Cargando…

Modality alignment contrastive learning for severity assessment of COVID-19 from lung ultrasound and clinical information

The outbreak of COVID-19 around the world has caused great pressure to the health care system, and many efforts have been devoted to artificial intelligence (AI)-based analysis of CT and chest X-ray images to help alleviate the shortage of radiologists and improve the diagnosis efficiency. However,...

Descripción completa

Detalles Bibliográficos
Autores principales: Xue, Wufeng, Cao, Chunyan, Liu, Jie, Duan, Yilian, Cao, Haiyan, Wang, Jian, Tao, Xumin, Chen, Zejian, Wu, Meng, Zhang, Jinxiang, Sun, Hui, Jin, Yang, Yang, Xin, Huang, Ruobing, Xiang, Feixiang, Song, Yue, You, Manjie, Zhang, Wen, Jiang, Lili, Zhang, Ziming, Kong, Shuangshuang, Tian, Ying, Zhang, Li, Ni, Dong, Xie, Mingxing
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Elsevier B.V. 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7817458/
https://www.ncbi.nlm.nih.gov/pubmed/33550007
http://dx.doi.org/10.1016/j.media.2021.101975
_version_ 1783638643491995648
author Xue, Wufeng
Cao, Chunyan
Liu, Jie
Duan, Yilian
Cao, Haiyan
Wang, Jian
Tao, Xumin
Chen, Zejian
Wu, Meng
Zhang, Jinxiang
Sun, Hui
Jin, Yang
Yang, Xin
Huang, Ruobing
Xiang, Feixiang
Song, Yue
You, Manjie
Zhang, Wen
Jiang, Lili
Zhang, Ziming
Kong, Shuangshuang
Tian, Ying
Zhang, Li
Ni, Dong
Xie, Mingxing
author_facet Xue, Wufeng
Cao, Chunyan
Liu, Jie
Duan, Yilian
Cao, Haiyan
Wang, Jian
Tao, Xumin
Chen, Zejian
Wu, Meng
Zhang, Jinxiang
Sun, Hui
Jin, Yang
Yang, Xin
Huang, Ruobing
Xiang, Feixiang
Song, Yue
You, Manjie
Zhang, Wen
Jiang, Lili
Zhang, Ziming
Kong, Shuangshuang
Tian, Ying
Zhang, Li
Ni, Dong
Xie, Mingxing
author_sort Xue, Wufeng
collection PubMed
description The outbreak of COVID-19 around the world has caused great pressure to the health care system, and many efforts have been devoted to artificial intelligence (AI)-based analysis of CT and chest X-ray images to help alleviate the shortage of radiologists and improve the diagnosis efficiency. However, only a few works focus on AI-based lung ultrasound (LUS) analysis in spite of its significant role in COVID-19. In this work, we aim to propose a novel method for severity assessment of COVID-19 patients from LUS and clinical information. Great challenges exist regarding the heterogeneous data, multi-modality information, and highly nonlinear mapping. To overcome these challenges, we first propose a dual-level supervised multiple instance learning module (DSA-MIL) to effectively combine the zone-level representations into patient-level representations. Then a novel modality alignment contrastive learning module (MA-CLR) is presented to combine representations of the two modalities, LUS and clinical information, by matching the two spaces while keeping the discriminative features. To train the nonlinear mapping, a staged representation transfer (SRT) strategy is introduced to maximumly leverage the semantic and discriminative information from the training data. We trained the model with LUS data of 233 patients, and validated it with 80 patients. Our method can effectively combine the two modalities and achieve accuracy of 75.0% for 4-level patient severity assessment, and 87.5% for the binary severe/non-severe identification. Besides, our method also provides interpretation of the severity assessment by grading each of the lung zone (with accuracy of 85.28%) and identifying the pathological patterns of each lung zone. Our method has a great potential in real clinical practice for COVID-19 patients, especially for pregnant women and children, in aspects of progress monitoring, prognosis stratification, and patient management.
