Predicting the Travel Distance of Patients to Access Healthcare using Deep Neural Networks
Li-Chin Chen, Ji-Tian Sheu, Yuh-Jue Chuang, Yu Tsao

TL;DR
This study develops a CNN-based deep learning model to accurately predict patient travel distances for healthcare access, aiding resource allocation policies.
Contribution
It introduces a novel CNN framework for modeling complex patient travel decisions and demonstrates its superior performance over other machine learning methods.
Findings
Achieved high prediction accuracy of 0.968
CNN outperformed other machine learning models
Integrated Gradients provided interpretable feature importance
Abstract
Objective: Improving geographical access remains a key issue in determining the sufficiency of regional medical resources during health policy design. However, patient choices can be the result of the complex interactivity of various factors. The aim of this study is to propose a deep neural network approach to model the complex decision of patient choice in travel distance to access care, which is an important indicator for policymaking in allocating resources. Method: We used the 4-year nationwide insurance data of Taiwan and accumulated the possible features discussed in earlier literature. This study proposes the use of a convolutional neural network (CNN)-based framework to make predictions. The model performance was tested against other machine learning methods. The proposed framework was further interpreted using Integrated Gradients (IG) to analyze the feature weights. Results:…
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Taxonomy
TopicsHealthcare Policy and Management · Chronic Disease Management Strategies · Healthcare Systems and Reforms
MethodsEmirates Airlines Office in Dubai
