Predicting the hospitalization burdens of patients with mental disease: a multiple model comparison
Lu Hou, Jing Zhang, Li Li, Yelin Weng, Ziyu Yang, Zhiguo Liu

TL;DR
This study uses machine learning to predict hospitalization burdens for mental disorder patients, helping optimize healthcare resources.
Contribution
The study introduces tailored machine learning models to predict different aspects of hospitalization burdens for mental disorders.
Findings
Schizophrenia and personality disorders were associated with the highest hospitalization burdens.
Ridge regression, LSTM, and SARIMAX models showed the best performance for predicting hospitalization frequency, length of stay, and costs, respectively.
The models support targeted resource allocation and early intervention for high-risk mental disorder patients.
Abstract
Mental disorders represent a growing public health challenge, with rising hospitalization rates worldwide. Despite their significant impact, systematic investigations into the hospitalization burden (HB) of mental disorders remain notably lacking in current studies. This study aims to employ machine learning (ML) techniques to predict the HB among patients with mental disorders. By doing so, we seek to optimize the allocation of medical resources and enhance the efficiency of healthcare services for this specific population. Historical hospitalization data were collected, encompassing patient demographics, diagnostic details, length of stay, costs, and other relevant information. The data were then cleaned to remove missing values and outliers, and key features related to the HB were extracted. A statistical analysis of the basic characteristics of the HB was conducted. Subsequently,…
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Taxonomy
TopicsSchizophrenia research and treatment · Mental Health Treatment and Access · Family Caregiving in Mental Illness
