Patient Unpunctuality’s Effect on Appointment Scheduling: A Scenario-Based Analysis
Abstract
:1. Introduction
2. Literature Review
3. Methodology
3.1. Problem Statement
3.2. Data Collection
3.3. Data Fitting
+ [0.0537 × (−45.5 + 8 × BETA (1.440, 1.030))]
+ [0.0440 × (−37.5 + 4 × BETA (1.050, 0.903))]
+ [ 0.0438 × (−33.5 + 4 × BETA (1.540, 1.430))]
+ [0.2007 × (−29.5 + 10 × BETA (1.130, 0.822))]
+ [0.6400 × (−19.5 + 19 × BETA (0.981, 0.922))]
3.4. Simulation Model Assumptions
- This study considered patients with a scheduled appointment at the case hospital. Only outpatients and inpatients were included. Emergent patients were excluded since they are considered walk-in patients.
- Patients may arrive unpunctually. Patients who arrived exactly at their appointment time were considered on-time patients. When a radiological technician is ready to serve the next ultrasound scan, the radiological technician will call the patient’s name (or patient’s appointment number). If the patient does not show up within 1 min, the radiological technician will call the next patient’s name. Therefore, patients who arrived 1 min earlier or 1 min later were considered unpunctual in this study.
- The case hospital’s scanning rooms for inpatients and outpatients operate Monday to Friday, from 9:00 am to 3:00 pm, with a 1-h break from 12:00 pm to 1:00 pm. Therefore, the scanning rooms operate 5 h per day for inpatients and outpatients.
- The case hospital has six rooms (rooms 5, 6, 7, 8, 9, and 10) that can provide any type of service to the patients. Six radiological technicians provide services. One radiological technician is assigned to each room. Eight types of services are provided to outpatients: Shoulder, scrotum, neck, prostate, thyroid, urotract, EXT DVT, and abdomen. Six types of services are provided to inpatients: EXT DVT, liver, prostate, urotract, thyroid, and abdomen.
- Patients’ walking times were not considered due to the adjacent locations between the check-in counter and scanning rooms. The probability distribution of the service time is given per body part based on the results of the data-fitting procedures.
- Patients were assumed to undergo the proper procedure when receiving the service.
- A constant arrival policy of 20 min was applied as the appointment scheduling policy used in the simulation system.
3.5. Verification and Validation of the Simulation Model
3.6. What-If Scenarios
- The hospital opens at 9:00 am, at which point patients can wait inside for their appointment time.
- The example hospital only has two rooms, which means that two patients are booked for each appointment slot.
- The arrival time of each patient is independent.
3.6.1. Preempt Policy
3.6.2. Examples of the Preempt Policy with Constant Service Time
3.6.3. Examples of the Preempt Policy with Variable Service Time
3.6.4. Wait Policy
4. Results
4.1. Preempt and Wait Policies
4.2. Sensitivity Analyses
4.2.1. Base-Parameter Model Analysis
4.2.2. Sensitivity Analysis 1
4.2.3. Sensitivity Analysis 2
4.2.4. Sensitivity Analysis 3
4.2.5. Sensitivity Analysis 4
5. Discussion
6. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Range of Patient Waiting Time (Minutes) | Percentage (%) | Cumulative Percentage (%) | Probability Distribution | |
---|---|---|---|---|
Lower Limit | Upper Limit | |||
−50 | −46 | 1.78 | 1.78 | −50.5 + 8 × BETA (1.120, 0.918) |
−45 | −36 | 5.37 | 7.15 | −45.5 + 8 × BETA (1.440, 1.030) |
−37 | −34 | 4.40 | 11.55 | −37.5 + 4 × BETA (1.050, 0.903) |
−33 | −30 | 4.38 | 15.93 | −33.5 + 4 × BETA (1.540, 1.430) |
