Modeling count data for health care utilization: an empirical study of outpatient visits among Vietnamese older people

Abstract Background Vietnam is undergoing a fast-aging process that poses potential critical issues for older people and central among those is demand for healthcare utilization. However, healthcare utilization, here measured as count data, creates challenges for modeling because such data typically...

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Published in:BMC Medical Informatics and Decision Making
Main Authors: Duc Dung Le, Roberto Leon Gonzalez, Joseph Upile Matola
Format: Article
Language:English
Published: BMC 2021-09-01
Subjects:
Online Access:https://doi.org/10.1186/s12911-021-01619-2
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author Duc Dung Le
Roberto Leon Gonzalez
Joseph Upile Matola
author_facet Duc Dung Le
Roberto Leon Gonzalez
Joseph Upile Matola
author_sort Duc Dung Le
collection DOAJ
container_title BMC Medical Informatics and Decision Making
description Abstract Background Vietnam is undergoing a fast-aging process that poses potential critical issues for older people and central among those is demand for healthcare utilization. However, healthcare utilization, here measured as count data, creates challenges for modeling because such data typically has distributions that are skewed with a large mass at zero. This study compares empirical econometric strategies for the modeling of healthcare utilization (measured as the number of outpatient visits in the last 12 months) and identifies the determinants of healthcare utilization among Vietnamese older people based on the best-fitting model identified. Methods Using the Vietnam Household Living Standard Survey in 2006 (N = 2426), nine econometric regression models for count data were examined to identify the best-fitting one. We used model selection criteria, statistical tests and goodness-of-fit for in-sample model selection. In addition, we conducted 10-fold cross-validation checks to examine reliability of the in-sample model selection. Finally, we utilized marginal effects to identify the factors associated with the number of outpatient visits among Vietnamese older people based on the best-fitting model identified. Results We found strong evidence in favor of hurdle negative binomial model 2 (HNB2) for both in-sample selection and 10-fold cross-validation checks. The marginal effect results of the HNB2 showed that ethnicity, region, household size, health insurance, smoking status, non-communicable diseases, and disability were significantly associated with the number of outpatient visits. The predicted probabilities for each count event revealed the distinct trends of healthcare utilization among specific groups: at low count events, women and people in the younger age group used more healthcare utilization than did men and their counterparts in older age groups, but a reverse trend was found at higher count events. Conclusions The high degree of skewness and dispersion that typically characterizes healthcare utilization data affects the appropriateness of the econometric models that should be used in modeling such data. In the case of Vietnamese older people, our study findings suggest that hurdle negative binomial models should be used in the modeling of healthcare utilization given that the data-generating process reflects two different decision-making processes.
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spelling doaj-art-e7105e2f04f34d57b754c4533186ac7a2025-08-19T19:31:55ZengBMCBMC Medical Informatics and Decision Making1472-69472021-09-0121111410.1186/s12911-021-01619-2Modeling count data for health care utilization: an empirical study of outpatient visits among Vietnamese older peopleDuc Dung Le0Roberto Leon Gonzalez1Joseph Upile Matola2National Graduate Institute for Policy Studies (GRIPS)National Graduate Institute for Policy Studies (GRIPS)Ministry of Economic Planning and DevelopmentAbstract Background Vietnam is undergoing a fast-aging process that poses potential critical issues for older people and central among those is demand for healthcare utilization. However, healthcare utilization, here measured as count data, creates challenges for modeling because such data typically has distributions that are skewed with a large mass at zero. This study compares empirical econometric strategies for the modeling of healthcare utilization (measured as the number of outpatient visits in the last 12 months) and identifies the determinants of healthcare utilization among Vietnamese older people based on the best-fitting model identified. Methods Using the Vietnam Household Living Standard Survey in 2006 (N = 2426), nine econometric regression models for count data were examined to identify the best-fitting one. We used model selection criteria, statistical tests and goodness-of-fit for in-sample model selection. In addition, we conducted 10-fold cross-validation checks to examine reliability of the in-sample model selection. Finally, we utilized marginal effects to identify the factors associated with the number of outpatient visits among Vietnamese older people based on the best-fitting model identified. Results We found strong evidence in favor of hurdle negative binomial model 2 (HNB2) for both in-sample selection and 10-fold cross-validation checks. The marginal effect results of the HNB2 showed that ethnicity, region, household size, health insurance, smoking status, non-communicable diseases, and disability were significantly associated with the number of outpatient visits. The predicted probabilities for each count event revealed the distinct trends of healthcare utilization among specific groups: at low count events, women and people in the younger age group used more healthcare utilization than did men and their counterparts in older age groups, but a reverse trend was found at higher count events. Conclusions The high degree of skewness and dispersion that typically characterizes healthcare utilization data affects the appropriateness of the econometric models that should be used in modeling such data. In the case of Vietnamese older people, our study findings suggest that hurdle negative binomial models should be used in the modeling of healthcare utilization given that the data-generating process reflects two different decision-making processes.https://doi.org/10.1186/s12911-021-01619-2Count dataVietnamModeling healthcare utilizationOlder peopleOutpatient visitsHurdle models
spellingShingle Duc Dung Le
Roberto Leon Gonzalez
Joseph Upile Matola
Modeling count data for health care utilization: an empirical study of outpatient visits among Vietnamese older people
Count data
Vietnam
Modeling healthcare utilization
Older people
Outpatient visits
Hurdle models
title Modeling count data for health care utilization: an empirical study of outpatient visits among Vietnamese older people
title_full Modeling count data for health care utilization: an empirical study of outpatient visits among Vietnamese older people
title_fullStr Modeling count data for health care utilization: an empirical study of outpatient visits among Vietnamese older people
title_full_unstemmed Modeling count data for health care utilization: an empirical study of outpatient visits among Vietnamese older people
title_short Modeling count data for health care utilization: an empirical study of outpatient visits among Vietnamese older people
title_sort modeling count data for health care utilization an empirical study of outpatient visits among vietnamese older people
topic Count data
Vietnam
Modeling healthcare utilization
Older people
Outpatient visits
Hurdle models
url https://doi.org/10.1186/s12911-021-01619-2
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