Counterfactual Explanations and Predictive Models to Enhance Clinical Decision-Making in Schizophrenia using Digital Phenotyping
Juan Sebastian Canas, Francisco Gomez, Omar Costilla-Reyes

TL;DR
This paper introduces a machine learning system that predicts, detects, and explains symptom changes in schizophrenia patients using digital phenotyping, aiming to improve clinical decision-making with interpretable, real-time insights.
Contribution
It presents a novel integrated approach combining symptom prediction, change detection, and counterfactual explanations for clinical decision support in psychiatry.
Findings
Forecasts symptoms with less than 10% error
Detects symptom decreases using changepoint algorithms
Demonstrates potential for real-time clinical monitoring
Abstract
Clinical practice in psychiatry is burdened with the increased demand for healthcare services and the scarce resources available. New paradigms of health data powered with machine learning techniques could open the possibility to improve clinical workflow in critical stages of clinical assessment and treatment in psychiatry. In this work, we propose a machine learning system capable of predicting, detecting, and explaining individual changes in symptoms of patients with Schizophrenia by using behavioral digital phenotyping data. We forecast symptoms of patients with an error rate below 10%. The system detects decreases in symptoms using changepoint algorithms and uses counterfactual explanations as a recourse in a simulated continuous monitoring scenario in healthcare. Overall, this study offers valuable insights into the performance and potential of counterfactual explanations,…
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Taxonomy
TopicsMachine Learning in Healthcare · Mental Health Research Topics
