Saved in:
Bibliographic Details
Main Authors: Hua, Shengyi, Wu, Jianfeng, Shen, Tianle, Hu, Kangzhe, Huang, Zhongzhen, Ni, Shujuan, Zhang, Zhihong, Li, Yuan, Wang, Zhe, Zhang, Xiaofan
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2512.23545
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866908737552252928
author Hua, Shengyi
Wu, Jianfeng
Shen, Tianle
Hu, Kangzhe
Huang, Zhongzhen
Ni, Shujuan
Zhang, Zhihong
Li, Yuan
Wang, Zhe
Zhang, Xiaofan
author_facet Hua, Shengyi
Wu, Jianfeng
Shen, Tianle
Hu, Kangzhe
Huang, Zhongzhen
Ni, Shujuan
Zhang, Zhihong
Li, Yuan
Wang, Zhe
Zhang, Xiaofan
contents Recent pathological foundation models have substantially advanced visual representation learning and multimodal interaction. However, most models still rely on a static inference paradigm in which whole-slide images are processed once to produce predictions, without reassessment or targeted evidence acquisition under ambiguous diagnoses. This contrasts with clinical diagnostic workflows that refine hypotheses through repeated slide observations and further examination requests. We propose PathFound, an agentic multimodal model designed to support evidence-seeking inference in pathological diagnosis. PathFound integrates the power of pathological visual foundation models, vision-language models, and reasoning models trained with reinforcement learning to perform proactive information acquisition and diagnosis refinement by progressing through the initial diagnosis, evidence-seeking, and final decision stages. Across several large multimodal models, adopting this strategy consistently improves diagnostic accuracy, indicating the effectiveness of evidence-seeking workflows in computational pathology. Among these models, PathFound achieves state-of-the-art diagnostic performance across diverse clinical scenarios and demonstrates strong potential to discover subtle details, such as nuclear features and local invasions.
format Preprint
id arxiv_https___arxiv_org_abs_2512_23545
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle PathFound: An Agentic Multimodal Model Activating Evidence-seeking Pathological Diagnosis
Hua, Shengyi
Wu, Jianfeng
Shen, Tianle
Hu, Kangzhe
Huang, Zhongzhen
Ni, Shujuan
Zhang, Zhihong
Li, Yuan
Wang, Zhe
Zhang, Xiaofan
Computer Vision and Pattern Recognition
Artificial Intelligence
Recent pathological foundation models have substantially advanced visual representation learning and multimodal interaction. However, most models still rely on a static inference paradigm in which whole-slide images are processed once to produce predictions, without reassessment or targeted evidence acquisition under ambiguous diagnoses. This contrasts with clinical diagnostic workflows that refine hypotheses through repeated slide observations and further examination requests. We propose PathFound, an agentic multimodal model designed to support evidence-seeking inference in pathological diagnosis. PathFound integrates the power of pathological visual foundation models, vision-language models, and reasoning models trained with reinforcement learning to perform proactive information acquisition and diagnosis refinement by progressing through the initial diagnosis, evidence-seeking, and final decision stages. Across several large multimodal models, adopting this strategy consistently improves diagnostic accuracy, indicating the effectiveness of evidence-seeking workflows in computational pathology. Among these models, PathFound achieves state-of-the-art diagnostic performance across diverse clinical scenarios and demonstrates strong potential to discover subtle details, such as nuclear features and local invasions.
title PathFound: An Agentic Multimodal Model Activating Evidence-seeking Pathological Diagnosis
topic Computer Vision and Pattern Recognition
Artificial Intelligence
url https://arxiv.org/abs/2512.23545