Emergency patient flow forecasting in the radiology department

Author:

Zhang Yumeng1ORCID,Luo Li,Zhang FengyiORCID,Kong Ruixiao2,Yang Jianchao3,Feng Yabing4,Guo Huili5

Affiliation:

1. West China School of Public Health and West China Fourth Hospital, Sichuan University, China

2. Business School, Sichuan University, China

3. Hohai University, China

4. Tencent Company, China

5. West China Hospital, Sichuan University, China

Abstract

The accurate forecast of radiology emergency patient flow is of great importance to optimize appointment scheduling decisions. This study used a multi-model approach to forecast daily radiology emergency patient flow with consideration of different patient sources. We constructed six linear and nonlinear models by considering the lag effects and corresponding time factors. The autoregressive integrated moving average and least absolute shrinkage and selection operator (Lasso) were selected from the category of linear models, whereas linear-and-radial support vector regression models, random forests and adaptive boosting were chosen from the category of nonlinear models. The models were applied to 4-year daily emergency visits data in the radiology department of West China Hospital in Chengdu, China. The mean absolute percentage error of six models ranged from 8.56 to 9.36 percent for emergency department patients, whereas it varied from 10.90 to 14.39 percent for ward patients. The best-performing model for total radiology visits was Lasso, which yielded a mean absolute percentage error of 7.06 percent. The arrival patterns of emergency department and total radiology emergency patient flows could be modeled by linear processes. By contrast, the nonlinear model performed best for ward patient flow. These findings will benefit hospital managers in managing efficient patient flow, thus improving service quality and increasing patient satisfaction.

Funder

National Natural Science Foundation of China

Publisher

SAGE Publications

Subject

Health Informatics

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2. Optimizing Patient Flow and Resource Allocation in Hospitals using AI;2023 International Conference on Artificial Intelligence for Innovations in Healthcare Industries (ICAIIHI);2023-12-29

3. Artificial intelligence in cardiac computed tomography;Progress in Cardiovascular Diseases;2023-11

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