A Review of Multi-Agent AI Systems for Biological and Clinical Data Analysis
Jackson Spieser, Ali Balapour, Jarek Meller, Krushna C. Patra, Behrouz Shamsaei

TL;DR
This paper reviews how multi-agent AI systems can improve biomedical data analysis by working together more effectively than single AI models.
Contribution
The paper introduces a novel analysis of multi-agent systems' performance and challenges in biomedical and clinical data analysis.
Findings
MAS architectures improved oncology decision-making accuracy from 30.3% to 87.2%.
MAS reached 93.2% accuracy on USMLE-style benchmarks through simulated clinical evolution.
MAS frameworks enhanced clinical trial matching accuracy to 87.3% and improved clinician screening efficiency by 42.6%.
Abstract
This review evaluates the emerging paradigm of multi-agent systems (MASs) for biomedical and clinical data analysis, focusing on their ability to overcome the reasoning and reliability limitations of standalone large language models (LLMs). We synthesize findings from recent architectural frameworks, specifically LangGraph, CrewAI, and the Model Context Protocol (MCP), to examine how specialized agent teams divide labor, utilize precision tools, and cross-verify outputs. We find that MAS architectures yield significant performance gains in various domains: recent implementations improved oncology decision-making accuracy from 30.3% to 87.2% and reached a peak of 93.2% accuracy on USMLE-style benchmarks through simulated clinical evolution. In clinical trial matching, multi-agent frameworks achieved 87.3% accuracy and enhanced clinician screening efficiency by 42.6% (p < 0.001). However,…
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Taxonomy
TopicsArtificial Intelligence in Healthcare and Education · Topic Modeling · Machine Learning in Healthcare
