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Hauptverfasser: He, Sunan, Nie, Yuxiang, Wang, Hongmei, Yang, Shu, Wang, Yihui, Cai, Zhiyuan, Chen, Zhixuan, Xu, Yingxue, Luo, Luyang, Xiang, Huiling, Lin, Xi, Wu, Mingxiang, Peng, Yifan, Shih, George, Xu, Ziyang, Wu, Xian, Wang, Qiong, Chan, Ronald Cheong Kin, Vardhanabhuti, Varut, Chu, Winnie Chiu Wing, Zheng, Yefeng, Rajpurkar, Pranav, Zhang, Kang, Chen, Hao
Format: Preprint
Veröffentlicht: 2024
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Online-Zugang:https://arxiv.org/abs/2404.15127
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author He, Sunan
Nie, Yuxiang
Wang, Hongmei
Yang, Shu
Wang, Yihui
Cai, Zhiyuan
Chen, Zhixuan
Xu, Yingxue
Luo, Luyang
Xiang, Huiling
Lin, Xi
Wu, Mingxiang
Peng, Yifan
Shih, George
Xu, Ziyang
Wu, Xian
Wang, Qiong
Chan, Ronald Cheong Kin
Vardhanabhuti, Varut
Chu, Winnie Chiu Wing
Zheng, Yefeng
Rajpurkar, Pranav
Zhang, Kang
Chen, Hao
author_facet He, Sunan
Nie, Yuxiang
Wang, Hongmei
Yang, Shu
Wang, Yihui
Cai, Zhiyuan
Chen, Zhixuan
Xu, Yingxue
Luo, Luyang
Xiang, Huiling
Lin, Xi
Wu, Mingxiang
Peng, Yifan
Shih, George
Xu, Ziyang
Wu, Xian
Wang, Qiong
Chan, Ronald Cheong Kin
Vardhanabhuti, Varut
Chu, Winnie Chiu Wing
Zheng, Yefeng
Rajpurkar, Pranav
Zhang, Kang
Chen, Hao
contents Generalist foundation models (GFMs) are renowned for their exceptional capability and flexibility in effectively generalizing across diverse tasks and modalities. In the field of medicine, while GFMs exhibit superior generalizability based on their extensive intrinsic knowledge as well as proficiency in instruction following and in-context learning, specialist models excel in precision due to their domain knowledge. In this work, for the first time, we explore the synergy between the GFM and specialist models, to enable precise medical image analysis on a broader scope. Specifically, we propose a cooperative framework, Generalist-Specialist Collaboration (GSCo), which consists of two stages, namely the construction of GFM and specialists, and collaborative inference on downstream tasks. In the construction stage, we develop MedDr, the largest open-source GFM tailored for medicine, showcasing exceptional instruction-following and in-context learning capabilities. Meanwhile, a series of lightweight specialists are crafted for downstream tasks with low computational cost. In the collaborative inference stage, we introduce two cooperative mechanisms, Mixture-of-Expert Diagnosis and Retrieval-Augmented Diagnosis, to harvest the generalist's in-context learning abilities alongside the specialists' domain expertise. For a comprehensive evaluation, we curate a large-scale benchmark featuring 28 datasets and about 250,000 images. Extensive results demonstrate that MedDr consistently outperforms state-of-the-art GFMs on downstream datasets. Furthermore, GSCo exceeds both GFMs and specialists across all out-of-domain disease diagnosis datasets. These findings indicate a significant paradigm shift in the application of GFMs, transitioning from separate models for specific tasks to a collaborative approach between GFMs and specialists, thereby advancing the frontiers of generalizable AI in medicine.
format Preprint
id arxiv_https___arxiv_org_abs_2404_15127
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle GSCo: Towards Generalizable AI in Medicine via Generalist-Specialist Collaboration
He, Sunan
Nie, Yuxiang
Wang, Hongmei
Yang, Shu
Wang, Yihui
Cai, Zhiyuan
Chen, Zhixuan
Xu, Yingxue
Luo, Luyang
Xiang, Huiling
Lin, Xi
Wu, Mingxiang
Peng, Yifan
Shih, George
Xu, Ziyang
Wu, Xian
Wang, Qiong
Chan, Ronald Cheong Kin
Vardhanabhuti, Varut
Chu, Winnie Chiu Wing
Zheng, Yefeng
Rajpurkar, Pranav
Zhang, Kang
Chen, Hao
Computer Vision and Pattern Recognition
Computation and Language
Generalist foundation models (GFMs) are renowned for their exceptional capability and flexibility in effectively generalizing across diverse tasks and modalities. In the field of medicine, while GFMs exhibit superior generalizability based on their extensive intrinsic knowledge as well as proficiency in instruction following and in-context learning, specialist models excel in precision due to their domain knowledge. In this work, for the first time, we explore the synergy between the GFM and specialist models, to enable precise medical image analysis on a broader scope. Specifically, we propose a cooperative framework, Generalist-Specialist Collaboration (GSCo), which consists of two stages, namely the construction of GFM and specialists, and collaborative inference on downstream tasks. In the construction stage, we develop MedDr, the largest open-source GFM tailored for medicine, showcasing exceptional instruction-following and in-context learning capabilities. Meanwhile, a series of lightweight specialists are crafted for downstream tasks with low computational cost. In the collaborative inference stage, we introduce two cooperative mechanisms, Mixture-of-Expert Diagnosis and Retrieval-Augmented Diagnosis, to harvest the generalist's in-context learning abilities alongside the specialists' domain expertise. For a comprehensive evaluation, we curate a large-scale benchmark featuring 28 datasets and about 250,000 images. Extensive results demonstrate that MedDr consistently outperforms state-of-the-art GFMs on downstream datasets. Furthermore, GSCo exceeds both GFMs and specialists across all out-of-domain disease diagnosis datasets. These findings indicate a significant paradigm shift in the application of GFMs, transitioning from separate models for specific tasks to a collaborative approach between GFMs and specialists, thereby advancing the frontiers of generalizable AI in medicine.
title GSCo: Towards Generalizable AI in Medicine via Generalist-Specialist Collaboration
topic Computer Vision and Pattern Recognition
Computation and Language
url https://arxiv.org/abs/2404.15127