Serveur d'exploration sur le Covid à Stanford

Attention, ce site est en cours de développement !
Attention, site généré par des moyens informatiques à partir de corpus bruts.
Les informations ne sont donc pas validées.

Accurately Differentiating Between Patients With COVID-19, Patients With Other Viral Infections, and Healthy Individuals: Multimodal Late Fusion Learning Approach.

Identifieur interne : 000115 ( Main/Exploration ); précédent : 000114; suivant : 000116

Accurately Differentiating Between Patients With COVID-19, Patients With Other Viral Infections, and Healthy Individuals: Multimodal Late Fusion Learning Approach.

Auteurs : Ming Xu [République populaire de Chine, États-Unis] ; Liu Ouyang [République populaire de Chine] ; Lei Han [République populaire de Chine] ; Kai Sun [République populaire de Chine] ; Tingting Yu [République populaire de Chine] ; Qian Li [République populaire de Chine] ; Hua Tian [République populaire de Chine] ; Lida Safarnejad [États-Unis] ; Hengdong Zhang [République populaire de Chine] ; Yue Gao [République populaire de Chine] ; Forrest Sheng Bao [États-Unis] ; Yuanfang Chen [République populaire de Chine] ; Patrick Robinson [États-Unis] ; Yaorong Ge [États-Unis] ; Baoli Zhu [République populaire de Chine] ; Jie Liu [République populaire de Chine] ; Shi Chen [États-Unis]

Source :

RBID : pubmed:33404516

Descripteurs français

English descriptors

Abstract

BACKGROUND

Effectively identifying patients with COVID-19 using nonpolymerase chain reaction biomedical data is critical for achieving optimal clinical outcomes. Currently, there is a lack of comprehensive understanding in various biomedical features and appropriate analytical approaches for enabling the early detection and effective diagnosis of patients with COVID-19.

OBJECTIVE

We aimed to combine low-dimensional clinical and lab testing data, as well as high-dimensional computed tomography (CT) imaging data, to accurately differentiate between healthy individuals, patients with COVID-19, and patients with non-COVID viral pneumonia, especially at the early stage of infection.

METHODS

In this study, we recruited 214 patients with nonsevere COVID-19, 148 patients with severe COVID-19, 198 noninfected healthy participants, and 129 patients with non-COVID viral pneumonia. The participants' clinical information (ie, 23 features), lab testing results (ie, 10 features), and CT scans upon admission were acquired and used as 3 input feature modalities. To enable the late fusion of multimodal features, we constructed a deep learning model to extract a 10-feature high-level representation of CT scans. We then developed 3 machine learning models (ie, k-nearest neighbor, random forest, and support vector machine models) based on the combined 43 features from all 3 modalities to differentiate between the following 4 classes: nonsevere, severe, healthy, and viral pneumonia.

RESULTS

Multimodal features provided substantial performance gain from the use of any single feature modality. All 3 machine learning models had high overall prediction accuracy (95.4%-97.7%) and high class-specific prediction accuracy (90.6%-99.9%).

CONCLUSIONS

Compared to the existing binary classification benchmarks that are often focused on single-feature modality, this study's hybrid deep learning-machine learning framework provided a novel and effective breakthrough for clinical applications. Our findings, which come from a relatively large sample size, and analytical workflow will supplement and assist with clinical decision support for current COVID-19 diagnostic methods and other clinical applications with high-dimensional multimodal biomedical features.


DOI: 10.2196/25535
PubMed: 33404516
PubMed Central: PMC7790733


Affiliations:


Links toward previous steps (curation, corpus...)


