Explainable Counterfactual Reasoning in Depression Medication Selection at Multi-Levels (Personalized and Population)

Qin, Xinyu, Chignell, Mark H., Greifenberger, Alexandria, Lokuge, Sachinthya, Toumeh, Elssa, Sternat, Tia, Katzman, Martin, Wang, Lu

arXiv.org Artificial Intelligence 

Background: This study investigates how variations in Major Depressive Disorder (MDD) symptoms, quantified by the Hamilton Rating Scale for Depression (HAM-D), causally influence the prescription of SSRIs versus SNRIs. Methods: We applied explainable counterfactual reasoning with counterfactual explanations (CFs) to assess the impact of specific symptom changes on antidepressant choice. Results: Among 17 binary classifiers, Random Forest achieved highest performance (accuracy, F1, precision, recall, ROC-AUC near 0.85). Sample-based CFs revealed both local and global feature importance of individual symptoms in medication selection. Conclusions: Counterfactual reasoning elucidates which MDD symptoms most strongly drive SSRI versus SNRI selection, enhancing interpretability of AI-based clinical decision support systems. Future work should validate these findings on more diverse cohorts and refine algorithms for clinical deployment.

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