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

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 enabli...

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Autores principales: Xu, Ming, Ouyang, Liu, Han, Lei, Sun, Kai, Yu, Tingting, Li, Qian, Tian, Hua, Safarnejad, Lida, Zhang, Hengdong, Gao, Yue, Bao, Forrest Sheng, Chen, Yuanfang, Robinson, Patrick, Ge, Yaorong, Zhu, Baoli, Liu, Jie, Chen, Shi
Formato: Online Artículo Texto
Lenguaje:English
Publicado: JMIR Publications 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7790733/
https://www.ncbi.nlm.nih.gov/pubmed/33404516
http://dx.doi.org/10.2196/25535
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author Xu, Ming
Ouyang, Liu
Han, Lei
Sun, Kai
Yu, Tingting
Li, Qian
Tian, Hua
Safarnejad, Lida
Zhang, Hengdong
Gao, Yue
Bao, Forrest Sheng
Chen, Yuanfang
Robinson, Patrick
Ge, Yaorong
Zhu, Baoli
Liu, Jie
Chen, Shi
author_facet Xu, Ming
Ouyang, Liu
Han, Lei
Sun, Kai
Yu, Tingting
Li, Qian
Tian, Hua
Safarnejad, Lida
Zhang, Hengdong
Gao, Yue
Bao, Forrest Sheng
Chen, Yuanfang
Robinson, Patrick
Ge, Yaorong
Zhu, Baoli
Liu, Jie
Chen, Shi
author_sort Xu, Ming
collection PubMed
description 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.
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spelling pubmed-77907332021-01-13 Accurately Differentiating Between Patients With COVID-19, Patients With Other Viral Infections, and Healthy Individuals: Multimodal Late Fusion Learning Approach Xu, Ming Ouyang, Liu Han, Lei Sun, Kai Yu, Tingting Li, Qian Tian, Hua Safarnejad, Lida Zhang, Hengdong Gao, Yue Bao, Forrest Sheng Chen, Yuanfang Robinson, Patrick Ge, Yaorong Zhu, Baoli Liu, Jie Chen, Shi J Med Internet Res Original Paper 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. JMIR Publications 2021-01-06 /pmc/articles/PMC7790733/ /pubmed/33404516 http://dx.doi.org/10.2196/25535 Text en ©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. https://creativecommons.org/licenses/by/4.0/ This is an open-access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work, first published in the Journal of Medical Internet Research, is properly cited. The complete bibliographic information, a link to the original publication on http://www.jmir.org/, as well as this copyright and license information must be included.
spellingShingle Original Paper
Xu, Ming
Ouyang, Liu
Han, Lei
Sun, Kai
Yu, Tingting
Li, Qian
Tian, Hua
Safarnejad, Lida
Zhang, Hengdong
Gao, Yue
Bao, Forrest Sheng
Chen, Yuanfang
Robinson, Patrick
Ge, Yaorong
Zhu, Baoli
Liu, Jie
Chen, Shi
Accurately Differentiating Between Patients With COVID-19, Patients With Other Viral Infections, and Healthy Individuals: Multimodal Late Fusion Learning Approach
title Accurately Differentiating Between Patients With COVID-19, Patients With Other Viral Infections, and Healthy Individuals: Multimodal Late Fusion Learning Approach
title_full Accurately Differentiating Between Patients With COVID-19, Patients With Other Viral Infections, and Healthy Individuals: Multimodal Late Fusion Learning Approach
title_fullStr Accurately Differentiating Between Patients With COVID-19, Patients With Other Viral Infections, and Healthy Individuals: Multimodal Late Fusion Learning Approach
title_full_unstemmed Accurately Differentiating Between Patients With COVID-19, Patients With Other Viral Infections, and Healthy Individuals: Multimodal Late Fusion Learning Approach
title_short Accurately Differentiating Between Patients With COVID-19, Patients With Other Viral Infections, and Healthy Individuals: Multimodal Late Fusion Learning Approach
title_sort accurately differentiating between patients with covid-19, patients with other viral infections, and healthy individuals: multimodal late fusion learning approach
topic Original Paper
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7790733/
https://www.ncbi.nlm.nih.gov/pubmed/33404516
http://dx.doi.org/10.2196/25535
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