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Related Experiment Video

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An explainable predictive model for suicide attempt risk using an ensemble learning and Shapley Additive Explanations

Noratikah Nordin1, Zurinahni Zainol1, Mohd Halim Mohd Noor1

  • 1School of Computer Sciences, Universiti Sains Malaysia, 11800 USM, Pulau Pinang, Malaysia.

Asian Journal of Psychiatry
|November 17, 2022
PubMed
Summary

This study introduces explainable machine learning models to predict suicide attempts. Gradient Boosting with SHAP offers higher accuracy and identifies key risk factors like prior attempts and suicidal ideation.

Keywords:
Ensemble learningExplainable AIPredictive modelSHAPSuicide attempt risk

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Area of Science:

  • Computational psychiatry
  • Clinical informatics
  • Machine learning in healthcare

Background:

  • Machine learning models show promise in predicting suicide attempts but often lack interpretability.
  • Understanding the 'why' behind predictions is crucial for clinical decision-making and intervention.

Purpose of the Study:

  • To develop an explainable predictive model for suicide attempts.
  • To analyze the importance of predictive features for suicide attempts.
  • To enhance clinical understanding of suicide attempt risk factors.

Main Methods:

  • Implemented two ensemble learning models: Random Forest and Gradient Boosting.
  • Integrated SHapley Additive exPlanations (SHAP) for model interpretability.
  • Evaluated model performance and feature importance for suicide attempt prediction.

Main Results:

  • Both Random Forest and Gradient Boosting with SHAP provided interpretable predictions.
  • Gradient Boosting with SHAP demonstrated higher predictive accuracy compared to Random Forest.
  • Key predictors identified include history of suicide attempts, suicidal ideation, and ethnicity.

Conclusions:

  • Explainable AI, specifically Gradient Boosting with SHAP, can effectively predict suicide attempts.
  • The model enhances clinical understanding by highlighting significant risk factors.
  • This approach supports more informed clinical decisions regarding suicide prevention.