding in hospitals is an increasingly common scenario that affects patients’ satisfaction, quality of care, staff workloads, and clinical outcome. In order to address and examine overcrowding in a cardiovascular outpatient clinic, a discrete-event simulation model is constructed which focuses on patient flow, appointment room availability, and staffing. A comprehensive model is constructed using feedback from administration and time-study data collection. After testing the model validity, the impact of reallocation of a fixed number of beds among different physicians within a unit is investigated. Pooled room allocation and designated room allocation policies are compared with respect to patient’s wait time, length of stay, and resource utilization. The impact of a hybrid allocation policy, using a balance of both pooled and designated room allocation is also examined. This model may be used to inform real-time room allocation policies that harness the power of real-time location systems in hospitals.

Sample patient flow when a patient needs phlebotomy test after being visited by a physician.

4 5 3 2

4

1

5

Patient flow legend

3

1

6 6

OBJECTIVE: Build a simulation model of to gain a greater understanding of patient flow and to analyze the system efficiency from patient and hospital perspective. • Decreasing patients’ length of stay. • Increasing Medical Assistant efficiency and room utilizations

Waiting area

14 Rooms

9 physician

4

Phlebotomy

EKG machines

4MA

3 EKG

5 6

Check-out

TRIA(0.33,1.20,4.8) TRIA(9,15,54) TRIA(0,1,11)

TRIA(3,5,11) TRIA(0,2,40) TRIA(0,11,50) TRIA(1,3.5,18)

Second observation and model input TRIA(0.5,1.20,2.20) Calculated by model TRIA(2,4,11) TRA(0.75,1.5,2.25) TRIA(1,2,4) TRIA(4,6,11) TRIA(0.5,0.75,1.25) Calculated by model Calculated by model TRIA(1,3.5,12)

30 min 28%

Appointment time variation and probabilities

30 20 10 0 Waiting time before treatment initiation

Waiting for physician

Patient Legnth of Stay

Simulation output

Patient Length of stay division

Legend CI

CI

Waiting area

MA

Physician visit

Check-in

MA Medical Assistant

CO Phlebotomy

0

10

20

30

40 time

20 min 47%

50

60

70

80

Waiting for EKG 10% waiting for Physician 39%

Vital 20% EKG 70%

Physician visit 61%

• All procedures provided by MAs will be performed in designated room assigned to each physician’s patients. Effect of room allocation policy on waiting time 25.0000 20.0000

• Procedures provided by MAs will be performed in any available room. Pooled allocation policy leads

Pooled

Hybrid

7%

Check-in Waiting time Vital set (No EKG) Vitals EKG Prep EKG MA post operation Waiting time for EKG Waiting for Physician Check-out time

Leave clinic

Divisions

Designated

• Clinical reports were available for patients’ appointment times from Aug/1/2012 to Jul/31/2013 • Within two observation period, data are collected for other processes related to patient flow. 60min 15 min 40 min 5% • Modified distributions are used as input to the simulation. 13% First observation

40

Room availability 74%

Data collection

Process

50

Results

MA availability 26%

Resources Medical assistants (MA)

60

Actual data

Examination room

• Patient flow and bottlenecks from clinic perspective • Introducing room allocation policies

Room allocation policies

Physicians

70

CO Check-out

Limited Resources that cause overcrowding Exam rooms

• Simulation model are validated by clinic administrative and staff • We also verified the simulation results using t-test • No significant difference between actual data and simulation results(α = 0.05)

80

Check-in

2 3

Background Conducted at cardiovascular outpatient clinics • 3 clinics with 26 exam room s and over 300 clinicians • Over 45000 visit per year - Although most of the patients are scheduled, clinics are overcrowded and patients have to wait a long time.

Model validation

to less waiting time in order to initiate treatment

• Developing a Discrete-event simulation model • Elaborative details are considered in building the model - Room allocation policies - Physicians and MAs non patient related activities(e.g. Paper works, documentations, room preparation) are considered separately. - Staff schedules are added to the model.

5.0000

Waiting time for examination room

0.0000

• Simulation results can help administrators to predict impact of changing resource levels and cost-benefits tradeoffs. • Adding one physician decrease average length of stay (LoS) significantly, followed by adding one MA. Imapcts of changning bottlenecks' levels on LOS 79 77 75 73 71 69 67 65 63

Current LoS Adding EKG machine Adding MA Adding Physician

Current LoS



10.0000

• Although all rooms are assigned to specific physicians based on daily schedules, in case of overcrowding in waiting area, MAs perform EKG and Vitals in any available room to accelerate patient flow and reduce length of stay.

Model building



Total waiting time

15.0000

Number of runs: 255 days Clinic closing condition: If all patients have left the system and no paperwork/administration tasks are left for physicians or MAs.

Adding EKG machine

Adding MA

Adding Physician