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Estimation of service length with the machine learning algorithms and neural networks for patients who receiving home health care

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  • Menteş, Nurettin
  • Çakmak, Mehmet Aziz
  • Kurt, Mehmet Emin

Abstract

The main purpose of the study is to develop an estimation model using machine learning algorithms and to ensure the effective and efficient implementation of home health care service planning in hospitals with these algorithms. The necessary approvals for the study were obtained. The data set was created by obtaining patient data (except for data such as Turkish Republic identification number) from 14 hospitals providing Home Health Care Services in the city of Diyarbakır. The data set was subjected to necessary pre-processing and descriptive statistics were applied. For the estimation model, Decision Tree, Random Forest and Multi-layer Perceptron Neural Network algorithms were used. It was found that the number of days of home health care service, which the patients received, varied depending on their age and gender. It was observed that the patients were generally in the disease groups that required Physiotherapy and Rehabilitation treatments. It was determined that the length of service for patients can be predicted with a high reliability rate (Multi-Layer Model Acc: 90.4%, Decision Tree Model Acc: 86.4%, Random Forest Model Acc: 88.5%) using machine learning algorithms. In the light of the findings and data patterns obtained in the study, it is thought that effective and efficient planning will be made in terms of health management. In addition, it is believed that estimating the average length of service for patients will contribute to strategic planning of human resources for health, and to reducing medical consumables, drugs and hospital expenses.

Suggested Citation

  • Menteş, Nurettin & Çakmak, Mehmet Aziz & Kurt, Mehmet Emin, 2023. "Estimation of service length with the machine learning algorithms and neural networks for patients who receiving home health care," Evaluation and Program Planning, Elsevier, vol. 100(C).
  • Handle: RePEc:eee:epplan:v:100:y:2023:i:c:s0149718923001015
    DOI: 10.1016/j.evalprogplan.2023.102324
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    References listed on IDEAS

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