计算机科学
人工智能
机器学习
前列腺癌
分级(工程)
稳健性(进化)
学习迁移
训练集
原始数据
医学
癌症
内科学
生物化学
化学
土木工程
工程类
基因
程序设计语言
作者
Fei Kong,Xiyue Wang,Jinxi Xiang,Sen Yang,Xinran Wang,Meng Yue,Jun Zhang,Junhan Zhao,Xiao Han,Yuhan Dong,Biyue Zhu,Fang Wang,Yueping Liu
标识
DOI:10.1016/j.csbj.2024.03.028
摘要
Artificial intelligence (AI) holds significant promise in transforming medical imaging, enhancing diagnostics, and refining treatment strategies. However, the reliance on extensive multicenter datasets for training AI models poses challenges due to privacy concerns. Federated learning provides a solution by facilitating collaborative model training across multiple centers without sharing raw data. This study introduces a federated attention-consistent learning (FACL) framework to address challenges associated with large-scale pathological images and data heterogeneity. FACL enhances model generalization by maximizing attention consistency between local clients and the server model. To ensure privacy and validate robustness, we incorporated differential privacy by introducing noise during parameter transfer. We assessed the effectiveness of FACL in cancer diagnosis and Gleason grading tasks using 19,461 whole-slide images of prostate cancer from multiple centers. In the diagnosis task, FACL achieved an area under the curve (AUC) of 0.9718, outperforming seven centers with an average AUC of 0.9499 when categories are relatively balanced. For the Gleason grading task, FACL attained a Kappa score of 0.8463, surpassing the average Kappa score of 0.7379 from six centers. In conclusion, FACL offers a robust, accurate, and cost-effective AI training model for prostate cancer pathology while maintaining effective data safeguards.
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