format Online
Article
Text
id pubmed-7817458
institution National Center for Biotechnology Information
language English
publishDate 2021
publisher Elsevier B.V.
record_format MEDLINE/PubMed
spelling pubmed-78174582021-01-21 Modality alignment contrastive learning for severity assessment of COVID-19 from lung ultrasound and clinical information Xue, Wufeng Cao, Chunyan Liu, Jie Duan, Yilian Cao, Haiyan Wang, Jian Tao, Xumin Chen, Zejian Wu, Meng Zhang, Jinxiang Sun, Hui Jin, Yang Yang, Xin Huang, Ruobing Xiang, Feixiang Song, Yue You, Manjie Zhang, Wen Jiang, Lili Zhang, Ziming Kong, Shuangshuang Tian, Ying Zhang, Li Ni, Dong Xie, Mingxing Med Image Anal Article The outbreak of COVID-19 around the world has caused great pressure to the health care system, and many efforts have been devoted to artificial intelligence (AI)-based analysis of CT and chest X-ray images to help alleviate the shortage of radiologists and improve the diagnosis efficiency. However, only a few works focus on AI-based lung ultrasound (LUS) analysis in spite of its significant role in COVID-19. In this work, we aim to propose a novel method for severity assessment of COVID-19 patients from LUS and clinical information. Great challenges exist regarding the heterogeneous data, multi-modality information, and highly nonlinear mapping. To overcome these challenges, we first propose a dual-level supervised multiple instance learning module (DSA-MIL) to effectively combine the zone-level representations into patient-level representations. Then a novel modality alignment contrastive learning module (MA-CLR) is presented to combine representations of the two modalities, LUS and clinical information, by matching the two spaces while keeping the discriminative features. To train the nonlinear mapping, a staged representation transfer (SRT) strategy is introduced to maximumly leverage the semantic and discriminative information from the training data. We trained the model with LUS data of 233 patients, and validated it with 80 patients. Our method can effectively combine the two modalities and achieve accuracy of 75.0% for 4-level patient severity assessment, and 87.5% for the binary severe/non-severe identification. Besides, our method also provides interpretation of the severity assessment by grading each of the lung zone (with accuracy of 85.28%) and identifying the pathological patterns of each lung zone. Our method has a great potential in real clinical practice for COVID-19 patients, especially for pregnant women and children, in aspects of progress monitoring, prognosis stratification, and patient management. Elsevier B.V. 2021-04 2021-01-20 /pmc/articles/PMC7817458/ /pubmed/33550007 http://dx.doi.org/10.1016/j.media.2021.101975 Text en © 2021 Elsevier B.V. All rights reserved. Since January 2020 Elsevier has created a COVID-19 resource centre with free information in English and Mandarin on the novel coronavirus COVID-19. The COVID-19 resource centre is hosted on Elsevier Connect, the company's public news and information website. Elsevier hereby grants permission to make all its COVID-19-related research that is available on the COVID-19 resource centre - including this research content - immediately available in PubMed Central and other publicly funded repositories, such as the WHO COVID database with rights for unrestricted research re-use and analyses in any form or by any means with acknowledgement of the original source. These permissions are granted for free by Elsevier for as long as the COVID-19 resource centre remains active.
