Advancing COVID-19 diagnosis with privacy-preserving collaboration in artificial intelligence

Artificial intelligence provides a promising solution for streamlining COVID-19 diagnoses; however, concerns surrounding security and trustworthiness impede the collection of large-scale representative medical data, posing a considerable challenge for training a well-generalized model in clinical pr...

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Published inNature machine intelligence Vol. 3; no. 12; pp. 1081 - 1089
Main Authors Bai, Xiang, Wang, Hanchen, Ma, Liya, Xu, Yongchao, Gan, Jiefeng, Fan, Ziwei, Yang, Fan, Ma, Ke, Yang, Jiehua, Bai, Song, Shu, Chang, Zou, Xinyu, Huang, Renhao, Zhang, Changzheng, Liu, Xiaowu, Tu, Dandan, Xu, Chuou, Zhang, Wenqing, Wang, Xi, Chen, Anguo, Zeng, Yu, Yang, Dehua, Wang, Ming-Wei, Holalkere, Nagaraj, Halin, Neil J, Kamel, Ihab R, Wu, Jia, Peng, Xuehua, Wang, Xiang, Shao, Jianbo, Mongkolwat, Pattanasak, Zhang, Jianjun, Liu, Weiyang, Roberts, Michael, Teng, Zhongzhao, Beer, Lucian, Sanchez, Lorena E, Sala, Evis, Rubin, Daniel L, Weller, Adrian, Lasenby, Joan, Zheng, Chuansheng, Wang, Jianming, Li, Zhen, Schönlieb, Carola, Xia, Tian
Format Journal Article
LanguageEnglish
Published England Nature Publishing Group 01.12.2021
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Summary:Artificial intelligence provides a promising solution for streamlining COVID-19 diagnoses; however, concerns surrounding security and trustworthiness impede the collection of large-scale representative medical data, posing a considerable challenge for training a well-generalized model in clinical practices. To address this, we launch the Unified CT-COVID AI Diagnostic Initiative (UCADI), where the artificial intelligence (AI) model can be distributedly trained and independently executed at each host institution under a federated learning framework without data sharing. Here we show that our federated learning framework model considerably outperformed all of the local models (with a test sensitivity/specificity of 0.973/0.951 in China and 0.730/0.942 in the United Kingdom), achieving comparable performance with a panel of professional radiologists. We further evaluated the model on the hold-out (collected from another two hospitals without the federated learning framework) and heterogeneous (acquired with contrast materials) data, provided visual explanations for decisions made by the model, and analysed the trade-offs between the model performance and the communication costs in the federated training process. Our study is based on 9,573 chest computed tomography scans from 3,336 patients collected from 23 hospitals located in China and the United Kingdom. Collectively, our work advanced the prospects of utilizing federated learning for privacy-preserving AI in digital health.
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T.X. and X.B. conceived the work. H.W., J.G., Z.F., F.Y. and K.M. contributed to the design and development of the models, software and the experiments. T.X., X.B., H.W., J.G., Z.F., K.M., J.L., M.R. and C.S. interpreted, analysed and presented the experimental results. T.X., H.W., J.G., Z.F., K.M., X.B., Y.X., W.L., A.W., J.L., M.R. and C.S. contributed to drafting and revising the manuscript. All of the authors contributed to the data acquisition and resource allocation.
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ISSN:2522-5839
2522-5839
DOI:10.1038/s42256-021-00421-z