Le document en format XML

<record>
<TEI>
<teiHeader>
<fileDesc>
<titleStmt>
<title xml:lang="en">Accurately Differentiating Between Patients With COVID-19, Patients With Other Viral Infections, and Healthy Individuals: Multimodal Late Fusion Learning Approach.</title>
<author>
<name sortKey="Xu, Ming" sort="Xu, Ming" uniqKey="Xu M" first="Ming" last="Xu">Ming Xu</name>
<affiliation wicri:level="1">
<nlm:affiliation>Department of Occupational Disease Prevention, Jiangsu Provincial Center for Disease Control and Prevention, Nanjing, China.</nlm:affiliation>
<country xml:lang="fr">République populaire de Chine</country>
<wicri:regionArea>Department of Occupational Disease Prevention, Jiangsu Provincial Center for Disease Control and Prevention, Nanjing</wicri:regionArea>
<wicri:noRegion>Nanjing</wicri:noRegion>
</affiliation>
<affiliation wicri:level="1">
<nlm:affiliation>Center for Global Health, School of Public Health, Nanjing Medical University, Nanjing, China.</nlm:affiliation>
<country xml:lang="fr">République populaire de Chine</country>
<wicri:regionArea>Center for Global Health, School of Public Health, Nanjing Medical University, Nanjing</wicri:regionArea>
<wicri:noRegion>Nanjing</wicri:noRegion>
</affiliation>
<affiliation wicri:level="2">
<nlm:affiliation>Department of Public Health Sciences, College of Health and Human Services, University of North Carolina Charlotte, Charlotte, NC, United States.</nlm:affiliation>
<country xml:lang="fr">États-Unis</country>
<wicri:regionArea>Department of Public Health Sciences, College of Health and Human Services, University of North Carolina Charlotte, Charlotte, NC</wicri:regionArea>
<placeName>
<region type="state">Caroline du Nord</region>
</placeName>
</affiliation>
</author>
<author>
<name sortKey="Ouyang, Liu" sort="Ouyang, Liu" uniqKey="Ouyang L" first="Liu" last="Ouyang">Liu Ouyang</name>
<affiliation wicri:level="3">
<nlm:affiliation>Department of Orthopedics, Union Hospital, Tongji Medical College, Huazhong University of Science and Technology, Wuhan, China.</nlm:affiliation>
<country xml:lang="fr">République populaire de Chine</country>
<wicri:regionArea>Department of Orthopedics, Union Hospital, Tongji Medical College, Huazhong University of Science and Technology, Wuhan</wicri:regionArea>
<placeName>
<settlement type="city">Wuhan</settlement>
<region type="région">Hubei</region>
</placeName>
</affiliation>
</author>
<author>
<name sortKey="Han, Lei" sort="Han, Lei" uniqKey="Han L" first="Lei" last="Han">Lei Han</name>
<affiliation wicri:level="1">
<nlm:affiliation>Department of Occupational Disease Prevention, Jiangsu Provincial Center for Disease Control and Prevention, Nanjing, China.</nlm:affiliation>
<country xml:lang="fr">République populaire de Chine</country>
<wicri:regionArea>Department of Occupational Disease Prevention, Jiangsu Provincial Center for Disease Control and Prevention, Nanjing</wicri:regionArea>
<wicri:noRegion>Nanjing</wicri:noRegion>
</affiliation>
<affiliation wicri:level="1">
<nlm:affiliation>Center for Global Health, School of Public Health, Nanjing Medical University, Nanjing, China.</nlm:affiliation>
<country xml:lang="fr">République populaire de Chine</country>
<wicri:regionArea>Center for Global Health, School of Public Health, Nanjing Medical University, Nanjing</wicri:regionArea>
<wicri:noRegion>Nanjing</wicri:noRegion>
</affiliation>
</author>
<author>
<name sortKey="Sun, Kai" sort="Sun, Kai" uniqKey="Sun K" first="Kai" last="Sun">Kai Sun</name>
<affiliation wicri:level="1">
<nlm:affiliation>Department of Emergency Medicine, The First Hospital of Nanjing Medical University, Nanjing, China.</nlm:affiliation>
<country xml:lang="fr">République populaire de Chine</country>
<wicri:regionArea>Department of Emergency Medicine, The First Hospital of Nanjing Medical University, Nanjing</wicri:regionArea>
<wicri:noRegion>Nanjing</wicri:noRegion>
</affiliation>
</author>
<author>
<name sortKey="Yu, Tingting" sort="Yu, Tingting" uniqKey="Yu T" first="Tingting" last="Yu">Tingting Yu</name>
<affiliation wicri:level="1">
<nlm:affiliation>Department of Medical Genetics, School of Basic Medical Science Jiangsu Key Laboratory of Xenotransplantation, Nanjing Medical University, Nanjing, China.</nlm:affiliation>
<country xml:lang="fr">République populaire de Chine</country>
<wicri:regionArea>Department of Medical Genetics, School of Basic Medical Science Jiangsu Key Laboratory of Xenotransplantation, Nanjing Medical University, Nanjing</wicri:regionArea>
<wicri:noRegion>Nanjing</wicri:noRegion>
</affiliation>
</author>
<author>
<name sortKey="Li, Qian" sort="Li, Qian" uniqKey="Li Q" first="Qian" last="Li">Qian Li</name>
<affiliation wicri:level="1">
<nlm:affiliation>Department of Pediatrics, Affiliated Kunshan Hospital of Jiangsu University, Kunshan, China.</nlm:affiliation>
<country xml:lang="fr">République populaire de Chine</country>
<wicri:regionArea>Department of Pediatrics, Affiliated Kunshan Hospital of Jiangsu University, Kunshan</wicri:regionArea>
<wicri:noRegion>Kunshan</wicri:noRegion>
</affiliation>
</author>
<author>
<name sortKey="Tian, Hua" sort="Tian, Hua" uniqKey="Tian H" first="Hua" last="Tian">Hua Tian</name>
<affiliation wicri:level="1">
<nlm:affiliation>Department of Acute Infectious Disease Control and Prevention, Jiangsu Provincial Center for Disease Control and Prevention, Nanjing, China.</nlm:affiliation>
<country xml:lang="fr">République populaire de Chine</country>
<wicri:regionArea>Department of Acute Infectious Disease Control and Prevention, Jiangsu Provincial Center for Disease Control and Prevention, Nanjing</wicri:regionArea>
<wicri:noRegion>Nanjing</wicri:noRegion>
</affiliation>
</author>
<author>
<name sortKey="Safarnejad, Lida" sort="Safarnejad, Lida" uniqKey="Safarnejad L" first="Lida" last="Safarnejad">Lida Safarnejad</name>
<affiliation wicri:level="4">
<nlm:affiliation>School of Medicine, Stanford University, Stanford, CA, United States.</nlm:affiliation>
<country xml:lang="fr">États-Unis</country>
<wicri:regionArea>School of Medicine, Stanford University, Stanford, CA</wicri:regionArea>
<placeName>
<region type="state">Californie</region>
<settlement type="city">Stanford (Californie)</settlement>
</placeName>
<orgName type="university">Université Stanford</orgName>
</affiliation>
<affiliation wicri:level="2">
<nlm:affiliation>Department of Software and Information Systems, College of Computing and Informatics, University of North Carolina Charlotte, Charlotte, NC, United States.</nlm:affiliation>
<country xml:lang="fr">États-Unis</country>
<wicri:regionArea>Department of Software and Information Systems, College of Computing and Informatics, University of North Carolina Charlotte, Charlotte, NC</wicri:regionArea>
<placeName>
<region type="state">Caroline du Nord</region>
</placeName>
</affiliation>
</author>
<author>
<name sortKey="Zhang, Hengdong" sort="Zhang, Hengdong" uniqKey="Zhang H" first="Hengdong" last="Zhang">Hengdong Zhang</name>
<affiliation wicri:level="1">
<nlm:affiliation>Department of Occupational Disease Prevention, Jiangsu Provincial Center for Disease Control and Prevention, Nanjing, China.</nlm:affiliation>
<country xml:lang="fr">République populaire de Chine</country>
<wicri:regionArea>Department of Occupational Disease Prevention, Jiangsu Provincial Center for Disease Control and Prevention, Nanjing</wicri:regionArea>
<wicri:noRegion>Nanjing</wicri:noRegion>
</affiliation>
<affiliation wicri:level="1">
<nlm:affiliation>Center for Global Health, School of Public Health, Nanjing Medical University, Nanjing, China.</nlm:affiliation>
<country xml:lang="fr">République populaire de Chine</country>
<wicri:regionArea>Center for Global Health, School of Public Health, Nanjing Medical University, Nanjing</wicri:regionArea>
<wicri:noRegion>Nanjing</wicri:noRegion>
</affiliation>
</author>
<author>
<name sortKey="Gao, Yue" sort="Gao, Yue" uniqKey="Gao Y" first="Yue" last="Gao">Yue Gao</name>
<affiliation wicri:level="1">
<nlm:affiliation>Department of Occupational Disease Prevention, Jiangsu Provincial Center for Disease Control and Prevention, Nanjing, China.</nlm:affiliation>
<country xml:lang="fr">République populaire de Chine</country>
<wicri:regionArea>Department of Occupational Disease Prevention, Jiangsu Provincial Center for Disease Control and Prevention, Nanjing</wicri:regionArea>
<wicri:noRegion>Nanjing</wicri:noRegion>
</affiliation>
</author>
<author>
<name sortKey="Bao, Forrest Sheng" sort="Bao, Forrest Sheng" uniqKey="Bao F" first="Forrest Sheng" last="Bao">Forrest Sheng Bao</name>
<affiliation wicri:level="4">
<nlm:affiliation>Department of Computer Science, Iowa State University, Ames, IA, United States.</nlm:affiliation>
<country xml:lang="fr">États-Unis</country>
<wicri:regionArea>Department of Computer Science, Iowa State University, Ames, IA</wicri:regionArea>
<placeName>
<region type="state">Iowa</region>
<settlement type="city">Ames (Iowa)</settlement>
</placeName>
<orgName type="university">Université d'État de l'Iowa</orgName>
</affiliation>
</author>
<author>
<name sortKey="Chen, Yuanfang" sort="Chen, Yuanfang" uniqKey="Chen Y" first="Yuanfang" last="Chen">Yuanfang Chen</name>
<affiliation wicri:level="1">
<nlm:affiliation>Institute of HIV/AIDS/STI Prevention and Control, Jiangsu Provincial Center for Disease Control and Prevention, Nanjing, China.</nlm:affiliation>
<country xml:lang="fr">République populaire de Chine</country>
<wicri:regionArea>Institute of HIV/AIDS/STI Prevention and Control, Jiangsu Provincial Center for Disease Control and Prevention, Nanjing</wicri:regionArea>
<wicri:noRegion>Nanjing</wicri:noRegion>
