Prediction of outpatient visits and expenditure under the Universal Coverage Scheme in Bangkok using subscriber's attributes: A random forest analysis

Objectives: There is limited evidence on methods to allocate budgets to healthcare providers under capitation schemes. The objective of this study was to construct and test models that predict outpatient visits and expenditure for each healthcare facility using subscriber data from the preceding yea...

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Main Authors: K. Mongkonchoo, H. Yamana, S. Aso, M. Machida, Y. Takasaki, T. Jo, H. Yasunaga, V. Chongsuvivatwong, T. Liabsuetrakul
Format: Article
Language:English
Published: Elsevier 2021-11-01
Series:Public Health in Practice
Subjects:
Online Access:http://www.sciencedirect.com/science/article/pii/S2666535221001154
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spelling doaj-274e53203c334f87affdd639cf9b8ab72021-10-07T04:27:04ZengElsevierPublic Health in Practice2666-53522021-11-012100190Prediction of outpatient visits and expenditure under the Universal Coverage Scheme in Bangkok using subscriber's attributes: A random forest analysisK. Mongkonchoo0H. Yamana1S. Aso2M. Machida3Y. Takasaki4T. Jo5H. Yasunaga6V. Chongsuvivatwong7T. Liabsuetrakul8National Health Security Office, Government Complex, Bangkok, Thailand; Corresponding author.Department of Health Services Research, Graduate School of Medicine, The University of Tokyo, Tokyo, JapanDepartment of Biostatistics & Bioinformatics, Graduate School of Medicine, The University of Tokyo, Tokyo, JapanThe Partnership Project for Global Health and Universal Health Coverage, Bangkok, ThailandThe Partnership Project for Global Health and Universal Health Coverage, Bangkok, ThailandDepartment of Health Services Research, Graduate School of Medicine, The University of Tokyo, Tokyo, JapanDepartment of Clinical Epidemiology and Health Economics, School of Public Health, The University of Tokyo, Tokyo, JapanEpidemiology Unit, Faculty of Medicine, Prince of Songkla University, Hat Yai, Songkhla, ThailandEpidemiology Unit, Faculty of Medicine, Prince of Songkla University, Hat Yai, Songkhla, ThailandObjectives: There is limited evidence on methods to allocate budgets to healthcare providers under capitation schemes. The objective of this study was to construct and test models that predict outpatient visits and expenditure for each healthcare facility using subscriber data from the preceding year. Study design: We used the database of the Universal Coverage Scheme in Bangkok, Thailand that stores subscriber information and healthcare service utilization data. One-percent and ten-percent random samples of subscribers were selected as training and testing groups, respectively. Methods: Using data of the training group, we constructed a model using a random forest algorithm to predict outpatient visits and expenditure in 2017 from the 2016 data. The model was applied to the testing group and facility-level predicted number of visits and expenditure were compared with actual data. Results: The identically-structured training and testing groups consisted of 37,259 and 371,650 subscribers, respectively. Approximately 25% of subscribers utilized outpatient services. The R2 for models predicting facility-level utilization rate (visits/subscribers) and expenditure per subscriber in 2017 were 0.85 and 0.75, respectively. Conclusions: The model to predict outpatient visits and expenditure performed well. Such a prediction model may be useful for allocating budgets to healthcare facilities under capitation systems.http://www.sciencedirect.com/science/article/pii/S2666535221001154CapitationHealth insuranceOutpatient payment
collection DOAJ
language English
format Article
sources DOAJ
author K. Mongkonchoo
H. Yamana
S. Aso
M. Machida
Y. Takasaki
T. Jo
H. Yasunaga
V. Chongsuvivatwong
T. Liabsuetrakul
spellingShingle K. Mongkonchoo
H. Yamana
S. Aso
M. Machida
Y. Takasaki
T. Jo
H. Yasunaga
V. Chongsuvivatwong
T. Liabsuetrakul
Prediction of outpatient visits and expenditure under the Universal Coverage Scheme in Bangkok using subscriber's attributes: A random forest analysis
Public Health in Practice
Capitation
Health insurance
Outpatient payment
author_facet K. Mongkonchoo
H. Yamana
S. Aso
M. Machida
Y. Takasaki
T. Jo
H. Yasunaga
V. Chongsuvivatwong
T. Liabsuetrakul
author_sort K. Mongkonchoo
title Prediction of outpatient visits and expenditure under the Universal Coverage Scheme in Bangkok using subscriber's attributes: A random forest analysis
title_short Prediction of outpatient visits and expenditure under the Universal Coverage Scheme in Bangkok using subscriber's attributes: A random forest analysis
title_full Prediction of outpatient visits and expenditure under the Universal Coverage Scheme in Bangkok using subscriber's attributes: A random forest analysis
title_fullStr Prediction of outpatient visits and expenditure under the Universal Coverage Scheme in Bangkok using subscriber's attributes: A random forest analysis
title_full_unstemmed Prediction of outpatient visits and expenditure under the Universal Coverage Scheme in Bangkok using subscriber's attributes: A random forest analysis
title_sort prediction of outpatient visits and expenditure under the universal coverage scheme in bangkok using subscriber's attributes: a random forest analysis
publisher Elsevier
series Public Health in Practice
issn 2666-5352
publishDate 2021-11-01
description Objectives: There is limited evidence on methods to allocate budgets to healthcare providers under capitation schemes. The objective of this study was to construct and test models that predict outpatient visits and expenditure for each healthcare facility using subscriber data from the preceding year. Study design: We used the database of the Universal Coverage Scheme in Bangkok, Thailand that stores subscriber information and healthcare service utilization data. One-percent and ten-percent random samples of subscribers were selected as training and testing groups, respectively. Methods: Using data of the training group, we constructed a model using a random forest algorithm to predict outpatient visits and expenditure in 2017 from the 2016 data. The model was applied to the testing group and facility-level predicted number of visits and expenditure were compared with actual data. Results: The identically-structured training and testing groups consisted of 37,259 and 371,650 subscribers, respectively. Approximately 25% of subscribers utilized outpatient services. The R2 for models predicting facility-level utilization rate (visits/subscribers) and expenditure per subscriber in 2017 were 0.85 and 0.75, respectively. Conclusions: The model to predict outpatient visits and expenditure performed well. Such a prediction model may be useful for allocating budgets to healthcare facilities under capitation systems.
topic Capitation
Health insurance
Outpatient payment
url http://www.sciencedirect.com/science/article/pii/S2666535221001154
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