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

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

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

来源:Arxiv_logoArxiv
英文摘要

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.

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

医学研究方法临床医学神经病学、精神病学

Xinyu Qin,Mark H. Chignell,Alexandria Greifenberger,Sachinthya Lokuge,Elssa Toumeh,Tia Sternat,Martin Katzman,Lu Wang.Explainable Counterfactual Reasoning in Depression Medication Selection at Multi-Levels (Personalized and Population)[EB/OL].(2025-08-24)[2025-09-06].https://arxiv.org/abs/2508.17207.点此复制

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