A diagnostic model for coronavirus disease 2019 (COVID-19) based on radiological semantic and clinical features: a multi-center study
Objectives Rapid and accurate diagnosis of coronavirus disease 2019 (COVID-19) is critical during the epidemic. We aim to identify differences in CT imaging and clinical manifestations between pneumonia patients with and without COVID-19, and to develop and validate a diagnostic model for COVID-19 b...
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Published in | European radiology Vol. 30; no. 9; pp. 4893 - 4902 |
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Main Authors | , , , , , , , , , , , , , , |
Format | Journal Article |
Language | English |
Published |
Berlin/Heidelberg
Springer Berlin Heidelberg
01.09.2020
Springer Nature B.V |
Subjects | |
Online Access | Get full text |
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Abstract | Objectives
Rapid and accurate diagnosis of coronavirus disease 2019 (COVID-19) is critical during the epidemic. We aim to identify differences in CT imaging and clinical manifestations between pneumonia patients with and without COVID-19, and to develop and validate a diagnostic model for COVID-19 based on radiological semantic and clinical features alone.
Methods
A consecutive cohort of 70 COVID-19 and 66 non-COVID-19 pneumonia patients were retrospectively recruited from five institutions. Patients were divided into primary (
n
= 98) and validation (
n
= 38) cohorts. The chi-square test, Student’s
t
test, and Kruskal-Wallis
H
test were performed, comparing 1745 lesions and 67 features in the two groups. Three models were constructed using radiological semantic and clinical features through multivariate logistic regression. Diagnostic efficacies of developed models were quantified by receiver operating characteristic curve. Clinical usage was evaluated by decision curve analysis and nomogram.
Results
Eighteen radiological semantic features and seventeen clinical features were identified to be significantly different. Besides ground-glass opacities (
p = 0.032
) and consolidation (
p = 0.001
) in the lung periphery, the lesion size (1–3 cm) is also significant for the diagnosis of COVID-19 (
p = 0.027
). Lung score presents no significant difference (
p = 0.417
). Three diagnostic models achieved an area under the curve value as high as 0.986 (95% CI 0.966~1.000). The clinical and radiological semantic models provided a better diagnostic performance and more considerable net benefits.
Conclusions
Based on CT imaging and clinical manifestations alone, the pneumonia patients with and without COVID-19 can be distinguished. A model composed of radiological semantic and clinical features has an excellent performance for the diagnosis of COVID-19.
Key Points
• Based on CT imaging and clinical manifestations alone, the pneumonia patients with and without COVID-19 can be distinguished.
• A diagnostic model for COVID-19 was developed and validated using radiological semantic and clinical features, which had an area under the curve value of 0.986 (95% CI 0.966~1.000) and 0.936 (95% CI 0.866~1.000) in the primary and validation cohorts, respectively. |
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AbstractList | Rapid and accurate diagnosis of coronavirus disease 2019 (COVID-19) is critical during the epidemic. We aim to identify differences in CT imaging and clinical manifestations between pneumonia patients with and without COVID-19, and to develop and validate a diagnostic model for COVID-19 based on radiological semantic and clinical features alone.OBJECTIVESRapid and accurate diagnosis of coronavirus disease 2019 (COVID-19) is critical during the epidemic. We aim to identify differences in CT imaging and clinical manifestations between pneumonia patients with and without COVID-19, and to develop and validate a diagnostic model for COVID-19 based on radiological semantic and clinical features alone.A consecutive cohort of 70 COVID-19 and 66 non-COVID-19 pneumonia patients were retrospectively recruited from five institutions. Patients were divided into primary (n = 98) and validation (n = 38) cohorts. The chi-square test, Student's t test, and Kruskal-Wallis H test were performed, comparing 1745 lesions and 67 features in the two groups. Three models were constructed using radiological semantic and clinical features through multivariate logistic regression. Diagnostic efficacies of developed models were quantified by receiver operating characteristic curve. Clinical usage was evaluated by decision curve analysis and nomogram.METHODSA consecutive cohort of 70 COVID-19 and 66 non-COVID-19 pneumonia patients were retrospectively recruited from five institutions. Patients were divided into primary (n = 98) and validation (n = 38) cohorts. The