−29 | −20 | 20.07 | 36.00 | −29.5 + 10 × BETA (1.130, 0.822) |
−19 | −1 | 64.00 | 100.00 | −19.5 + 19 × BETA (0.981, 0.922) |
Range of Patient Waiting Time (Minutes) | Percentage (%) | Cumulative Percentage (%) | Probability Distribution | |
---|---|---|---|---|
Lower Limit | Upper Limit | |||
1 | 12 | 83.27 | 83.27 | 0.5 + 12 × BETA (0.699, 1.390) |
13 | 20 | 16.73 | 100.00 | 12.5 + 8 × BETA (0.754, 1.060) |
Range of Patient Waiting Time (Minutes) | Percentage (%) | Cumulative Percentage (%) | Probability Distribution | |
---|---|---|---|---|
Lower Limit | Upper Limit | |||
−15 | −9 | 27.70 | 27.70 | −15.5 + 7 × BETA (1.560, 0.776) |
−8 | −1 | 72.30 | 100.00 | −8.5 + 8 × BETA (1.020, 1.130) |
Range of Patient Waiting Time (Minutes) | Percentage (%) | Cumulative Percentage (%) | Probability Distribution | |
---|---|---|---|---|
Lower Limit | Upper Limit | |||
1 | 10 | 100.00 | 100.00 | 0.5 + 10 × BETA (0.747, 1.530) |
Patient Type | Half-Width at 95% Confidence Interval (h) | in % | |
---|---|---|---|
Outpatients | 262.63 | 0.46 | 0.18 |
Inpatients | 50.07 | 0.28 | 0.56 |
Patient Type | Actual Average Number of Patients | Simulated Average Number of Patients | Range at 95% Confidence Interval of Simulated Model | |
---|---|---|---|---|
Minimum | Maximum | |||
Early Outpatients | 224.65 * | 219.07 | 216.52 | 221.62 |
On-time Outpatients | 8.22 | 8.23 | 7.05 | 9.41 |
Late Outpatients | 41.01 | 38.70 | 36.28 | 41.12 |
Patient Type | Actual Average Number of Patients | Simulated Average Number of Patients | Range at 95% Confidence Interval of Simulated Model | |
---|---|---|---|---|
Minimum | Minimum | |||
Early Inpatients | 38.33 | 39.37 | 38.09 | 40.65 |
On-time Inpatients | 2.33 | 2.53 | 1.92 | 3.14 |
Late Inpatients | 9.30 | 9.10 | 7.90 | 10.30 |
Patient Type | Actual Average Number of Patients | Simulated Average Number of Patients | Range at 95% Confidence Interval | |
---|---|---|---|---|
Minimum | Minimum | |||
Early Outpatients | 17.02 | 17.06 | 16.89 | 17.23 |
Late Outpatients | 6.50 | 6.60 | 6.33 | 6.87 |
Patient Type | Actual Average Number of Patients | Simulated Average Number of Patients | Range at 95% Confidence Interval | |
---|---|---|---|---|
Minimum | Minimum | |||
Early Inpatients | 6.43 * | 6.25 | 6.10 | 6.40 |
Late Inpatients | 3.79 | 3.66 | 2.87 | 4.45 |
Patient | Appointment Time | Arrival Time | Early, Late, or On-Time | Start of Service Time | End of Service Time | Waiting Time (Minutes) | Room No. |
---|---|---|---|---|---|---|---|
P1 | 9:00 | 9:00 | On-time | 9:00 | 9:20 | 0 | 1 |
P3 | 9:20 | 8:50 | Early | 9:00 | 9:20 | 10 | 2 |
P2 | 9:00 | 9:08 | Late | 9:20 | 9:40 | 12 | 1 |
P4 | 9:20 | 9:15 | Early | 9:20 | 9:40 | 5 | 2 |
P5 | 9:40 | 9:08 | Early | 9:40 | 10:00 | 32 | 1 |
P6 | 9:40 | 9:40 | On-time | 9:40 | 10:00 | 0 | 2 |
Patient | Appointment Time | Arrival Time | Early, Late, or On-Time | Start of Service Time | End of Service Time | Waiting Time (Minutes) | Room No. |
---|---|---|---|---|---|---|---|
P1 | 9:00 | 9:00 | On-time | 9:00 | 9:18 | 0 | 1 |
P3 | 9:20 | 8:50 | Early | 9:00 | 9:15 | 10 | 2 |
P2 | 9:00 | 9:10 | Late | 9:15 | 9:31 | 5 | 2 |
P5 | 9:40 | 9:08 | Early | 9:18 | 9:38 | 10 | 1 |
P4 | 9:20 | 9:20 | On-time | 9:31 | 9:46 | 11 | 2 |
P6 | 9:40 | 9:40 | On-time | 9:40 | 9:57 | 0 | 1 |
Cost | Preempt Policy | Wait Policy |
---|---|---|
Radiological Technician’s Idle Time Cost | NT 5809.97 | NT 5872.74 |
Patient Waiting Time Cost | NT 888.87 | NT 916.95 |
Total Cost | NT 3349.41 | NT 3394.85 |