</affiliation>
</author>
<author>
<name sortKey="Robinson, Patrick" sort="Robinson, Patrick" uniqKey="Robinson P" first="Patrick" last="Robinson">Patrick Robinson</name>
<affiliation wicri:level="2">
<nlm:affiliation>Department of Public Health Sciences, College of Health and Human Services, University of North Carolina Charlotte, Charlotte, NC, United States.</nlm:affiliation>
<country xml:lang="fr">États-Unis</country>
<wicri:regionArea>Department of Public Health Sciences, College of Health and Human Services, University of North Carolina Charlotte, Charlotte, NC</wicri:regionArea>
<placeName>
<region type="state">Caroline du Nord</region>
</placeName>
</affiliation>
</author>
<author>
<name sortKey="Ge, Yaorong" sort="Ge, Yaorong" uniqKey="Ge Y" first="Yaorong" last="Ge">Yaorong Ge</name>
<affiliation wicri:level="2">
<nlm:affiliation>Department of Software and Information Systems, College of Computing and Informatics, University of North Carolina Charlotte, Charlotte, NC, United States.</nlm:affiliation>
<country xml:lang="fr">États-Unis</country>
<wicri:regionArea>Department of Software and Information Systems, College of Computing and Informatics, University of North Carolina Charlotte, Charlotte, NC</wicri:regionArea>
<placeName>
<region type="state">Caroline du Nord</region>
</placeName>
</affiliation>
</author>
<author>
<name sortKey="Zhu, Baoli" sort="Zhu, Baoli" uniqKey="Zhu B" first="Baoli" last="Zhu">Baoli Zhu</name>
<affiliation wicri:level="1">
<nlm:affiliation>Center for Global Health, School of Public Health, Nanjing Medical University, Nanjing, China.</nlm:affiliation>
<country xml:lang="fr">République populaire de Chine</country>
<wicri:regionArea>Center for Global Health, School of Public Health, Nanjing Medical University, Nanjing</wicri:regionArea>
<wicri:noRegion>Nanjing</wicri:noRegion>
</affiliation>
</author>
<author>
<name sortKey="Liu, Jie" sort="Liu, Jie" uniqKey="Liu J" first="Jie" last="Liu">Jie Liu</name>
<affiliation wicri:level="3">
<nlm:affiliation>Department of Radiology, Union Hospital, Tongji Medical College, Huazhong University of Science and Technology, Wuhan, China.</nlm:affiliation>
<country xml:lang="fr">République populaire de Chine</country>
<wicri:regionArea>Department of Radiology, Union Hospital, Tongji Medical College, Huazhong University of Science and Technology, Wuhan</wicri:regionArea>
<placeName>
<settlement type="city">Wuhan</settlement>
<region type="région">Hubei</region>
</placeName>
</affiliation>
</author>
<author>
<name sortKey="Chen, Shi" sort="Chen, Shi" uniqKey="Chen S" first="Shi" last="Chen">Shi Chen</name>
<affiliation wicri:level="2">
<nlm:affiliation>Department of Public Health Sciences, College of Health and Human Services, University of North Carolina Charlotte, Charlotte, NC, United States.</nlm:affiliation>
<country xml:lang="fr">États-Unis</country>
<wicri:regionArea>Department of Public Health Sciences, College of Health and Human Services, University of North Carolina Charlotte, Charlotte, NC</wicri:regionArea>
<placeName>
<region type="state">Caroline du Nord</region>
</placeName>
</affiliation>
<affiliation wicri:level="2">
<nlm:affiliation>School of Data Science, University of North Carolina Charlotte, Charlotte, NC, United States.</nlm:affiliation>
<country xml:lang="fr">États-Unis</country>
<wicri:regionArea>School of Data Science, University of North Carolina Charlotte, Charlotte, NC</wicri:regionArea>
<placeName>
<region type="state">Caroline du Nord</region>
</placeName>
</affiliation>
</author>
</titleStmt>
<publicationStmt>
<idno type="wicri:source">PubMed</idno>
<date when="2021">2021</date>
<idno type="RBID">pubmed:33404516</idno>
<idno type="pmid">33404516</idno>
<idno type="doi">10.2196/25535</idno>
<idno type="pmc">PMC7790733</idno>
<idno type="wicri:Area/Main/Corpus">000065</idno>
<idno type="wicri:explorRef" wicri:stream="Main" wicri:step="Corpus" wicri:corpus="PubMed">000065</idno>
<idno type="wicri:Area/Main/Curation">000065</idno>
<idno type="wicri:explorRef" wicri:stream="Main" wicri:step="Curation">000065</idno>
<idno type="wicri:Area/Main/Exploration">000065</idno>
</publicationStmt>
<sourceDesc>
<biblStruct>
<analytic>
<title xml:lang="en">Accurately Differentiating Between Patients With COVID-19, Patients With Other Viral Infections, and Healthy Individuals: Multimodal Late Fusion Learning Approach.</title>
<author>
<name sortKey="Xu, Ming" sort="Xu, Ming" uniqKey="Xu M" first="Ming" last="Xu">Ming Xu</name>
<affiliation wicri:level="1">
<nlm:affiliation>Department of Occupational Disease Prevention, Jiangsu Provincial Center for Disease Control and Prevention, Nanjing, China.</nlm:affiliation>
<country xml:lang="fr">République populaire de Chine</country>
<wicri:regionArea>Department of Occupational Disease Prevention, Jiangsu Provincial Center for Disease Control and Prevention, Nanjing</wicri:regionArea>
<wicri:noRegion>Nanjing</wicri:noRegion>
</affiliation>
<affiliation wicri:level="1">
<nlm:affiliation>Center for Global Health, School of Public Health, Nanjing Medical University, Nanjing, China.</nlm:affiliation>
<country xml:lang="fr">République populaire de Chine</country>
<wicri:regionArea>Center for Global Health, School of Public Health, Nanjing Medical University, Nanjing</wicri:regionArea>
<wicri:noRegion>Nanjing</wicri:noRegion>
</affiliation>
<affiliation wicri:level="2">
<nlm:affiliation>Department of Public Health Sciences, College of Health and Human Services, University of North Carolina Charlotte, Charlotte, NC, United States.</nlm:affiliation>
<country xml:lang="fr">États-Unis</country>
<wicri:regionArea>Department of Public Health Sciences, College of Health and Human Services, University of North Carolina Charlotte, Charlotte, NC</wicri:regionArea>
<placeName>
<region type="state">Caroline du Nord</region>
</placeName>
</affiliation>
</author>
<author>
<name sortKey="Ouyang, Liu" sort="Ouyang, Liu" uniqKey="Ouyang L" first="Liu" last="Ouyang">Liu Ouyang</name>
<affiliation wicri:level="3">
<nlm:affiliation>Department of Orthopedics, Union Hospital, Tongji Medical College, Huazhong University of Science and Technology, Wuhan, China.</nlm:affiliation>
<country xml:lang="fr">République populaire de Chine</country>
<wicri:regionArea>Department of Orthopedics, Union Hospital, Tongji Medical College, Huazhong University of Science and Technology, Wuhan</wicri:regionArea>
<placeName>
<settlement type="city">Wuhan</settlement>
<region type="région">Hubei</region>
</placeName>
</affiliation>
</author>
<author>
<name sortKey="Han, Lei" sort="Han, Lei" uniqKey="Han L" first="Lei" last="Han">Lei Han</name>
<affiliation wicri:level="1">
<nlm:affiliation>Department of Occupational Disease Prevention, Jiangsu Provincial Center for Disease Control and Prevention, Nanjing, China.</nlm:affiliation>
<country xml:lang="fr">République populaire de Chine</country>
<wicri:regionArea>Department of Occupational Disease Prevention, Jiangsu Provincial Center for Disease Control and Prevention, Nanjing</wicri:regionArea>
<wicri:noRegion>Nanjing</wicri:noRegion>
</affiliation>
<affiliation wicri:level="1">
<nlm:affiliation>Center for Global Health, School of Public Health, Nanjing Medical University, Nanjing, China.</nlm:affiliation>
<country xml:lang="fr">République populaire de Chine</country>
<wicri:regionArea>Center for Global Health, School of Public Health, Nanjing Medical University, Nanjing</wicri:regionArea>
<wicri:noRegion>Nanjing</wicri:noRegion>
</affiliation>
</author>
<author>
<name sortKey="Sun, Kai" sort="Sun, Kai" uniqKey="Sun K" first="Kai" last="Sun">Kai Sun</name>
<affiliation wicri:level="1">
<nlm:affiliation>Department of Emergency Medicine, The First Hospital of Nanjing Medical University, Nanjing, China.</nlm:affiliation>
<country xml:lang="fr">République populaire de Chine</country>
<wicri:regionArea>Department of Emergency Medicine, The First Hospital of Nanjing Medical University, Nanjing</wicri:regionArea>
<wicri:noRegion>Nanjing</wicri:noRegion>
</affiliation>
</author>
<author>
<name sortKey="Yu, Tingting" sort="Yu, Tingting" uniqKey="Yu T" first="Tingting" last="Yu">Tingting Yu</name>
<affiliation wicri:level="1">
<nlm:affiliation>Department of Medical Genetics, School of Basic Medical Science Jiangsu Key Laboratory of Xenotransplantation, Nanjing Medical University, Nanjing, China.</nlm:affiliation>
<country xml:lang="fr">République populaire de Chine</country>
<wicri:regionArea>Department of Medical Genetics, School of Basic Medical Science Jiangsu Key Laboratory of Xenotransplantation, Nanjing Medical University, Nanjing</wicri:regionArea>
<wicri:noRegion>Nanjing</wicri:noRegion>
</affiliation>
</author>
<author>
<name sortKey="Li, Qian" sort="Li, Qian" uniqKey="Li Q" first="Qian" last="Li">Qian Li</name>
<affiliation wicri:level="1">
<nlm:affiliation>Department of Pediatrics, Affiliated Kunshan Hospital of Jiangsu University, Kunshan, China.</nlm:affiliation>
<country xml:lang="fr">République populaire de Chine</country>
<wicri:regionArea>Department of Pediatrics, Affiliated Kunshan Hospital of Jiangsu University, Kunshan</wicri:regionArea>
<wicri:noRegion>Kunshan</wicri:noRegion>
</affiliation>
</author>
<author>
<name sortKey="Tian, Hua" sort="Tian, Hua" uniqKey="Tian H" first="Hua" last="Tian">Hua Tian</name>
<affiliation wicri:level="1">
<nlm:affiliation>Department of Acute Infectious Disease Control and Prevention, Jiangsu Provincial Center for Disease Control and Prevention, Nanjing, China.</nlm:affiliation>
<country xml:lang="fr">République populaire de Chine</country>
