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arxiv:2603.28589

Towards a Medical AI Scientist

Published on Mar 30
ยท Submitted by
Boyun Zheng
on Mar 31
#2 Paper of the day
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Abstract

Medical AI Scientist represents the first autonomous research framework designed for clinical applications, enabling evidence-based hypothesis generation and manuscript drafting through clinician-engineer collaboration across three research modes.

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Autonomous systems that generate scientific hypotheses, conduct experiments, and draft manuscripts have recently emerged as a promising paradigm for accelerating discovery. However, existing AI Scientists remain largely domain-agnostic, limiting their applicability to clinical medicine, where research is required to be grounded in medical evidence with specialized data modalities. In this work, we introduce Medical AI Scientist, the first autonomous research framework tailored to clinical autonomous research. It enables clinically grounded ideation by transforming extensively surveyed literature into actionable evidence through clinician-engineer co-reasoning mechanism, which improves the traceability of generated research ideas. It further facilitates evidence-grounded manuscript drafting guided by structured medical compositional conventions and ethical policies. The framework operates under 3 research modes, namely paper-based reproduction, literature-inspired innovation, and task-driven exploration, each corresponding to a distinct level of automated scientific inquiry with progressively increasing autonomy. Comprehensive evaluations by both large language models and human experts demonstrate that the ideas generated by the Medical AI Scientist are of substantially higher quality than those produced by commercial LLMs across 171 cases, 19 clinical tasks, and 6 data modalities. Meanwhile, our system achieves strong alignment between the proposed method and its implementation, while also demonstrating significantly higher success rates in executable experiments. Double-blind evaluations by human experts and the Stanford Agentic Reviewer suggest that the generated manuscripts approach MICCAI-level quality, while consistently surpassing those from ISBI and BIBM. The proposed Medical AI Scientist highlights the potential of leveraging AI for autonomous scientific discovery in healthcare.

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Paper author Paper submitter

Hi everyone ๐Ÿ‘‹

We are excited to share "Towards a Medical AI Scientist" โ€” the first end-to-end autonomous framework tailored for clinical medical research.

While general AI Scientists have shown promise in math, chemistry, and ML, they fall short in medicine due to the need for strong clinical grounding, handling of heterogeneous medical data, and rigorous ethical compliance. Our system bridges this gap with:

  • Clinician-Engineer Co-Reasoning for traceable, evidence-based idea generation
  • Specialized experimental pipelines with medical toolboxes
  • Structured manuscript composition with built-in ethical review

Evaluated on Med-AI Bench (171 cases, 19 tasks, 6 modalities), our framework generates significantly higher-quality research ideas than commercial LLMs and produces executable experiments with much higher success rates. Remarkably, double-blind human expert reviews and Stanford Agentic Reviewer assessments indicate that the generated manuscripts reach quality levels close to MICCAI, outperforming ISBI and BIBM submissions. One manuscript was accepted at ICAIS 2025 after peer review.

This work demonstrates the exciting potential of AI to accelerate trustworthy scientific discovery in healthcare.

Project homepage: https://cuhk-aim-group.github.io/Med-AI-Scientist-Homepage/

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