Key Performance Index | Patient’s Inter-Arrival Time (Minutes) | ||||
---|---|---|---|---|---|
16 | 18 | 20 | 22 | 24 | |
Radiological Technician’s Idle Time Cost (NT Dollars) | 5762.35 | 5863.52 | 5809.94 | 5718.61 | 5716.29 |
Patient Waiting Time Cost (NT Dollars) | 1623.80 | 1352.32 | 888.87 | 817.28 | 826.05 |
Total Cost (NT Dollars) | 3693.08 | 3607.92 | 3349.41 | 3267.95 | 3271.17 |
No. of Patients Served (Patients) | 54 | 54 | 54 | 54 | 54 |
Average Number of Patients Waiting (Patients) | 0.99 | 0.84 | 0.54 | 0.49 | 0.49 |
No. of Early patients (Patients) | 44.27 | 45.07 | 44.80 | 44.40 | 44.13 |
No. of Late patients (Patients) | 8.07 | 7.20 | 7.67 | 7.80 | 8.13 |
No. of On-time patients (Patients) | 1.66 | 1.73 | 1.53 | 1.80 | 1.74 |
Average Waiting Time (Minutes) | 12.89 | 10.73 | 7.05 | 6.49 | 6.56 |
Average total Time in System (Minutes) | 32.93 | 30.75 | 27.13 | 26.33 | 26.17 |
Utilization of Scanning Rooms (%) | 53.72 | 53.86 | 53.72 | 53.55 | 52.58 |
Key Performance Index | Patient’s Inter-Arrival Time (Minutes) | ||||
---|---|---|---|---|---|
16 | 18 | 20 | 22 | 24 | |
Radiological Technician’s Idle Time Cost (NT Dollars) | 3457.41 | 3518.11 | 3485.98 | 3431.17 | 3429.77 |
Patient Waiting Time Cost (NT Dollars) | 649.52 | 540.93 | 355.55 | 326.91 | 330.42 |
Total Cost (NT Dollars) | 1772.68 | 1731.80 | 1607.72 | 1568.61 | 1570.16 |
Key Performance Index | Patient’s Inter-Arrival Time (Minutes) | ||||
---|---|---|---|---|---|
16 | 18 | 20 | 22 | 24 | |
Radiological Technician’s Idle Time Cost (NT Dollars) | 4033.65 | 4104.46 | 4066.98 | 4003.03 | 4001.40 |
Patient Waiting Time Cost (NT Dollars) | 487.14 | 405.70 | 266.66 | 245.18 | 247.82 |
Total Cost (NT Dollars) | 1551.09 | 1515.33 | 1406.76 | 1372.54 | 1373.89 |
Key Performance Index | Patient’s Inter-Arrival Time (Minutes) | ||||
---|---|---|---|---|---|
16 | 18 | 20 | 22 | 24 | |
Radiological Technician’s Idle Time Cost (NT Dollars) | 4609.88 | 4690.82 | 4647.98 | 4574.89 | 4573.03 |
Patient Waiting Time Cost (NT Dollars) | 324.76 | 270.46 | 177.77 | 163.46 | 165.21 |
Total Cost (NT Dollars) | 1181.78 | 1154.53 | 1071.81 | 1045.75 | 1046.77 |
Key Performance Index | Patient’s Inter-Arrival Time (Minutes) | ||||
---|---|---|---|---|---|
16 | 18 | 20 | 22 | 24 | |
Radiological Technician’s Idle Time Cost (NT Dollars) | 5186.12 | 5277.17 | 5228.97 | 5146.75 | 5144.66 |
Patient Waiting Time Cost (NT Dollars) | 162.38 | 135.23 | 88.89 | 81.73 | 82.61 |
Total Cost (NT Dollars) | 664.75 | 649.42 | 602.90 | 588.23 | 588.82 |
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Chen, P.-S.; Chen, H.-W.; Abiog, M.D.M.; Guerrero, R.M.B.; Latina, C.G.E. Patient Unpunctuality’s Effect on Appointment Scheduling: A Scenario-Based Analysis. Healthcare 2023, 11, 231. https://doi.org/10.3390/healthcare11020231
Chen P-S, Chen H-W, Abiog MDM, Guerrero RMB, Latina CGE. Patient Unpunctuality’s Effect on Appointment Scheduling: A Scenario-Based Analysis. Healthcare. 2023; 11(2):231. https://doi.org/10.3390/healthcare11020231
Chicago/Turabian StyleChen, Ping-Shun, Hsiu-Wen Chen, Marielle Donice M. Abiog, Roxanne Mae B. Guerrero, and Christine Grace E. Latina. 2023. "Patient Unpunctuality’s Effect on Appointment Scheduling: A Scenario-Based Analysis" Healthcare 11, no. 2: 231. https://doi.org/10.3390/healthcare11020231
APA StyleChen, P.-S., Chen, H.-W., Abiog, M. D. M., Guerrero, R. M. B., & Latina, C. G. E. (2023). Patient Unpunctuality’s Effect on Appointment Scheduling: A Scenario-Based Analysis. Healthcare, 11(2), 231. https://doi.org/10.3390/healthcare11020231