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A collaborative online AI engine for CT-based COVID-19 diagnosis
47
Zitationen
38
Autoren
2020
Jahr
Abstract
Abstract Artificial intelligence can potentially provide a substantial role in streamlining chest computed tomography (CT) diagnosis of COVID-19 patients. However, several critical hurdles have impeded the development of robust AI model, which include deficiency, isolation, and heterogeneity of CT data generated from diverse institutions. These bring about lack of generalization of AI model and therefore prevent it from applications in clinical practices. To overcome this, we proposed a federated learning-based Unified CT-COVID AI Diagnostic Initiative (UCADI, http://www.ai-ct-covid.team/ ), a decentralized architecture where the AI model is distributed to and executed at each host institution with the data sources or client ends for training and inferencing without sharing individual patient data. Specifically, we firstly developed an initial AI CT model based on data collected from three Tongji hospitals in Wuhan. After model evaluation, we found that the initial model can identify COVID from Tongji CT test data at near radiologist-level (97.5% sensitivity) but performed worse when it was tested on COVID cases from Wuhan Union Hospital (72% sensitivity), indicating a lack of model generalization. Next, we used the publicly available UCADI framework to build a federated model which integrated COVID CT cases from the Tongji hospitals and Wuhan Union hospital (WU) without transferring the WU data. The federated model not only performed similarly on Tongji test data but improved the detection sensitivity (98%) on WU test cases. The UCADI framework will allow participants worldwide to use and contribute to the model, to deliver a real-world, globally built and validated clinic CT-COVID AI tool. This effort directly supports the United Nations Sustainable Development Goals’ number 3, Good Health and Well-Being, and allows sharing and transferring of knowledge to fight this devastating disease around the world.
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Autoren
- Yongchao Xu
- Liya Ma
- Fan Yang
- Yanyan Chen
- Ke Ma
- Jiehua Yang
- Xian Yang
- Yaobing Chen
- Chang Shu
- Ziwei Fan
- Jiefeng Gan
- Xinyu Zou
- Renhao Huang
- Changzheng Zhang
- Xiaowu Liu
- Dandan Tu
- Chuou Xu
- Wenqing Zhang
- Dehua Yang
- Ming‐Wei Wang
- Xi Wang
- Xiaoliang Sunney Xie
- Hongxiang Leng
- Nagaraj-Setty Holalkere
- Neil J. Halin
- Ihab R. Kamel
- Jia Wu
- Xuehua Peng
- Xiang Wang
- Jianbo Shao
- Pattanasak Mongkolwat
- Jianjun Zhang
- Daniel L. Rubin
- Guoping Wang
- Chuansheng Zheng
- Zhen Li
- Xiang Bai
- Tian Xia
Institutionen
- Huazhong University of Science and Technology(CN)
- Tongji Hospital(CN)
- Union Hospital(CN)
- Huazhong University of Science and Technology Hospital(CN)
- Shanghai Institute of Materia Medica(CN)
- National Center for Drug Screening(CN)
- Central Hospital of Wuhan(CN)
- Tufts Medical Center(US)
- Tufts University(US)
- Johns Hopkins Hospital(US)
- Johns Hopkins University(US)
- Johns Hopkins Medicine(US)
- Stanford University(US)
- Wuhan Children's Hospital(CN)
- Mahidol University(TH)
- The University of Texas MD Anderson Cancer Center(US)