<wicri:regionArea>Department of Acute Infectious Disease Control and Prevention, Jiangsu Provincial Center for Disease Control and Prevention, Nanjing</wicri:regionArea>
<wicri:noRegion>Nanjing</wicri:noRegion>
</affiliation>
</author>
<author>
<name sortKey="Safarnejad, Lida" sort="Safarnejad, Lida" uniqKey="Safarnejad L" first="Lida" last="Safarnejad">Lida Safarnejad</name>
<affiliation wicri:level="4">
<nlm:affiliation>School of Medicine, Stanford University, Stanford, CA, United States.</nlm:affiliation>
<country xml:lang="fr">États-Unis</country>
<wicri:regionArea>School of Medicine, Stanford University, Stanford, CA</wicri:regionArea>
<placeName>
<region type="state">Californie</region>
<settlement type="city">Stanford (Californie)</settlement>
</placeName>
<orgName type="university">Université Stanford</orgName>
</affiliation>
<affiliation wicri:level="2">
<nlm:affiliation>Department of Software and Information Systems, College of Computing and Informatics, University of North Carolina Charlotte, Charlotte, NC, United States.</nlm:affiliation>
<country xml:lang="fr">États-Unis</country>
<wicri:regionArea>Department of Software and Information Systems, College of Computing and Informatics, University of North Carolina Charlotte, Charlotte, NC</wicri:regionArea>
<placeName>
<region type="state">Caroline du Nord</region>
</placeName>
</affiliation>
</author>
<author>
<name sortKey="Zhang, Hengdong" sort="Zhang, Hengdong" uniqKey="Zhang H" first="Hengdong" last="Zhang">Hengdong Zhang</name>
<affiliation wicri:level="1">
<nlm:affiliation>Department of Occupational Disease Prevention, Jiangsu Provincial Center for Disease Control and Prevention, Nanjing, China.</nlm:affiliation>
<country xml:lang="fr">République populaire de Chine</country>
<wicri:regionArea>Department of Occupational Disease Prevention, Jiangsu Provincial Center for Disease Control and Prevention, Nanjing</wicri:regionArea>
<wicri:noRegion>Nanjing</wicri:noRegion>
</affiliation>
<affiliation wicri:level="1">
<nlm:affiliation>Center for Global Health, School of Public Health, Nanjing Medical University, Nanjing, China.</nlm:affiliation>
<country xml:lang="fr">République populaire de Chine</country>
<wicri:regionArea>Center for Global Health, School of Public Health, Nanjing Medical University, Nanjing</wicri:regionArea>
<wicri:noRegion>Nanjing</wicri:noRegion>
</affiliation>
</author>
<author>
<name sortKey="Gao, Yue" sort="Gao, Yue" uniqKey="Gao Y" first="Yue" last="Gao">Yue Gao</name>
<affiliation wicri:level="1">
<nlm:affiliation>Department of Occupational Disease Prevention, Jiangsu Provincial Center for Disease Control and Prevention, Nanjing, China.</nlm:affiliation>
<country xml:lang="fr">République populaire de Chine</country>
<wicri:regionArea>Department of Occupational Disease Prevention, Jiangsu Provincial Center for Disease Control and Prevention, Nanjing</wicri:regionArea>
<wicri:noRegion>Nanjing</wicri:noRegion>
</affiliation>
</author>
<author>
<name sortKey="Bao, Forrest Sheng" sort="Bao, Forrest Sheng" uniqKey="Bao F" first="Forrest Sheng" last="Bao">Forrest Sheng Bao</name>
<affiliation wicri:level="4">
<nlm:affiliation>Department of Computer Science, Iowa State University, Ames, IA, United States.</nlm:affiliation>
<country xml:lang="fr">États-Unis</country>
<wicri:regionArea>Department of Computer Science, Iowa State University, Ames, IA</wicri:regionArea>
<placeName>
<region type="state">Iowa</region>
<settlement type="city">Ames (Iowa)</settlement>
</placeName>
<orgName type="university">Université d'État de l'Iowa</orgName>
</affiliation>
</author>
<author>
<name sortKey="Chen, Yuanfang" sort="Chen, Yuanfang" uniqKey="Chen Y" first="Yuanfang" last="Chen">Yuanfang Chen</name>
<affiliation wicri:level="1">
<nlm:affiliation>Institute of HIV/AIDS/STI Prevention and Control, Jiangsu Provincial Center for Disease Control and Prevention, Nanjing, China.</nlm:affiliation>
<country xml:lang="fr">République populaire de Chine</country>
<wicri:regionArea>Institute of HIV/AIDS/STI Prevention and Control, Jiangsu Provincial Center for Disease Control and Prevention, Nanjing</wicri:regionArea>
<wicri:noRegion>Nanjing</wicri:noRegion>
</affiliation>
</author>
<author>
<name sortKey="Robinson, Patrick" sort="Robinson, Patrick" uniqKey="Robinson P" first="Patrick" last="Robinson">Patrick Robinson</name>
<affiliation wicri:level="2">
<nlm:affiliation>Department of Public Health Sciences, College of Health and Human Services, University of North Carolina Charlotte, Charlotte, NC, United States.</nlm:affiliation>
<country xml:lang="fr">États-Unis</country>
<wicri:regionArea>Department of Public Health Sciences, College of Health and Human Services, University of North Carolina Charlotte, Charlotte, NC</wicri:regionArea>
<placeName>
<region type="state">Caroline du Nord</region>
</placeName>
</affiliation>
</author>
<author>
<name sortKey="Ge, Yaorong" sort="Ge, Yaorong" uniqKey="Ge Y" first="Yaorong" last="Ge">Yaorong Ge</name>
<affiliation wicri:level="2">
<nlm:affiliation>Department of Software and Information Systems, College of Computing and Informatics, University of North Carolina Charlotte, Charlotte, NC, United States.</nlm:affiliation>
<country xml:lang="fr">États-Unis</country>
<wicri:regionArea>Department of Software and Information Systems, College of Computing and Informatics, University of North Carolina Charlotte, Charlotte, NC</wicri:regionArea>
<placeName>
<region type="state">Caroline du Nord</region>
</placeName>
</affiliation>
</author>
<author>
<name sortKey="Zhu, Baoli" sort="Zhu, Baoli" uniqKey="Zhu B" first="Baoli" last="Zhu">Baoli Zhu</name>
<affiliation wicri:level="1">
<nlm:affiliation>Center for Global Health, School of Public Health, Nanjing Medical University, Nanjing, China.</nlm:affiliation>
<country xml:lang="fr">République populaire de Chine</country>
<wicri:regionArea>Center for Global Health, School of Public Health, Nanjing Medical University, Nanjing</wicri:regionArea>
<wicri:noRegion>Nanjing</wicri:noRegion>
</affiliation>
</author>
<author>
<name sortKey="Liu, Jie" sort="Liu, Jie" uniqKey="Liu J" first="Jie" last="Liu">Jie Liu</name>
<affiliation wicri:level="3">
<nlm:affiliation>Department of Radiology, Union Hospital, Tongji Medical College, Huazhong University of Science and Technology, Wuhan, China.</nlm:affiliation>
<country xml:lang="fr">République populaire de Chine</country>
<wicri:regionArea>Department of Radiology, Union Hospital, Tongji Medical College, Huazhong University of Science and Technology, Wuhan</wicri:regionArea>
<placeName>
<settlement type="city">Wuhan</settlement>
<region type="région">Hubei</region>
</placeName>
</affiliation>
</author>
<author>
<name sortKey="Chen, Shi" sort="Chen, Shi" uniqKey="Chen S" first="Shi" last="Chen">Shi Chen</name>
<affiliation wicri:level="2">
<nlm:affiliation>Department of Public Health Sciences, College of Health and Human Services, University of North Carolina Charlotte, Charlotte, NC, United States.</nlm:affiliation>
<country xml:lang="fr">États-Unis</country>
<wicri:regionArea>Department of Public Health Sciences, College of Health and Human Services, University of North Carolina Charlotte, Charlotte, NC</wicri:regionArea>
<placeName>
<region type="state">Caroline du Nord</region>
</placeName>
</affiliation>
<affiliation wicri:level="2">
<nlm:affiliation>School of Data Science, University of North Carolina Charlotte, Charlotte, NC, United States.</nlm:affiliation>
<country xml:lang="fr">États-Unis</country>
<wicri:regionArea>School of Data Science, University of North Carolina Charlotte, Charlotte, NC</wicri:regionArea>
<placeName>
<region type="state">Caroline du Nord</region>
</placeName>
</affiliation>
</author>
</analytic>
<series>
<title level="j">Journal of medical Internet research</title>
<idno type="eISSN">1438-8871</idno>
<imprint>
<date when="2021" type="published">2021</date>
</imprint>
</series>
</biblStruct>
</sourceDesc>
</fileDesc>
<profileDesc>
<textClass>
<keywords scheme="KwdEn" xml:lang="en">
<term>COVID-19 (diagnosis)</term>
<term>COVID-19 (diagnostic imaging)</term>
<term>Decision Support Systems, Clinical (MeSH)</term>
<term>Diagnosis, Differential (MeSH)</term>
<term>Health (MeSH)</term>
<term>Humans (MeSH)</term>
<term>Machine Learning (MeSH)</term>
<term>Middle Aged (MeSH)</term>
<term>Pneumonia, Viral (diagnosis)</term>
<term>Pneumonia, Viral (diagnostic imaging)</term>
<term>SARS-CoV-2 (MeSH)</term>
<term>Support Vector Machine (MeSH)</term>
<term>Tomography, X-Ray Computed (MeSH)</term>
</keywords>
<keywords scheme="KwdFr" xml:lang="fr">
<term>Adulte d'âge moyen (MeSH)</term>
<term>Apprentissage machine (MeSH)</term>
<term>Diagnostic différentiel (MeSH)</term>
<term>Humains (MeSH)</term>
<term>Machine à vecteur de support (MeSH)</term>
<term>Pneumopathie virale (diagnostic)</term>
<term>Pneumopathie virale (imagerie diagnostique)</term>
<term>Santé (MeSH)</term>
<term>Systèmes d'aide à la décision clinique (MeSH)</term>
<term>Tomodensitométrie (MeSH)</term>
</keywords>
<keywords scheme="MESH" qualifier="diagnosis" xml:lang="en">
<term>COVID-19</term>
<term>Pneumonia, Viral</term>
</keywords>
<keywords scheme="MESH" qualifier="diagnostic" xml:lang="fr">
<term>Pneumopathie virale</term>
</keywords>
<keywords scheme="MESH" qualifier="diagnostic imaging" xml:lang="en">
<term>COVID-19</term>
<term>Pneumonia, Viral</term>
</keywords>
<keywords scheme="MESH" qualifier="imagerie diagnostique" xml:lang="fr">
<term>Pneumopathie virale</term>
</keywords>
<keywords scheme="MESH" xml:lang="en">
<term>Decision Support Systems, Clinical</term>
<term>Diagnosis, Differential</term>
<term>Health</term>
<term>Humans</term>
