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Fine-Grained Assessment of COVID-19 Severity Based on Clinico-Radiological Data Using Machine Learning

Background: The severe and critical cases of COVID-19 had high mortality rates. Clinical features, laboratory data, and radiological features provided important references for the assessment of COVID-19 severity. The machine learning analysis of clinico-radiological features, especially the quantita...

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Autores principales: Liu, Haipeng, Wang, Jiangtao, Geng, Yayuan, Li, Kunwei, Wu, Han, Chen, Jian, Chai, Xiangfei, Li, Shaolin, Zheng, Dingchang
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9518491/
https://www.ncbi.nlm.nih.gov/pubmed/36078380
http://dx.doi.org/10.3390/ijerph191710665
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author Liu, Haipeng
Wang, Jiangtao
Geng, Yayuan
Li, Kunwei
Wu, Han
Chen, Jian
Chai, Xiangfei
Li, Shaolin
Zheng, Dingchang
author_facet Liu, Haipeng
Wang, Jiangtao
Geng, Yayuan
Li, Kunwei
Wu, Han
Chen, Jian
Chai, Xiangfei
Li, Shaolin
Zheng, Dingchang
author_sort Liu, Haipeng
collection PubMed
description Background: The severe and critical cases of COVID-19 had high mortality rates. Clinical features, laboratory data, and radiological features provided important references for the assessment of COVID-19 severity. The machine learning analysis of clinico-radiological features, especially the quantitative computed tomography (CT) image analysis results, may achieve early, accurate, and fine-grained assessment of COVID-19 severity, which is an urgent clinical need. Objective: To evaluate if machine learning algorithms using CT-based clinico-radiological features could achieve the accurate fine-grained assessment of COVID-19 severity. Methods: The clinico-radiological features were collected from 78 COVID-19 patients with different severities. A neural network was developed to automatically measure the lesion volume from CT images. The severity was clinically diagnosed using two-type (severe and non-severe) and fine-grained four-type (mild, regular, severe, critical) classifications, respectively. To investigate the key features of COVID-19 severity, statistical analyses were performed between patients’ clinico-radiological features and severity. Four machine learning algorithms (decision tree, random forest, SVM, and XGBoost) were trained and applied in the assessment of COVID-19 severity using clinico-radiological features. Results: The CT imaging features (CTscore and lesion volume) were significantly related with COVID-19 severity (p < 0.05 in statistical analysis for both in two-type and fine-grained four-type classifications). The CT imaging features significantly improved the accuracy of machine learning algorithms in assessing COVID-19 severity in the fine-grained four-type classification. With CT analysis results added, the four-type classification achieved comparable performance to the two-type one. Conclusions: CT-based clinico-radiological features can provide an important reference for the accurate fine-grained assessment of illness severity using machine learning to achieve the early triage of COVID-19 patients.
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spelling pubmed-95184912022-09-29 Fine-Grained Assessment of COVID-19 Severity Based on Clinico-Radiological Data Using Machine Learning Liu, Haipeng Wang, Jiangtao Geng, Yayuan Li, Kunwei Wu, Han Chen, Jian Chai, Xiangfei Li, Shaolin Zheng, Dingchang Int J Environ Res Public Health Article Background: The severe and critical cases of COVID-19 had high mortality rates. Clinical features, laboratory data, and radiological features provided important references for the assessment of COVID-19 severity. The machine learning analysis of clinico-radiological features, especially the quantitative computed tomography (CT) image analysis results, may achieve early, accurate, and fine-grained assessment of COVID-19 severity, which is an urgent clinical need. Objective: To evaluate if machine learning algorithms using CT-based clinico-radiological features could achieve the accurate fine-grained assessment of COVID-19 severity. Methods: The clinico-radiological features were collected from 78 COVID-19 patients with different severities. A neural network was developed to automatically measure the lesion volume from CT images. The severity was clinically diagnosed using two-type (severe and non-severe) and fine-grained four-type (mild, regular, severe, critical) classifications, respectively. To investigate the key features of COVID-19 severity, statistical analyses were performed between patients’ clinico-radiological features and severity. Four machine learning algorithms (decision tree, random forest, SVM, and XGBoost) were trained and applied in the assessment of COVID-19 severity using clinico-radiological features. Results: The CT imaging features (CTscore and lesion volume) were significantly related with COVID-19 severity (p < 0.05 in statistical analysis for both in two-type and fine-grained four-type classifications). The CT imaging features significantly improved the accuracy of machine learning algorithms in assessing COVID-19 severity in the fine-grained four-type classification. With CT analysis results added, the four-type classification achieved comparable performance to the two-type one. Conclusions: CT-based clinico-radiological features can provide an important reference for the accurate fine-grained assessment of illness severity using machine learning to achieve the early triage of COVID-19 patients. MDPI 2022-08-26 /pmc/articles/PMC9518491/ /pubmed/36078380 http://dx.doi.org/10.3390/ijerph191710665 Text en © 2022 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Liu, Haipeng
Wang, Jiangtao
Geng, Yayuan
Li, Kunwei
Wu, Han
Chen, Jian
Chai, Xiangfei
Li, Shaolin
Zheng, Dingchang
Fine-Grained Assessment of COVID-19 Severity Based on Clinico-Radiological Data Using Machine Learning
title Fine-Grained Assessment of COVID-19 Severity Based on Clinico-Radiological Data Using Machine Learning
title_full Fine-Grained Assessment of COVID-19 Severity Based on Clinico-Radiological Data Using Machine Learning
title_fullStr Fine-Grained Assessment of COVID-19 Severity Based on Clinico-Radiological Data Using Machine Learning
title_full_unstemmed Fine-Grained Assessment of COVID-19 Severity Based on Clinico-Radiological Data Using Machine Learning
title_short Fine-Grained Assessment of COVID-19 Severity Based on Clinico-Radiological Data Using Machine Learning
title_sort fine-grained assessment of covid-19 severity based on clinico-radiological data using machine learning
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9518491/
https://www.ncbi.nlm.nih.gov/pubmed/36078380
http://dx.doi.org/10.3390/ijerph191710665
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