Poster
in
Workshop: XAI in Action: Past, Present, and Future Applications
Explainable Alzheimer’s Disease Progression Prediction using Reinforcement Learning
Raja Farrukh Ali · Ayesha Farooq · Emmanuel Adeniji · John Woods · Vinny Sun · William Hsu
In this study, we present a novel application of SHAP (SHapley Additive exPlanations) to enhance the interpretability of Reinforcement Learning (RL) models for Alzheimer's Disease (AD) progression prediction. Leveraging RL's predictive capabilities on a subset of the ADNI dataset, we employ SHAP to elucidate the model's decision-making process. Our approach provides detailed insights into the key factors influencing AD progression predictions, offering both global and individual, patient-level interpretability. By bridging the gap between predictive power and transparency, our work empowers clinicians and researchers to gain a deeper understanding of AD progression and facilitates more informed decision-making in AD-related research and patient care.