<term>Machine Learning</term>
<term>Middle Aged</term>
<term>SARS-CoV-2</term>
<term>Support Vector Machine</term>
<term>Tomography, X-Ray Computed</term>
</keywords>
<keywords scheme="MESH" xml:lang="fr">
<term>Adulte d'âge moyen</term>
<term>Apprentissage machine</term>
<term>Diagnostic différentiel</term>
<term>Humains</term>
<term>Machine à vecteur de support</term>
<term>Santé</term>
<term>Systèmes d'aide à la décision clinique</term>
<term>Tomodensitométrie</term>
</keywords>
</textClass>
</profileDesc>
</teiHeader>
<front>
<div type="abstract" xml:lang="en">
<p>
<b>BACKGROUND</b>
</p>
<p>Effectively identifying patients with COVID-19 using nonpolymerase chain reaction biomedical data is critical for achieving optimal clinical outcomes. Currently, there is a lack of comprehensive understanding in various biomedical features and appropriate analytical approaches for enabling the early detection and effective diagnosis of patients with COVID-19.</p>
</div>
<div type="abstract" xml:lang="en">
<p>
<b>OBJECTIVE</b>
</p>
<p>We aimed to combine low-dimensional clinical and lab testing data, as well as high-dimensional computed tomography (CT) imaging data, to accurately differentiate between healthy individuals, patients with COVID-19, and patients with non-COVID viral pneumonia, especially at the early stage of infection.</p>
</div>
<div type="abstract" xml:lang="en">
<p>
<b>METHODS</b>
</p>
<p>In this study, we recruited 214 patients with nonsevere COVID-19, 148 patients with severe COVID-19, 198 noninfected healthy participants, and 129 patients with non-COVID viral pneumonia. The participants' clinical information (ie, 23 features), lab testing results (ie, 10 features), and CT scans upon admission were acquired and used as 3 input feature modalities. To enable the late fusion of multimodal features, we constructed a deep learning model to extract a 10-feature high-level representation of CT scans. We then developed 3 machine learning models (ie, k-nearest neighbor, random forest, and support vector machine models) based on the combined 43 features from all 3 modalities to differentiate between the following 4 classes: nonsevere, severe, healthy, and viral pneumonia.</p>
</div>
<div type="abstract" xml:lang="en">
<p>
<b>RESULTS</b>
</p>
<p>Multimodal features provided substantial performance gain from the use of any single feature modality. All 3 machine learning models had high overall prediction accuracy (95.4%-97.7%) and high class-specific prediction accuracy (90.6%-99.9%).</p>
</div>
<div type="abstract" xml:lang="en">
<p>
<b>CONCLUSIONS</b>
</p>
<p>Compared to the existing binary classification benchmarks that are often focused on single-feature modality, this study's hybrid deep learning-machine learning framework provided a novel and effective breakthrough for clinical applications. Our findings, which come from a relatively large sample size, and analytical workflow will supplement and assist with clinical decision support for current COVID-19 diagnostic methods and other clinical applications with high-dimensional multimodal biomedical features.</p>
</div>
</front>
</TEI>
<pubmed>
<MedlineCitation Status="MEDLINE" IndexingMethod="Curated" Owner="NLM">
<PMID Version="1">33404516</PMID>
<DateCompleted>
<Year>2021</Year>
<Month>01</Month>
<Day>13</Day>
</DateCompleted>
<DateRevised>
<Year>2021</Year>
<Month>01</Month>
<Day>14</Day>
</DateRevised>
<Article PubModel="Electronic">
<Journal>
<ISSN IssnType="Electronic">1438-8871</ISSN>
<JournalIssue CitedMedium="Internet">
<Volume>23</Volume>
<Issue>1</Issue>
<PubDate>
<Year>2021</Year>
<Month>01</Month>
<Day>06</Day>
</PubDate>
</JournalIssue>
<Title>Journal of medical Internet research</Title>
<ISOAbbreviation>J Med Internet Res</ISOAbbreviation>
</Journal>
<ArticleTitle>Accurately Differentiating Between Patients With COVID-19, Patients With Other Viral Infections, and Healthy Individuals: Multimodal Late Fusion Learning Approach.</ArticleTitle>
<Pagination>
<MedlinePgn>e25535</MedlinePgn>
</Pagination>
<ELocationID EIdType="doi" ValidYN="Y">10.2196/25535</ELocationID>
<Abstract>
<AbstractText Label="BACKGROUND">Effectively identifying patients with COVID-19 using nonpolymerase chain reaction biomedical data is critical for achieving optimal clinical outcomes. Currently, there is a lack of comprehensive understanding in various biomedical features and appropriate analytical approaches for enabling the early detection and effective diagnosis of patients with COVID-19.</AbstractText>
<AbstractText Label="OBJECTIVE">We aimed to combine low-dimensional clinical and lab testing data, as well as high-dimensional computed tomography (CT) imaging data, to accurately differentiate between healthy individuals, patients with COVID-19, and patients with non-COVID viral pneumonia, especially at the early stage of infection.</AbstractText>
<AbstractText Label="METHODS">In this study, we recruited 214 patients with nonsevere COVID-19, 148 patients with severe COVID-19, 198 noninfected healthy participants, and 129 patients with non-COVID viral pneumonia. The participants' clinical information (ie, 23 features), lab testing results (ie, 10 features), and CT scans upon admission were acquired and used as 3 input feature modalities. To enable the late fusion of multimodal features, we constructed a deep learning model to extract a 10-feature high-level representation of CT scans. We then developed 3 machine learning models (ie, k-nearest neighbor, random forest, and support vector machine models) based on the combined 43 features from all 3 modalities to differentiate between the following 4 classes: nonsevere, severe, healthy, and viral pneumonia.</AbstractText>
<AbstractText Label="RESULTS">Multimodal features provided substantial performance gain from the use of any single feature modality. All 3 machine learning models had high overall prediction accuracy (95.4%-97.7%) and high class-specific prediction accuracy (90.6%-99.9%).</AbstractText>
<AbstractText Label="CONCLUSIONS">Compared to the existing binary classification benchmarks that are often focused on single-feature modality, this study's hybrid deep learning-machine learning framework provided a novel and effective breakthrough for clinical applications. Our findings, which come from a relatively large sample size, and analytical workflow will supplement and assist with clinical decision support for current COVID-19 diagnostic methods and other clinical applications with high-dimensional multimodal biomedical features.</AbstractText>
<CopyrightInformation>©Ming Xu, Liu Ouyang, Lei Han, Kai Sun, Tingting Yu, Qian Li, Hua Tian, Lida Safarnejad, Hengdong Zhang, Yue Gao, Forrest Sheng Bao, Yuanfang Chen, Patrick Robinson, Yaorong Ge, Baoli Zhu, Jie Liu, Shi Chen. Originally published in the Journal of Medical Internet Research (http://www.jmir.org), 06.01.2021.</CopyrightInformation>
</Abstract>
<AuthorList CompleteYN="Y">
<Author ValidYN="Y" EqualContrib="Y">
<LastName>Xu</LastName>
<ForeName>Ming</ForeName>
<Initials>M</Initials>
<Identifier Source="ORCID">0000-0001-8846-2880</Identifier>
<AffiliationInfo>
<Affiliation>Department of Occupational Disease Prevention, Jiangsu Provincial Center for Disease Control and Prevention, Nanjing, China.</Affiliation>
</AffiliationInfo>
<AffiliationInfo>
<Affiliation>Center for Global Health, School of Public Health, Nanjing Medical University, Nanjing, China.</Affiliation>
</AffiliationInfo>
<AffiliationInfo>
<Affiliation>Department of Public Health Sciences, College of Health and Human Services, University of North Carolina Charlotte, Charlotte, NC, United States.</Affiliation>
</AffiliationInfo>
</Author>
<Author ValidYN="Y" EqualContrib="Y">
<LastName>Ouyang</LastName>
<ForeName>Liu</ForeName>
<Initials>L</Initials>
<Identifier Source="ORCID">0000-0002-1404-1263</Identifier>
<AffiliationInfo>
<Affiliation>Department of Orthopedics, Union Hospital, Tongji Medical College, Huazhong University of Science and Technology, Wuhan, China.</Affiliation>
</AffiliationInfo>
</Author>
<Author ValidYN="Y" EqualContrib="Y">
<LastName>Han</LastName>
<ForeName>Lei</ForeName>
<Initials>L</Initials>
<Identifier Source="ORCID">0000-0002-8176-4912</Identifier>
<AffiliationInfo>
<Affiliation>Department of Occupational Disease Prevention, Jiangsu Provincial Center for Disease Control and Prevention, Nanjing, China.</Affiliation>
</AffiliationInfo>
<AffiliationInfo>
<Affiliation>Center for Global Health, School of Public Health, Nanjing Medical University, Nanjing, China.</Affiliation>
</AffiliationInfo>
</Author>
<Author ValidYN="Y" EqualContrib="Y">
<LastName>Sun</LastName>
<ForeName>Kai</ForeName>
<Initials>K</Initials>
<Identifier Source="ORCID">0000-0001-9512-3764</Identifier>
<AffiliationInfo>
<Affiliation>Department of Emergency Medicine, The First Hospital of Nanjing Medical University, Nanjing, China.</Affiliation>
</AffiliationInfo>
</Author>
<Author ValidYN="Y" EqualContrib="Y">
<LastName>Yu</LastName>
<ForeName>Tingting</ForeName>
<Initials>T</Initials>
<Identifier Source="ORCID">0000-0003-1694-7592</Identifier>
<AffiliationInfo>
<Affiliation>Department of Medical Genetics, School of Basic Medical Science Jiangsu Key Laboratory of Xenotransplantation, Nanjing Medical University, Nanjing, China.</Affiliation>
</AffiliationInfo>
</Author>
<Author ValidYN="Y" EqualContrib="Y">
<LastName>Li</LastName>
<ForeName>Qian</ForeName>
<Initials>Q</Initials>
<Identifier Source="ORCID">0000-0002-4268-3909</Identifier>
<AffiliationInfo>
<Affiliation>Department of Pediatrics, Affiliated Kunshan Hospital of Jiangsu University, Kunshan, China.</Affiliation>
