Cargando…
Artificial intelligence for stepwise diagnosis and monitoring of COVID-19
BACKGROUND: Main challenges for COVID-19 include the lack of a rapid diagnostic test, a suitable tool to monitor and predict a patient’s clinical course and an efficient way for data sharing among multicenters. We thus developed a novel artificial intelligence system based on deep learning (DL) and...
Autores principales: | , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , |
---|---|
Formato: | Online Artículo Texto |
Lenguaje: | English |
Publicado: |
Springer Berlin Heidelberg
2022
|
Materias: | |
Acceso en línea: | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8731211/ https://www.ncbi.nlm.nih.gov/pubmed/34988656 http://dx.doi.org/10.1007/s00330-021-08334-6 |
_version_ | 1784627310187511808 |
---|---|
author | Liang, Hengrui Guo, Yuchen Chen, Xiangru Ang, Keng-Leong He, Yuwei Jiang, Na Du, Qiang Zeng, Qingsi Lu, Ligong Gao, Zebin Li, Linduo Li, Quanzheng Nie, Fangxing Ding, Guiguang Huang, Gao Chen, Ailan Li, Yimin Guan, Weijie Sang, Ling Xu, Yuanda Chen, Huai Chen, Zisheng Li, Shiyue Zhang, Nuofu Chen, Ying Huang, Danxia Li, Run Li, Jianfu Cheng, Bo Zhao, Yi Li, Caichen Xiong, Shan Wang, Runchen Liu, Jun Wang, Wei Huang, Jun Cui, Fei Xu, Tao Lure, Fleming Y. M. Zhan, Meixiao Huang, Yuanyi Yang, Qiang Dai, Qionghai Liang, Wenhua He, Jianxing Zhong, Nanshan |
author_facet | Liang, Hengrui Guo, Yuchen Chen, Xiangru Ang, Keng-Leong He, Yuwei Jiang, Na Du, Qiang Zeng, Qingsi Lu, Ligong Gao, Zebin Li, Linduo Li, Quanzheng Nie, Fangxing Ding, Guiguang Huang, Gao Chen, Ailan Li, Yimin Guan, Weijie Sang, Ling Xu, Yuanda Chen, Huai Chen, Zisheng Li, Shiyue Zhang, Nuofu Chen, Ying Huang, Danxia Li, Run Li, Jianfu Cheng, Bo Zhao, Yi Li, Caichen Xiong, Shan Wang, Runchen Liu, Jun Wang, Wei Huang, Jun Cui, Fei Xu, Tao Lure, Fleming Y. M. Zhan, Meixiao Huang, Yuanyi Yang, Qiang Dai, Qionghai Liang, Wenhua He, Jianxing Zhong, Nanshan |
author_sort | Liang, Hengrui |
collection | PubMed |
description | BACKGROUND: Main challenges for COVID-19 include the lack of a rapid diagnostic test, a suitable tool to monitor and predict a patient’s clinical course and an efficient way for data sharing among multicenters. We thus developed a novel artificial intelligence system based on deep learning (DL) and federated learning (FL) for the diagnosis, monitoring, and prediction of a patient’s clinical course. METHODS: CT imaging derived from 6 different multicenter cohorts were used for stepwise diagnostic algorithm to diagnose COVID-19, with or without clinical data. Patients with more than 3 consecutive CT images were trained for the monitoring algorithm. FL has been applied for decentralized refinement of independently built DL models. RESULTS: A total of 1,552,988 CT slices from 4804 patients were used. The model can diagnose COVID-19 based on CT alone with the AUC being 0.98 (95% CI 0.97–0.99), and outperforms the radiologist’s assessment. We have also successfully tested the incorporation of the DL diagnostic model with the FL framework. Its auto-segmentation analyses co-related well with those by radiologists and achieved a high Dice’s coefficient of 0.77. It can produce a predictive curve of a patient’s clinical course if serial CT assessments are available. INTERPRETATION: The system has high consistency in diagnosing COVID-19 based on CT, with or without clinical data. Alternatively, it can be implemented on a FL platform, which would potentially encourage the data sharing in the future. It also can produce an objective predictive curve of a patient’s clinical course for visualization. KEY POINTS: • CoviDet could diagnose COVID-19 based on chest CT with high consistency; this outperformed the radiologist’s assessment. Its auto-segmentation analyses co-related well with those by radiologists and could potentially monitor and predict a patient’s clinical course if serial CT assessments are available. It can be integrated into the federated learning framework. • CoviDet can be used as an adjunct to aid clinicians with the CT diagnosis of COVID-19 and can potentially be used for disease monitoring; federated learning can potentially open opportunities for global collaboration. SUPPLEMENTARY INFORMATION: The online version contains supplementary material available at 10.1007/s00330-021-08334-6. |
format | Online Article Text |
id | pubmed-8731211 |
