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Explainable Machine Learning in the Prediction of Depression.

Christina Mimikou1, Christos Kokkotis2, Dimitrios Tsiptsios3

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Machine learning models accurately predict depression by analyzing environmental factors like anxiety and education. XGBoost achieved 97.83% accuracy, identifying key risk factors for public health interventions.

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Area of Science:

  • Public Health
  • Computational Psychiatry
  • Machine Learning in Healthcare

Background:

  • Depression is a significant global public health concern, with both genetic and environmental risk factors.
  • Identifying modifiable environmental factors is crucial for reducing depression prevalence.
  • This study focuses on environmental and sociodemographic predictors of depression.

Purpose of the Study:

  • To investigate the association between depression and various sociodemographic, lifestyle, and health factors in Thrace, Greece.
  • To compare the performance of four machine learning (ML) models in predicting depression.
  • To identify key predictors of depression using feature selection and interpretation techniques.

Main Methods:

  • A cross-sectional, questionnaire-based study was conducted on a sample from Thrace, Greece.
  • Four ML models were employed: logistic regression (LR), support vector machine (SVM), XGBoost, and neural networks (NNs).
  • A genetic algorithm (GA) was used for feature selection, and SHAP (SHapley Additive exPlanations) for model interpretation.

Main Results:

  • XGBoost achieved the highest prediction accuracy (97.83%) for depression, followed closely by NNs (97.02%).
  • The GA identified 15 significant risk factors utilized by the XGBoost model.
  • SHAP analysis highlighted anxiety, education level, alcohol consumption, and body mass index as primary predictors.

Conclusions:

  • Machine learning models, particularly XGBoost, show high efficacy in predicting depression based on identified risk factors.
  • Findings support the development of personalized public health interventions and clinical strategies for mental well-being.
  • Future research should focus on larger datasets to enhance model accuracy for early detection and personalized mental healthcare.