2024
DOI: 10.1186/s40359-024-01696-8
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Construction and validation of machine learning algorithm for predicting depression among home-quarantined individuals during the large-scale COVID-19 outbreak: based on Adaboost model

Yiwei Zhou,
Zejie Zhang,
Qin Li
et al.

Abstract: Objectives COVID-19 epidemics often lead to elevated levels of depression. To accurately identify and predict depression levels in home-quarantined individuals during a COVID-19 epidemic, this study constructed a depression prediction model based on multiple machine learning algorithms and validated its effectiveness. Methods A cross-sectional method was used to examine the depression status of individuals quarantined at home during the epidemic vi… Show more

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