Measuring What Matters: Benchmarking Generative, Multimodal, and Agentic AI in Healthcare

Prasanna Desikan, Harshit Rajgarhia, Shivali Dalmia, Ananya Mantravadi

arXiv:2605.08445 · 2026-05-12 공개 · arXiv · PDF

benchmarking model-evaluation generative-ai agentic-ai multimodal-ai healthcare-ai clinical-relevance real-world-performance

Abstract

AI models are increasingly deployed in live clinical environments where they must perform reliably across complex, high-stakes workflows that standard training and validation datasets were never designed to capture. Evaluating these systems requires benchmarks: structured combinations of tasks, datasets, and metrics that enable reproducible, comparable measurement of what a model can do. The central challenge in healthcare AI is not performance alone, but the absence of systematic methods to measure reliability, safety, and clinical relevance under real-world conditions. Most existing benchmarks test what a model knows; too few test whether it can perform reliably and without failing across the full complexity of real clinical tasks. Current benchmarks have accumulated through ad hoc dataset construction optimized for narrow task performance: frontier models achieve near-perfect scores on medical licensing examinations, but when evaluated across real clinical tasks, performance degrades sharply, scoring 0.74--0.85 on documentation, 0.61--0.76 on clinical decision support, and only 0.53--0.63 on administrative and workflow tasks \cite{medhelm}. High benchmark scores give a false sense of deployment readiness, and the gap between performance and utility widens precisely as AI systems take on more consequential clinical roles. Without a principled framework for benchmark design, the field cannot determine whether poor clinical performance reflects model limitations or failures in how performance is being measured.

한국어 요약

📋 한 줄 요약

**[Healthcare AI / Benchmarking]** 의료 환경에서 생성형, 멀티모달, 에이전트형 AI를 신뢰성·안전성·임상적 관련성 기준으로 체계적으로 평가하기 위한 벤치마크 설계 프레임워크를 제안한다.

🎯 핵심 기여도

💡 핵심 아이디어

현재 최첨단 모델은 의료 면허 시험에서는 만점에 가까운 점수를 받지만, 실제 임상 과제에서는 성능이 급격히 떨어진다. 이러한 격차는 모델 한계와 측정 방식 실패를 구분할 수 없게 만들기 때문에, 작업·데이터셋·메트릭의 구조화된 조합으로서 벤치마크를 재정의해야 한다.

🔬 기술적 접근법

📊 주요 결과

💭 의의 및 한계

**의의**: 의료 AI 배포 준비도를 판단할 때 시험 점수에 의존하는 위험성을 경고하고, 벤치마크 설계 자체를 연구 주제로 격상시킨다. **한계**: 본 논문은 진단 및 프레임워크 제안에 가깝고, 구체적인 메트릭 구현이나 데이터셋 공개는 본 초록에 명시되어 있지 않다.

🚀 실용적 활용