chi-square test, Student's t test, and Kruskal-Wallis H test were performed, comparing 1745 lesions and 67 features in the two groups. Three models were constructed using radiological semantic and clinical features through multivariate logistic regression. Diagnostic efficacies of developed models were quantified by receiver operating characteristic curve. Clinical usage was evaluated by decision curve analysis and nomogram.Eighteen radiological semantic features and seventeen clinical features were identified to be significantly different. Besides ground-glass opacities (p = 0.032) and consolidation (p = 0.001) in the lung periphery, the lesion size (1-3 cm) is also significant for the diagnosis of COVID-19 (p = 0.027). Lung score presents no significant difference (p = 0.417). Three diagnostic models achieved an area under the curve value as high as 0.986 (95% CI 0.966~1.000). The clinical and radiological semantic models provided a better diagnostic performance and more considerable net benefits.RESULTSEighteen radiological semantic features and seventeen clinical features were identified to be significantly different. Besides ground-glass opacities (p = 0.032) and consolidation (p = 0.001) in the lung periphery, the lesion size (1-3 cm) is also significant for the diagnosis of COVID-19 (p = 0.027). Lung score presents no significant difference (p = 0.417). Three diagnostic models achieved an area under the curve value as high as 0.986 (95% CI 0.966~1.000). The clinical and radiological semantic models provided a better diagnostic performance and more considerable net benefits.Based on CT imaging and clinical manifestations alone, the pneumonia patients with and without COVID-19 can be distinguished. A model composed of radiological semantic and clinical features has an excellent performance for the diagnosis of COVID-19.CONCLUSIONSBased on CT imaging and clinical manifestations alone, the pneumonia patients with and without COVID-19 can be distinguished. A model composed of radiological semantic and clinical features has an excellent performance for the diagnosis of COVID-19.• Based on CT imaging and clinical manifestations alone, the pneumonia patients with and without COVID-19 can be distinguished. • A diagnostic model for COVID-19 was developed and validated using radiological semantic and clinical features, which had an area under the curve value of 0.986 (95% CI 0.966~1.000) and 0.936 (95% CI 0.866~1.000) in the primary and validation cohorts, respectively.KEY POINTS• Based on CT imaging and clinical manifestations alone, the pneumonia patients with and without COVID-19 can be distinguished. • A diagnostic model for COVID-19 was developed and validated using radiological semantic and clinical features, which had an area under the curve value of 0.986 (95% CI 0.966~1.000) and 0.936 (95% CI 0.866~1.000) in the primary and validation cohorts, respectively. Rapid and accurate diagnosis of coronavirus disease 2019 (COVID-19) is critical during the epidemic. We aim to identify differences in CT imaging and clinical manifestations between pneumonia patients with and without COVID-19, and to develop and validate a diagnostic model for COVID-19 based on radiological semantic and clinical features alone. A consecutive cohort of 70 COVID-19 and 66 non-COVID-19 pneumonia patients were retrospectively recruited from five institutions. Patients were divided into primary (n = 98) and validation (n = 38) cohorts. The chi-square test, Student's t test, and Kruskal-Wallis H test were performed, comparing 1745 lesions and 67 features in the two groups. Three models were constructed using radiological semantic and clinical features through multivariate logistic regression. Diagnostic efficacies of developed models were quantified by receiver operating characteristic curve. Clinical usage was evaluated by decision curve analysis and nomogram. Eighteen radiological semantic features and seventeen clinical features were identified to be significantly different. Besides ground-glass opacities (p = 0.032) and consolidation (p = 0.001) in the lung periphery, the lesion size (1-3 cm) is also significant for the diagnosis of COVID-19 (p = 0.027). Lung score presents no significant difference (p = 0.417). Three diagnostic models achieved an area under the curve value as high as 0.986 (95% CI 0.966~1.000). The clinical and radiological semantic models provided a better diagnostic performance and more considerable net benefits. Based on CT imaging and clinical manifestations alone, the pneumonia patients with and without COVID-19 can be distinguished. A model composed of radiological semantic and clinical features has an excellent performance for the diagnosis of COVID-19. • Based on CT imaging and clinical manifestations alone, the pneumonia