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Integrating thyroid function and psychometric profiles for lifetime suicide-attempt risk stratification in bipolar

Boyu Zhang1,2,3,4, Min Pan1,2,3,4, Anzhen Wang1,2,3,4

  • 1Department of Psychiatry, Affiliated Psychological Hospital of Anhui Medical University, Hefei, China.

Frontiers in Psychiatry
|March 12, 2026
PubMed
Summary

Machine learning models effectively predict suicide attempts in bipolar disorder patients. Key predictors include suicidal ideation, hopelessness, and thyroid stimulating hormone levels, aiding early intervention.

Keywords:
bipolar disordermachine learningpredictive modelssuicide attemptthyroid function

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Area of Science:

  • Psychiatry and Mental Health
  • Computational Biology and Bioinformatics
  • Clinical Diagnostics

Background:

  • Bipolar disorder is a severe mental illness with recurrent mood episodes and low diagnosis rates.
  • Suicide attempts are a significant concern in bipolar disorder patients, necessitating improved risk stratification.
  • Cross-sectional associations were used to explore predictors of lifetime suicide attempts.

Purpose of the Study:

  • To develop and validate machine learning models for risk stratification of lifetime suicide attempts in bipolar disorder patients.
  • To identify key clinical and biological markers associated with suicide attempts in this population.
  • To provide tools for clinicians to identify patients at higher risk for early intervention.

Main Methods:

  • Utilized machine learning techniques including Random Forests, Gradient Boosting, and Support Vector Machines.
  • Employed LASSO logistic regression for variable selection and SMOTE for handling class imbalance.
  • Conducted sensitivity analyses to mitigate reverse causality bias and subgroup analyses on euthyroid patients.

Main Results:

  • Random Forests model demonstrated superior performance with an accuracy of 0.938 and AUC of 0.962.
  • Top predictors identified were suicidal ideation, education level, hopelessness, retardation symptom severity, and thyroid stimulating hormone (TSH).
  • Sensitivity and subgroup analyses confirmed the robustness of the identified predictors and model performance.

Conclusions:

  • A robust machine learning model was developed for suicide attempt risk stratification in bipolar disorder.
  • The model can assist clinicians in identifying at-risk individuals for timely intervention.
  • Future prospective validation is needed to confirm clinical utility and establish temporal precedence.