AILGJun 30, 2025

Holistic Artificial Intelligence in Medicine; improved performance and explainability

arXiv:2507.00205v1h-index: 3
Originality Incremental advance
AI Analysis

This addresses the need for explainable AI decision support systems in clinical medicine, though it builds incrementally on their prior framework.

The authors tackled the limitations of their previous HAIM framework (task-agnostic data usage and lack of explainability) by introducing xHAIM, which improved average AUC from 79.9% to 90.3% on chest pathology and operative tasks.

With the increasing interest in deploying Artificial Intelligence in medicine, we previously introduced HAIM (Holistic AI in Medicine), a framework that fuses multimodal data to solve downstream clinical tasks. However, HAIM uses data in a task-agnostic manner and lacks explainability. To address these limitations, we introduce xHAIM (Explainable HAIM), a novel framework leveraging Generative AI to enhance both prediction and explainability through four structured steps: (1) automatically identifying task-relevant patient data across modalities, (2) generating comprehensive patient summaries, (3) using these summaries for improved predictive modeling, and (4) providing clinical explanations by linking predictions to patient-specific medical knowledge. Evaluated on the HAIM-MIMIC-MM dataset, xHAIM improves average AUC from 79.9% to 90.3% across chest pathology and operative tasks. Importantly, xHAIM transforms AI from a black-box predictor into an explainable decision support system, enabling clinicians to interactively trace predictions back to relevant patient data, bridging AI advancements with clinical utility.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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