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arXiv 提交日期: 2026-04-07
📄 Abstract - OGA-AID: Clinician-in-the-loop AI Report Drafting Assistant for Multimodal Observational Gait Analysis in Post-Stroke Rehabilitation

Gait analysis is essential in post-stroke rehabilitation but remains time-intensive and cognitively demanding, especially when clinicians must integrate gait videos and motion-capture data into structured reports. We present OGA-AID, a clinician-in-the-loop multi-agent large language model system for multimodal report drafting. The system coordinates 3 specialized agents to synthesize patient movement recordings, kinematic trajectories, and clinical profiles into structured assessments. Evaluated with expert physiotherapists on real patient data, OGA-AID consistently outperforms single-pass multimodal baselines with low error. In clinician-in-the-loop settings, brief expert preliminary notes further reduce error compared to reference assessments. Our findings demonstrate the feasibility of multimodal agentic systems for structured clinical gait assessment and highlight the complementary relationship between AI-assisted analysis and human clinical judgment in rehabilitation workflows.

顶级标签: medical multi-modal agents
详细标签: clinical report drafting gait analysis stroke rehabilitation multimodal agents clinician-in-the-loop 或 搜索:

OGA-AID:面向脑卒中后康复多模态步态分析的临床医生参与式AI报告草拟助手 / OGA-AID: Clinician-in-the-loop AI Report Drafting Assistant for Multimodal Observational Gait Analysis in Post-Stroke Rehabilitation


1️⃣ 一句话总结

这篇论文开发了一个名为OGA-AID的AI系统,它通过多个智能体协作,能自动整合患者的步态视频、运动数据和临床信息来生成结构化的康复评估报告,并在临床医生参与下显著提升报告的准确性和实用性,减轻了康复评估的工作负担。

源自 arXiv: 2604.05360