</AffiliationInfo>
</Author>
<Author ValidYN="Y" EqualContrib="Y">
<LastName>Tian</LastName>
<ForeName>Hua</ForeName>
<Initials>H</Initials>
<Identifier Source="ORCID">0000-0002-9006-4416</Identifier>
<AffiliationInfo>
<Affiliation>Department of Acute Infectious Disease Control and Prevention, Jiangsu Provincial Center for Disease Control and Prevention, Nanjing, China.</Affiliation>
</AffiliationInfo>
</Author>
<Author ValidYN="Y">
<LastName>Safarnejad</LastName>
<ForeName>Lida</ForeName>
<Initials>L</Initials>
<Identifier Source="ORCID">0000-0002-6377-7314</Identifier>
<AffiliationInfo>
<Affiliation>School of Medicine, Stanford University, Stanford, CA, United States.</Affiliation>
</AffiliationInfo>
<AffiliationInfo>
<Affiliation>Department of Software and Information Systems, College of Computing and Informatics, University of North Carolina Charlotte, Charlotte, NC, United States.</Affiliation>
</AffiliationInfo>
</Author>
<Author ValidYN="Y">
<LastName>Zhang</LastName>
<ForeName>Hengdong</ForeName>
<Initials>H</Initials>
<Identifier Source="ORCID">0000-0002-6292-8459</Identifier>
<AffiliationInfo>
<Affiliation>Department of Occupational Disease Prevention, Jiangsu Provincial Center for Disease Control and Prevention, Nanjing, China.</Affiliation>
</AffiliationInfo>
<AffiliationInfo>
<Affiliation>Center for Global Health, School of Public Health, Nanjing Medical University, Nanjing, China.</Affiliation>
</AffiliationInfo>
</Author>
<Author ValidYN="Y">
<LastName>Gao</LastName>
<ForeName>Yue</ForeName>
<Initials>Y</Initials>
<Identifier Source="ORCID">0000-0002-2641-782X</Identifier>
<AffiliationInfo>
<Affiliation>Department of Occupational Disease Prevention, Jiangsu Provincial Center for Disease Control and Prevention, Nanjing, China.</Affiliation>
</AffiliationInfo>
</Author>
<Author ValidYN="Y">
<LastName>Bao</LastName>
<ForeName>Forrest Sheng</ForeName>
<Initials>FS</Initials>
<Identifier Source="ORCID">0000-0002-5722-5337</Identifier>
<AffiliationInfo>
<Affiliation>Department of Computer Science, Iowa State University, Ames, IA, United States.</Affiliation>
</AffiliationInfo>
</Author>
<Author ValidYN="Y">
<LastName>Chen</LastName>
<ForeName>Yuanfang</ForeName>
<Initials>Y</Initials>
<Identifier Source="ORCID">0000-0002-1109-8491</Identifier>
<AffiliationInfo>
<Affiliation>Institute of HIV/AIDS/STI Prevention and Control, Jiangsu Provincial Center for Disease Control and Prevention, Nanjing, China.</Affiliation>
</AffiliationInfo>
</Author>
<Author ValidYN="Y">
<LastName>Robinson</LastName>
<ForeName>Patrick</ForeName>
<Initials>P</Initials>
<Identifier Source="ORCID">0000-0001-9237-9414</Identifier>
<AffiliationInfo>
<Affiliation>Department of Public Health Sciences, College of Health and Human Services, University of North Carolina Charlotte, Charlotte, NC, United States.</Affiliation>
</AffiliationInfo>
</Author>
<Author ValidYN="Y">
<LastName>Ge</LastName>
<ForeName>Yaorong</ForeName>
<Initials>Y</Initials>
<Identifier Source="ORCID">0000-0002-9576-0293</Identifier>
<AffiliationInfo>
<Affiliation>Department of Software and Information Systems, College of Computing and Informatics, University of North Carolina Charlotte, Charlotte, NC, United States.</Affiliation>
</AffiliationInfo>
</Author>
<Author ValidYN="Y">
<LastName>Zhu</LastName>
<ForeName>Baoli</ForeName>
<Initials>B</Initials>
<Identifier Source="ORCID">0000-0001-9408-8266</Identifier>
<AffiliationInfo>
<Affiliation>Center for Global Health, School of Public Health, Nanjing Medical University, Nanjing, China.</Affiliation>
</AffiliationInfo>
</Author>
<Author ValidYN="Y">
<LastName>Liu</LastName>
<ForeName>Jie</ForeName>
<Initials>J</Initials>
<Identifier Source="ORCID">0000-0002-7927-8309</Identifier>
<AffiliationInfo>
<Affiliation>Department of Radiology, Union Hospital, Tongji Medical College, Huazhong University of Science and Technology, Wuhan, China.</Affiliation>
</AffiliationInfo>
</Author>
<Author ValidYN="Y">
<LastName>Chen</LastName>
<ForeName>Shi</ForeName>
<Initials>S</Initials>
<Identifier Source="ORCID">0000-0002-2316-111X</Identifier>
<AffiliationInfo>
<Affiliation>Department of Public Health Sciences, College of Health and Human Services, University of North Carolina Charlotte, Charlotte, NC, United States.</Affiliation>
</AffiliationInfo>
<AffiliationInfo>
<Affiliation>School of Data Science, University of North Carolina Charlotte, Charlotte, NC, United States.</Affiliation>
</AffiliationInfo>
</Author>
</AuthorList>
<Language>eng</Language>
<PublicationTypeList>
<PublicationType UI="D016428">Journal Article</PublicationType>
</PublicationTypeList>
<ArticleDate DateType="Electronic">
<Year>2021</Year>
<Month>01</Month>
<Day>06</Day>
</ArticleDate>
</Article>
<MedlineJournalInfo>
<Country>Canada</Country>
<MedlineTA>J Med Internet Res</MedlineTA>
<NlmUniqueID>100959882</NlmUniqueID>
<ISSNLinking>1438-8871</ISSNLinking>
</MedlineJournalInfo>
<CitationSubset>IM</CitationSubset>
<MeshHeadingList>
<MeshHeading>
<DescriptorName UI="D000086382" MajorTopicYN="N">COVID-19</DescriptorName>
<QualifierName UI="Q000175" MajorTopicYN="Y">diagnosis</QualifierName>
<QualifierName UI="Q000000981" MajorTopicYN="N">diagnostic imaging</QualifierName>
</MeshHeading>
<MeshHeading>
<DescriptorName UI="D020000" MajorTopicYN="Y">Decision Support Systems, Clinical</DescriptorName>
</MeshHeading>
<MeshHeading>
<DescriptorName UI="D003937" MajorTopicYN="N">Diagnosis, Differential</DescriptorName>
</MeshHeading>
<MeshHeading>
<DescriptorName UI="D006262" MajorTopicYN="Y">Health</DescriptorName>
</MeshHeading>
<MeshHeading>
<DescriptorName UI="D006801" MajorTopicYN="N">Humans</DescriptorName>
</MeshHeading>
<MeshHeading>
<DescriptorName UI="D000069550" MajorTopicYN="Y">Machine Learning</DescriptorName>
</MeshHeading>
<MeshHeading>
<DescriptorName UI="D008875" MajorTopicYN="N">Middle Aged</DescriptorName>
</MeshHeading>
<MeshHeading>
<DescriptorName UI="D011024" MajorTopicYN="N">Pneumonia, Viral</DescriptorName>
<QualifierName UI="Q000175" MajorTopicYN="Y">diagnosis</QualifierName>
<QualifierName UI="Q000000981" MajorTopicYN="N">diagnostic imaging</QualifierName>
</MeshHeading>
<MeshHeading>
<DescriptorName UI="D000086402" MajorTopicYN="N">SARS-CoV-2</DescriptorName>
</MeshHeading>
<MeshHeading>
<DescriptorName UI="D060388" MajorTopicYN="N">Support Vector Machine</DescriptorName>
</MeshHeading>
<MeshHeading>
<DescriptorName UI="D014057" MajorTopicYN="N">Tomography, X-Ray Computed</DescriptorName>
</MeshHeading>
</MeshHeadingList>
<KeywordList Owner="NOTNLM">
<Keyword MajorTopicYN="Y">COVID-19</Keyword>
<Keyword MajorTopicYN="Y">biomedical imaging</Keyword>
<Keyword MajorTopicYN="Y">deep learning</Keyword>
<Keyword MajorTopicYN="Y">diagnosis</Keyword>
<Keyword MajorTopicYN="Y">diagnosis support</Keyword>
<Keyword MajorTopicYN="Y">diagnostic</Keyword>
<Keyword MajorTopicYN="Y">differentiation</Keyword>
<Keyword MajorTopicYN="Y">feature fusion</Keyword>
<Keyword MajorTopicYN="Y">imaging</Keyword>
<Keyword MajorTopicYN="Y">machine learning</Keyword>
<Keyword MajorTopicYN="Y">multimodal</Keyword>
<Keyword MajorTopicYN="Y">testing</Keyword>
</KeywordList>
</MedlineCitation>
<PubmedData>
<History>
<PubMedPubDate PubStatus="received">
<Year>2020</Year>
<Month>11</Month>
<Day>05</Day>
</PubMedPubDate>
<PubMedPubDate PubStatus="accepted">
<Year>2020</Year>
<Month>12</Month>
<Day>17</Day>
</PubMedPubDate>
<PubMedPubDate PubStatus="revised">
<Year>2020</Year>
<Month>12</Month>
<Day>07</Day>
</PubMedPubDate>
<PubMedPubDate PubStatus="entrez">
<Year>2021</Year>
<Month>1</Month>
<Day>6</Day>
<Hour>12</Hour>
<Minute>15</Minute>
</PubMedPubDate>
<PubMedPubDate PubStatus="pubmed">
<Year>2021</Year>
<Month>1</Month>
<Day>7</Day>
<Hour>6</Hour>
<Minute>0</Minute>
</PubMedPubDate>
<PubMedPubDate PubStatus="medline">
<Year>2021</Year>
<Month>1</Month>
<Day>14</Day>
<Hour>6</Hour>
<Minute>0</Minute>
</PubMedPubDate>
</History>
<PublicationStatus>epublish</PublicationStatus>
<ArticleIdList>
<ArticleId IdType="pubmed">33404516</ArticleId>
<ArticleId IdType="pii">v23i1e25535</ArticleId>
<ArticleId IdType="doi">10.2196/25535</ArticleId>
<ArticleId IdType="pmc">PMC7790733</ArticleId>
</ArticleIdList>
<ReferenceList>
<Reference>
<Citation>J Infect. 2020 Mar 3;:</Citation>
<ArticleIdList>
<ArticleId IdType="pubmed">32142928</ArticleId>
</ArticleIdList>
</Reference>
<Reference>
<Citation>Korean J Radiol. 2020 May;21(5):537-540</Citation>
<ArticleIdList>
<ArticleId IdType="pubmed">32174057</ArticleId>
</ArticleIdList>
</Reference>
<Reference>
<Citation>Radiology. 2020 Aug;296(2):E65-E71</Citation>
<ArticleIdList>
<ArticleId IdType="pubmed">32191588</ArticleId>
</ArticleIdList>
</Reference>
<Reference>
<Citation>Eur Radiol. 2020 Oct;30(10):5470-5478</Citation>
<ArticleIdList>
<ArticleId IdType="pubmed">32394279</ArticleId>
</ArticleIdList>
</Reference>
<Reference>
<Citation>Eur Radiol. 2020 Nov;30(11):6129-6138</Citation>
<ArticleIdList>
<ArticleId IdType="pubmed">32474632</ArticleId>
</ArticleIdList>
</Reference>
<Reference>
<Citation>J Med Virol. 2020 Jun;92(6):538-539</Citation>
<ArticleIdList>
<ArticleId IdType="pubmed">32096564</ArticleId>
</ArticleIdList>
</Reference>
<Reference>
<Citation>Nat Med. 2020 Aug;26(8):1224-1228</Citation>
<ArticleIdList>
<ArticleId IdType="pubmed">32427924</ArticleId>
</ArticleIdList>
</Reference>
<Reference>
<Citation>JMIR Mhealth Uhealth. 2020 Jun 23;8(6):e19822</Citation>
<ArticleIdList>
<ArticleId IdType="pubmed">32516750</ArticleId>
</ArticleIdList>
</Reference>
<Reference>
<Citation>New Sci. 2020 May 16;246(3282):10</Citation>
<ArticleIdList>
<ArticleId IdType="pubmed">32501335</ArticleId>