spellingShingle Article
Xue, Wufeng
Cao, Chunyan
Liu, Jie
Duan, Yilian
Cao, Haiyan
Wang, Jian
Tao, Xumin
Chen, Zejian
Wu, Meng
Zhang, Jinxiang
Sun, Hui
Jin, Yang
Yang, Xin
Huang, Ruobing
Xiang, Feixiang
Song, Yue
You, Manjie
Zhang, Wen
Jiang, Lili
Zhang, Ziming
Kong, Shuangshuang
Tian, Ying
Zhang, Li
Ni, Dong
Xie, Mingxing
Modality alignment contrastive learning for severity assessment of COVID-19 from lung ultrasound and clinical information
title Modality alignment contrastive learning for severity assessment of COVID-19 from lung ultrasound and clinical information
title_full Modality alignment contrastive learning for severity assessment of COVID-19 from lung ultrasound and clinical information
title_fullStr Modality alignment contrastive learning for severity assessment of COVID-19 from lung ultrasound and clinical information
title_full_unstemmed Modality alignment contrastive learning for severity assessment of COVID-19 from lung ultrasound and clinical information
title_short Modality alignment contrastive learning for severity assessment of COVID-19 from lung ultrasound and clinical information
title_sort modality alignment contrastive learning for severity assessment of covid-19 from lung ultrasound and clinical information
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7817458/
https://www.ncbi.nlm.nih.gov/pubmed/33550007
http://dx.doi.org/10.1016/j.media.2021.101975
work_keys_str_mv AT xuewufeng modalityalignmentcontrastivelearningforseverityassessmentofcovid19fromlungultrasoundandclinicalinformation
AT caochunyan modalityalignmentcontrastivelearningforseverityassessmentofcovid19fromlungultrasoundandclinicalinformation
AT liujie modalityalignmentcontrastivelearningforseverityassessmentofcovid19fromlungultrasoundandclinicalinformation
AT duanyilian modalityalignmentcontrastivelearningforseverityassessmentofcovid19fromlungultrasoundandclinicalinformation
AT caohaiyan modalityalignmentcontrastivelearningforseverityassessmentofcovid19fromlungultrasoundandclinicalinformation
AT wangjian modalityalignmentcontrastivelearningforseverityassessmentofcovid19fromlungultrasoundandclinicalinformation
AT taoxumin modalityalignmentcontrastivelearningforseverityassessmentofcovid19fromlungultrasoundandclinicalinformation
AT chenzejian modalityalignmentcontrastivelearningforseverityassessmentofcovid19fromlungultrasoundandclinicalinformation
AT wumeng modalityalignmentcontrastivelearningforseverityassessmentofcovid19fromlungultrasoundandclinicalinformation
AT zhangjinxiang modalityalignmentcontrastivelearningforseverityassessmentofcovid19fromlungultrasoundandclinicalinformation
AT sunhui modalityalignmentcontrastivelearningforseverityassessmentofcovid19fromlungultrasoundandclinicalinformation
AT jinyang modalityalignmentcontrastivelearningforseverityassessmentofcovid19fromlungultrasoundandclinicalinformation
AT yangxin modalityalignmentcontrastivelearningforseverityassessmentofcovid19fromlungultrasoundandclinicalinformation
AT huangruobing modalityalignmentcontrastivelearningforseverityassessmentofcovid19fromlungultrasoundandclinicalinformation
AT xiangfeixiang modalityalignmentcontrastivelearningforseverityassessmentofcovid19fromlungultrasoundandclinicalinformation
AT songyue modalityalignmentcontrastivelearningforseverityassessmentofcovid19fromlungultrasoundandclinicalinformation
AT youmanjie modalityalignmentcontrastivelearningforseverityassessmentofcovid19fromlungultrasoundandclinicalinformation
AT zhangwen modalityalignmentcontrastivelearningforseverityassessmentofcovid19fromlungultrasoundandclinicalinformation
AT jianglili modalityalignmentcontrastivelearningforseverityassessmentofcovid19fromlungultrasoundandclinicalinformation
AT zhangziming modalityalignmentcontrastivelearningforseverityassessmentofcovid19fromlungultrasoundandclinicalinformation
AT kongshuangshuang modalityalignmentcontrastivelearningforseverityassessmentofcovid19fromlungultrasoundandclinicalinformation
AT tianying modalityalignmentcontrastivelearningforseverityassessmentofcovid19fromlungultrasoundandclinicalinformation
AT zhangli modalityalignmentcontrastivelearningforseverityassessmentofcovid19fromlungultrasoundandclinicalinformation
AT nidong modalityalignmentcontrastivelearningforseverityassessmentofcovid19fromlungultrasoundandclinicalinformation
AT xiemingxing modalityalignmentcontrastivelearningforseverityassessmentofcovid19fromlungultrasoundandclinicalinformation