Informing clinical assessment by contextualizing post-hoc explanations of risk prediction models in type-2 diabetes
Shruthi Chari, Prasant Acharya, Daniel M. Gruen, Olivia Zhang, Elif K., Eyigoz, Mohamed Ghalwash, Oshani Seneviratne, Fernando Suarez Saiz, Pablo, Meyer, Prithwish Chakraborty, Deborah L. McGuinness

TL;DR
This study explores how contextual explanations derived from medical guidelines can improve trust and understanding of AI risk prediction models for type-2 diabetes complications, through an end-to-end pipeline and expert evaluation.
Contribution
It demonstrates the feasibility and benefits of using large language models to generate contextual explanations in a real-world clinical setting for risk prediction.
Findings
LLMs like BERT and SciBERT can extract relevant explanations.
Contextual explanations enhance clinical interpretability.
Expert panel found explanations actionable and useful.
Abstract
Medical experts may use Artificial Intelligence (AI) systems with greater trust if these are supported by contextual explanations that let the practitioner connect system inferences to their context of use. However, their importance in improving model usage and understanding has not been extensively studied. Hence, we consider a comorbidity risk prediction scenario and focus on contexts regarding the patients clinical state, AI predictions about their risk of complications, and algorithmic explanations supporting the predictions. We explore how relevant information for such dimensions can be extracted from Medical guidelines to answer typical questions from clinical practitioners. We identify this as a question answering (QA) task and employ several state-of-the-art LLMs to present contexts around risk prediction model inferences and evaluate their acceptability. Finally, we study the…
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Taxonomy
MethodsMulti-Head Attention · Attention Is All You Need · Refunds@Expedia|||How do I get a full refund from Expedia? · WordPiece · Adam · Softmax · Linear Layer · Residual Connection · Weight Decay · Dropout