institution | National Center for Biotechnology Information |
language | English |
publishDate | 2022 |
publisher | Springer Berlin Heidelberg |
record_format | MEDLINE/PubMed |
spelling | pubmed-87312112022-01-06 Artificial intelligence for stepwise diagnosis and monitoring of COVID-19 Liang, Hengrui Guo, Yuchen Chen, Xiangru Ang, Keng-Leong He, Yuwei Jiang, Na Du, Qiang Zeng, Qingsi Lu, Ligong Gao, Zebin Li, Linduo Li, Quanzheng Nie, Fangxing Ding, Guiguang Huang, Gao Chen, Ailan Li, Yimin Guan, Weijie Sang, Ling Xu, Yuanda Chen, Huai Chen, Zisheng Li, Shiyue Zhang, Nuofu Chen, Ying Huang, Danxia Li, Run Li, Jianfu Cheng, Bo Zhao, Yi Li, Caichen Xiong, Shan Wang, Runchen Liu, Jun Wang, Wei Huang, Jun Cui, Fei Xu, Tao Lure, Fleming Y. M. Zhan, Meixiao Huang, Yuanyi Yang, Qiang Dai, Qionghai Liang, Wenhua He, Jianxing Zhong, Nanshan Eur Radiol Imaging Informatics and Artificial Intelligence BACKGROUND: Main challenges for COVID-19 include the lack of a rapid diagnostic test, a suitable tool to monitor and predict a patient’s clinical course and an efficient way for data sharing among multicenters. We thus developed a novel artificial intelligence system based on deep learning (DL) and federated learning (FL) for the diagnosis, monitoring, and prediction of a patient’s clinical course. METHODS: CT imaging derived from 6 different multicenter cohorts were used for stepwise diagnostic algorithm to diagnose COVID-19, with or without clinical data. Patients with more than 3 consecutive CT images were trained for the monitoring algorithm. FL has been applied for decentralized refinement of independently built DL models. RESULTS: A total of 1,552,988 CT slices from 4804 patients were used. The model can diagnose COVID-19 based on CT alone with the AUC being 0.98 (95% CI 0.97–0.99), and outperforms the radiologist’s assessment. We have also successfully tested the incorporation of the DL diagnostic model with the FL framework. Its auto-segmentation analyses co-related well with those by radiologists and achieved a high Dice’s coefficient of 0.77. It can produce a predictive curve of a patient’s clinical course if serial CT assessments are available. INTERPRETATION: The system has high consistency in diagnosing COVID-19 based on CT, with or without clinical data. Alternatively, it can be implemented on a FL platform, which would potentially encourage the data sharing in the future. It also can produce an objective predictive curve of a patient’s clinical course for visualization. KEY POINTS: • CoviDet could diagnose COVID-19 based on chest CT with high consistency; this outperformed the radiologist’s assessment. Its auto-segmentation analyses co-related well with those by radiologists and could potentially monitor and predict a patient’s clinical course if serial CT assessments are available. It can be integrated into the federated learning framework. • CoviDet can be used as an adjunct to aid clinicians with the CT diagnosis of COVID-19 and can potentially be used for disease monitoring; federated learning can potentially open opportunities for global collaboration. SUPPLEMENTARY INFORMATION: The online version contains supplementary material available at 10.1007/s00330-021-08334-6. Springer Berlin Heidelberg 2022-01-06 2022 /pmc/articles/PMC8731211/ /pubmed/34988656 http://dx.doi.org/10.1007/s00330-021-08334-6 Text en © European Society of Radiology 2021 This article is made available via the PMC Open Access Subset for unrestricted research re-use and secondary analysis in any form or by any means with acknowledgement of the original source. These permissions are granted for the duration of the World Health Organization (WHO) declaration of COVID-19 as a global pandemic. |
spellingShingle | Imaging Informatics and Artificial Intelligence Liang, Hengrui Guo, Yuchen Chen, Xiangru Ang, Keng-Leong He, Yuwei Jiang, Na Du, Qiang Zeng, Qingsi Lu, Ligong Gao, Zebin Li, Linduo Li, Quanzheng Nie, Fangxing Ding, Guiguang Huang, Gao Chen, Ailan Li, Yimin Guan, Weijie Sang, Ling Xu, Yuanda Chen, Huai Chen, Zisheng Li, Shiyue Zhang, Nuofu Chen, Ying Huang, Danxia Li, Run Li, Jianfu Cheng, Bo Zhao, Yi Li, Caichen Xiong, Shan Wang, Runchen Liu, Jun Wang, Wei Huang, Jun Cui, Fei Xu, Tao Lure, Fleming Y. M. Zhan, Meixiao Huang, Yuanyi Yang, Qiang Dai, Qionghai Liang, Wenhua He, Jianxing Zhong, Nanshan Artificial intelligence for stepwise diagnosis and monitoring of COVID-19 |