</ArticleIdList>
</Reference>
<Reference>
<Citation>Clin Chem Lab Med. 2020 Jun 25;58(7):1095-1099</Citation>
<ArticleIdList>
<ArticleId IdType="pubmed">32301746</ArticleId>
</ArticleIdList>
</Reference>
<Reference>
<Citation>JAMA. 2020 Apr 7;323(13):1239-1242</Citation>
<ArticleIdList>
<ArticleId IdType="pubmed">32091533</ArticleId>
</ArticleIdList>
</Reference>
<Reference>
<Citation>Hepatology. 2020 Jun 30;:</Citation>
<ArticleIdList>
<ArticleId IdType="pubmed">32602604</ArticleId>
</ArticleIdList>
</Reference>
<Reference>
<Citation>Clin Radiol. 2020 May;75(5):329-334</Citation>
<ArticleIdList>
<ArticleId IdType="pubmed">32265036</ArticleId>
</ArticleIdList>
</Reference>
<Reference>
<Citation>Diabetes Res Clin Pract. 2020 Aug;166:108347</Citation>
<ArticleIdList>
<ArticleId IdType="pubmed">32711003</ArticleId>
</ArticleIdList>
</Reference>
<Reference>
<Citation>J Med Syst. 2020 Jul 1;44(8):135</Citation>
<ArticleIdList>
<ArticleId IdType="pubmed">32607737</ArticleId>
</ArticleIdList>
</Reference>
<Reference>
<Citation>Acta Clin Belg. 2020 Oct;75(5):348-356</Citation>
<ArticleIdList>
<ArticleId IdType="pubmed">32723027</ArticleId>
</ArticleIdList>
</Reference>
<Reference>
<Citation>Clin Infect Dis. 2020 Nov 19;71(16):2079-2088</Citation>
<ArticleIdList>
<ArticleId IdType="pubmed">32361723</ArticleId>
</ArticleIdList>
</Reference>
<Reference>
<Citation>J Infect. 2020 Jul;81(1):e33-e39</Citation>
<ArticleIdList>
<ArticleId IdType="pubmed">32294504</ArticleId>
</ArticleIdList>
</Reference>
<Reference>
<Citation>Sci Rep. 2019 Apr 23;9(1):6381</Citation>
<ArticleIdList>
<ArticleId IdType="pubmed">31011155</ArticleId>
</ArticleIdList>
</Reference>
<Reference>
<Citation>Radiology. 2020 Aug;296(2):E46-E54</Citation>
<ArticleIdList>
<ArticleId IdType="pubmed">32155105</ArticleId>
</ArticleIdList>
</Reference>
<Reference>
<Citation>Comput Biol Med. 2020 Jun;121:103795</Citation>
<ArticleIdList>
<ArticleId IdType="pubmed">32568676</ArticleId>
</ArticleIdList>
</Reference>
<Reference>
<Citation>Lancet Infect Dis. 2020 Sep;20(9):996-998</Citation>
<ArticleIdList>
<ArticleId IdType="pubmed">32539989</ArticleId>
</ArticleIdList>
</Reference>
<Reference>
<Citation>N Engl J Med. 2020 May 28;382(22):2158-2160</Citation>
<ArticleIdList>
<ArticleId IdType="pubmed">32329972</ArticleId>
</ArticleIdList>
</Reference>
<Reference>
<Citation>Clin Infect Dis. 2020 Jul 28;71(15):786-792</Citation>
<ArticleIdList>
<ArticleId IdType="pubmed">32211755</ArticleId>
</ArticleIdList>
</Reference>
<Reference>
<Citation>Lancet Infect Dis. 2020 Apr;20(4):425-434</Citation>
<ArticleIdList>
<ArticleId IdType="pubmed">32105637</ArticleId>
</ArticleIdList>
</Reference>
<Reference>
<Citation>AJR Am J Roentgenol. 2020 Jul;215(1):121-126</Citation>
<ArticleIdList>
<ArticleId IdType="pubmed">32174128</ArticleId>
</ArticleIdList>
</Reference>
<Reference>
<Citation>Eur Radiol. 2020 Dec;30(12):6485-6496</Citation>
<ArticleIdList>
<ArticleId IdType="pubmed">32594211</ArticleId>
</ArticleIdList>
</Reference>
<Reference>
<Citation>J Med Internet Res. 2020 Jun 29;22(6):e19569</Citation>
<ArticleIdList>
<ArticleId IdType="pubmed">32568730</ArticleId>
</ArticleIdList>
</Reference>
<Reference>
<Citation>Am J Respir Crit Care Med. 2019 Oct 1;200(7):e45-e67</Citation>
<ArticleIdList>
<ArticleId IdType="pubmed">31573350</ArticleId>
</ArticleIdList>
</Reference>
<Reference>
<Citation>Am J Infect Control. 2021 Jan;49(1):21-29</Citation>
<ArticleIdList>
<ArticleId IdType="pubmed">32659413</ArticleId>
</ArticleIdList>
</Reference>
<Reference>
<Citation>IEEE Trans Med Imaging. 2020 Aug;39(8):2638-2652</Citation>
<ArticleIdList>
<ArticleId IdType="pubmed">32730214</ArticleId>
</ArticleIdList>
</Reference>
<Reference>
<Citation>N Engl J Med. 2020 May 21;382(21):1973-1975</Citation>
<ArticleIdList>
<ArticleId IdType="pubmed">32202721</ArticleId>
</ArticleIdList>
</Reference>
<Reference>
<Citation>OMICS. 2020 Sep;24(9):512-514</Citation>
<ArticleIdList>
<ArticleId IdType="pubmed">32511048</ArticleId>
</ArticleIdList>
</Reference>
<Reference>
<Citation>PLoS One. 2020 Jun 26;15(6):e0235187</Citation>
<ArticleIdList>
<ArticleId IdType="pubmed">32589673</ArticleId>
</ArticleIdList>
</Reference>
<Reference>
<Citation>J Clin Med. 2020 May 09;9(5):</Citation>
<ArticleIdList>
<ArticleId IdType="pubmed">32397558</ArticleId>
</ArticleIdList>
</Reference>
<Reference>
<Citation>Diabetes Metab Syndr. 2020 Sep - Oct;14(5):1109-1120</Citation>
<ArticleIdList>
<ArticleId IdType="pubmed">32659694</ArticleId>
</ArticleIdList>
</Reference>
<Reference>
<Citation>IEEE Trans Pattern Anal Mach Intell. 2019 Feb;41(2):423-443</Citation>
<ArticleIdList>
<ArticleId IdType="pubmed">29994351</ArticleId>
</ArticleIdList>
</Reference>
<Reference>
<Citation>Nat Med. 2020 Jul;26(7):1037-1040</Citation>
<ArticleIdList>
<ArticleId IdType="pubmed">32393804</ArticleId>
</ArticleIdList>
</Reference>
<Reference>
<Citation>JAMA Cardiol. 2020 Jul 1;5(7):831-840</Citation>
<ArticleIdList>
<ArticleId IdType="pubmed">32219363</ArticleId>
</ArticleIdList>
</Reference>
<Reference>
<Citation>Invest Radiol. 2020 Jul;55(7):412-421</Citation>
<ArticleIdList>
<ArticleId IdType="pubmed">32304402</ArticleId>
</ArticleIdList>
</Reference>
<Reference>
<Citation>Radiology. 2020 Aug;296(2):E32-E40</Citation>
<ArticleIdList>
<ArticleId IdType="pubmed">32101510</ArticleId>
</ArticleIdList>
</Reference>
<Reference>
<Citation>Commun Dis Intell (2018). 2020 Jul 9;44:</Citation>
<ArticleIdList>
<ArticleId IdType="pubmed">32640950</ArticleId>
</ArticleIdList>
</Reference>
<Reference>
<Citation>Cytometry A. 2020 Mar;97(3):215-216</Citation>
<ArticleIdList>
<ArticleId IdType="pubmed">32142596</ArticleId>
</ArticleIdList>
</Reference>
<Reference>
<Citation>Open Forum Infect Dis. 2020 May 16;7(6):ofaa171</Citation>
<ArticleIdList>
<ArticleId IdType="pubmed">32518804</ArticleId>
</ArticleIdList>
</Reference>
<Reference>
<Citation>OMICS. 2020 Aug;24(8):457-459</Citation>
<ArticleIdList>
<ArticleId IdType="pubmed">32427517</ArticleId>
</ArticleIdList>
</Reference>
<Reference>
<Citation>Radiology. 2020 Aug;296(2):E115-E117</Citation>
<ArticleIdList>
<ArticleId IdType="pubmed">32073353</ArticleId>
</ArticleIdList>
</Reference>
<Reference>
<Citation>J Med Virol. 2020 May;92(5):464-467</Citation>
<ArticleIdList>
<ArticleId IdType="pubmed">32031264</ArticleId>
</ArticleIdList>
</Reference>
<Reference>
<Citation>Invest Radiol. 2020 May;55(5):257-261</Citation>
<ArticleIdList>
<ArticleId IdType="pubmed">32091414</ArticleId>
</ArticleIdList>
</Reference>
</ReferenceList>
</PubmedData>
</pubmed>
<affiliations>
<list>
<country>
<li>République populaire de Chine</li>
<li>États-Unis</li>
</country>
<region>
<li>Californie</li>
<li>Caroline du Nord</li>
<li>Hubei</li>
<li>Iowa</li>
</region>
<settlement>
<li>Ames (Iowa)</li>
<li>Stanford (Californie)</li>
<li>Wuhan</li>
</settlement>
<orgName>
<li>Université Stanford</li>
<li>Université d'État de l'Iowa</li>
</orgName>
</list>
<tree>
<country name="République populaire de Chine">
<noRegion>
<name sortKey="Xu, Ming" sort="Xu, Ming" uniqKey="Xu M" first="Ming" last="Xu">Ming Xu</name>
</noRegion>
<name sortKey="Chen, Yuanfang" sort="Chen, Yuanfang" uniqKey="Chen Y" first="Yuanfang" last="Chen">Yuanfang Chen</name>
<name sortKey="Gao, Yue" sort="Gao, Yue" uniqKey="Gao Y" first="Yue" last="Gao">Yue Gao</name>
<name sortKey="Han, Lei" sort="Han, Lei" uniqKey="Han L" first="Lei" last="Han">Lei Han</name>
<name sortKey="Han, Lei" sort="Han, Lei" uniqKey="Han L" first="Lei" last="Han">Lei Han</name>
<name sortKey="Li, Qian" sort="Li, Qian" uniqKey="Li Q" first="Qian" last="Li">Qian Li</name>
<name sortKey="Liu, Jie" sort="Liu, Jie" uniqKey="Liu J" first="Jie" last="Liu">Jie Liu</name>
<name sortKey="Ouyang, Liu" sort="Ouyang, Liu" uniqKey="Ouyang L" first="Liu" last="Ouyang">Liu Ouyang</name>
<name sortKey="Sun, Kai" sort="Sun, Kai" uniqKey="Sun K" first="Kai" last="Sun">Kai Sun</name>
<name sortKey="Tian, Hua" sort="Tian, Hua" uniqKey="Tian H" first="Hua" last="Tian">Hua Tian</name>
<name sortKey="Xu, Ming" sort="Xu, Ming" uniqKey="Xu M" first="Ming" last="Xu">Ming Xu</name>
<name sortKey="Yu, Tingting" sort="Yu, Tingting" uniqKey="Yu T" first="Tingting" last="Yu">Tingting Yu</name>
<name sortKey="Zhang, Hengdong" sort="Zhang, Hengdong" uniqKey="Zhang H" first="Hengdong" last="Zhang">Hengdong Zhang</name>
<name sortKey="Zhang, Hengdong" sort="Zhang, Hengdong" uniqKey="Zhang H" first="Hengdong" last="Zhang">Hengdong Zhang</name>
<name sortKey="Zhu, Baoli" sort="Zhu, Baoli" uniqKey="Zhu B" first="Baoli" last="Zhu">Baoli Zhu</name>
</country>
<country name="États-Unis">
<region name="Caroline du Nord">
<name sortKey="Xu, Ming" sort="Xu, Ming" uniqKey="Xu M" first="Ming" last="Xu">Ming Xu</name>
</region>
<name sortKey="Bao, Forrest Sheng" sort="Bao, Forrest Sheng" uniqKey="Bao F" first="Forrest Sheng" last="Bao">Forrest Sheng Bao</name>
<name sortKey="Chen, Shi" sort="Chen, Shi" uniqKey="Chen S" first="Shi" last="Chen">Shi Chen</name>
<name sortKey="Chen, Shi" sort="Chen, Shi" uniqKey="Chen S" first="Shi" last="Chen">Shi Chen</name>
<name sortKey="Ge, Yaorong" sort="Ge, Yaorong" uniqKey="Ge Y" first="Yaorong" last="Ge">Yaorong Ge</name>
<name sortKey="Robinson, Patrick" sort="Robinson, Patrick" uniqKey="Robinson P" first="Patrick" last="Robinson">Patrick Robinson</name>
<name sortKey="Safarnejad, Lida" sort="Safarnejad, Lida" uniqKey="Safarnejad L" first="Lida" last="Safarnejad">Lida Safarnejad</name>
<name sortKey="Safarnejad, Lida" sort="Safarnejad, Lida" uniqKey="Safarnejad L" first="Lida" last="Safarnejad">Lida Safarnejad</name>
</country>
</tree>
</affiliations>
</record>