title | Artificial intelligence for stepwise diagnosis and monitoring of COVID-19 |
title_full | Artificial intelligence for stepwise diagnosis and monitoring of COVID-19 |
title_fullStr | Artificial intelligence for stepwise diagnosis and monitoring of COVID-19 |
title_full_unstemmed | Artificial intelligence for stepwise diagnosis and monitoring of COVID-19 |
title_short | Artificial intelligence for stepwise diagnosis and monitoring of COVID-19 |
title_sort | artificial intelligence for stepwise diagnosis and monitoring of covid-19 |
topic | Imaging Informatics and Artificial Intelligence |
url | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8731211/ https://www.ncbi.nlm.nih.gov/pubmed/34988656 http://dx.doi.org/10.1007/s00330-021-08334-6 |
work_keys_str_mv | AT lianghengrui artificialintelligenceforstepwisediagnosisandmonitoringofcovid19 AT guoyuchen artificialintelligenceforstepwisediagnosisandmonitoringofcovid19 AT chenxiangru artificialintelligenceforstepwisediagnosisandmonitoringofcovid19 AT angkengleong artificialintelligenceforstepwisediagnosisandmonitoringofcovid19 AT heyuwei artificialintelligenceforstepwisediagnosisandmonitoringofcovid19 AT jiangna artificialintelligenceforstepwisediagnosisandmonitoringofcovid19 AT duqiang artificialintelligenceforstepwisediagnosisandmonitoringofcovid19 AT zengqingsi artificialintelligenceforstepwisediagnosisandmonitoringofcovid19 AT luligong artificialintelligenceforstepwisediagnosisandmonitoringofcovid19 AT gaozebin artificialintelligenceforstepwisediagnosisandmonitoringofcovid19 AT lilinduo artificialintelligenceforstepwisediagnosisandmonitoringofcovid19 AT liquanzheng artificialintelligenceforstepwisediagnosisandmonitoringofcovid19 AT niefangxing artificialintelligenceforstepwisediagnosisandmonitoringofcovid19 AT dingguiguang artificialintelligenceforstepwisediagnosisandmonitoringofcovid19 AT huanggao artificialintelligenceforstepwisediagnosisandmonitoringofcovid19 AT chenailan artificialintelligenceforstepwisediagnosisandmonitoringofcovid19 AT liyimin artificialintelligenceforstepwisediagnosisandmonitoringofcovid19 AT guanweijie artificialintelligenceforstepwisediagnosisandmonitoringofcovid19 AT sangling artificialintelligenceforstepwisediagnosisandmonitoringofcovid19 AT xuyuanda artificialintelligenceforstepwisediagnosisandmonitoringofcovid19 AT chenhuai artificialintelligenceforstepwisediagnosisandmonitoringofcovid19 AT chenzisheng artificialintelligenceforstepwisediagnosisandmonitoringofcovid19 AT lishiyue artificialintelligenceforstepwisediagnosisandmonitoringofcovid19 AT zhangnuofu artificialintelligenceforstepwisediagnosisandmonitoringofcovid19 AT chenying artificialintelligenceforstepwisediagnosisandmonitoringofcovid19 AT huangdanxia artificialintelligenceforstepwisediagnosisandmonitoringofcovid19 AT lirun artificialintelligenceforstepwisediagnosisandmonitoringofcovid19 AT lijianfu artificialintelligenceforstepwisediagnosisandmonitoringofcovid19 AT chengbo artificialintelligenceforstepwisediagnosisandmonitoringofcovid19 AT zhaoyi artificialintelligenceforstepwisediagnosisandmonitoringofcovid19 AT licaichen artificialintelligenceforstepwisediagnosisandmonitoringofcovid19 AT xiongshan artificialintelligenceforstepwisediagnosisandmonitoringofcovid19 AT wangrunchen artificialintelligenceforstepwisediagnosisandmonitoringofcovid19 AT liujun artificialintelligenceforstepwisediagnosisandmonitoringofcovid19 AT wangwei artificialintelligenceforstepwisediagnosisandmonitoringofcovid19 AT huangjun artificialintelligenceforstepwisediagnosisandmonitoringofcovid19 AT cuifei artificialintelligenceforstepwisediagnosisandmonitoringofcovid19 AT xutao artificialintelligenceforstepwisediagnosisandmonitoringofcovid19 AT lureflemingym artificialintelligenceforstepwisediagnosisandmonitoringofcovid19 AT zhanmeixiao artificialintelligenceforstepwisediagnosisandmonitoringofcovid19 AT huangyuanyi artificialintelligenceforstepwisediagnosisandmonitoringofcovid19 AT yangqiang artificialintelligenceforstepwisediagnosisandmonitoringofcovid19 AT daiqionghai artificialintelligenceforstepwisediagnosisandmonitoringofcovid19 AT liangwenhua artificialintelligenceforstepwisediagnosisandmonitoringofcovid19 AT hejianxing artificialintelligenceforstepwisediagnosisandmonitoringofcovid19 AT zhongnanshan artificialintelligenceforstepwisediagnosisandmonitoringofcovid19 |