Pour manipuler ce document sous Unix (Dilib)

EXPLOR_STEP=$WICRI_ROOT/Sante/explor/CovidStanfordV1/Data/Main/Exploration
HfdSelect -h $EXPLOR_STEP/biblio.hfd -nk 000115 | SxmlIndent | more

Ou

HfdSelect -h $EXPLOR_AREA/Data/Main/Exploration/biblio.hfd -nk 000115 | SxmlIndent | more

Pour mettre un lien sur cette page dans le réseau Wicri

{{Explor lien
   |wiki=    Sante
   |area=    CovidStanfordV1
   |flux=    Main
   |étape=   Exploration
   |type=    RBID
   |clé=     pubmed:33404516
   |texte=   Accurately Differentiating Between Patients With COVID-19, Patients With Other Viral Infections, and Healthy Individuals: Multimodal Late Fusion Learning Approach.
}}

Pour générer des pages wiki

HfdIndexSelect -h $EXPLOR_AREA/Data/Main/Exploration/RBID.i   -Sk "pubmed:33404516" \
       | HfdSelect -Kh $EXPLOR_AREA/Data/Main/Exploration/biblio.hfd   \
       | NlmPubMed2Wicri -a CovidStanfordV1 

Wicri

This area was generated with Dilib version V0.6.38.
Data generation: Tue Feb 2 21:24:25 2021. Site generation: Tue Feb 2 21:26:08 2021