patients with and without COVID-19 can be distinguished. • A diagnostic model for COVID-19 was developed and validated using radiological semantic and clinical features, which had an area under the curve value of 0.986 (95% CI 0.966~1.000) and 0.936 (95% CI 0.866~1.000) in the primary and validation cohorts, respectively. Objectives Rapid and accurate diagnosis of coronavirus disease 2019 (COVID-19) is critical during the epidemic. We aim to identify differences in CT imaging and clinical manifestations between pneumonia patients with and without COVID-19, and to develop and validate a diagnostic model for COVID-19 based on radiological semantic and clinical features alone. Methods A consecutive cohort of 70 COVID-19 and 66 non-COVID-19 pneumonia patients were retrospectively recruited from five institutions. Patients were divided into primary ( n = 98) and validation ( n = 38) cohorts. The chi-square test, Student’s t test, and Kruskal-Wallis H test were performed, comparing 1745 lesions and 67 features in the two groups. Three models were constructed using radiological semantic and clinical features through multivariate logistic regression. Diagnostic efficacies of developed models were quantified by receiver operating characteristic curve. Clinical usage was evaluated by decision curve analysis and nomogram. Results Eighteen radiological semantic features and seventeen clinical features were identified to be significantly different. Besides ground-glass opacities ( p = 0.032 ) and consolidation ( p = 0.001 ) in the lung periphery, the lesion size (1–3 cm) is also significant for the diagnosis of COVID-19 ( p = 0.027 ). Lung score presents no significant difference ( p = 0.417 ). Three diagnostic models achieved an area under the curve value as high as 0.986 (95% CI 0.966~1.000). The clinical and radiological semantic models provided a better diagnostic performance and more considerable net benefits. Conclusions Based on CT imaging and clinical manifestations alone, the pneumonia patients with and without COVID-19 can be distinguished. A model composed of radiological semantic and clinical features has an excellent performance for the diagnosis of COVID-19. Key Points • Based on CT imaging and clinical manifestations alone, the pneumonia patients with and without COVID-19 can be distinguished. • A diagnostic model for COVID-19 was developed and validated using radiological semantic and clinical features, which had an area under the curve value of 0.986 (95% CI 0.966~1.000) and 0.936 (95% CI 0.866~1.000) in the primary and validation cohorts, respectively. ObjectivesRapid and accurate diagnosis of coronavirus disease 2019 (COVID-19) is critical during the epidemic. We aim to identify differences in CT imaging and clinical manifestations between pneumonia patients with and without COVID-19, and to develop and validate a diagnostic model for COVID-19 based on radiological semantic and clinical features alone.MethodsA consecutive cohort of 70 COVID-19 and 66 non-COVID-19 pneumonia patients were retrospectively recruited from five institutions. Patients were divided into primary (n = 98) and validation (n = 38) cohorts. The chi-square test, Student’s t test, and Kruskal-Wallis H test were performed, comparing 1745 lesions and 67 features in the two groups. Three models were constructed using radiological semantic and clinical features through multivariate logistic regression. Diagnostic efficacies of developed models were quantified by receiver operating characteristic curve. Clinical usage was evaluated by decision curve analysis and nomogram.ResultsEighteen radiological semantic features and seventeen clinical features were identified to be significantly different. Besides ground-glass opacities (p = 0.032) and consolidation (p = 0.001) in the lung periphery, the lesion size (1–3 cm) is also significant for the diagnosis of COVID-19 (p = 0.027). Lung score presents no significant difference (p = 0.417). Three diagnostic models achieved an area under the curve value as high as 0.986 (95% CI 0.966~1.000). The clinical and radiological semantic models provided a better diagnostic performance and more considerable net benefits.ConclusionsBased on CT imaging and clinical manifestations alone, the pneumonia patients with and without COVID-19 can be distinguished. A model composed of radiological semantic and clinical features has an excellent performance for the diagnosis of COVID-19.Key Points• Based on CT imaging and clinical manifestations alone, the pneumonia patients with and without COVID-19 can be distinguished.• A diagnostic model for COVID-19 was developed and validated using radiological semantic and clinical features, which had an area under the curve value of 0.986 (95% CI 0.966~1.000) and 0.936 (95% CI 0.866~1.000) in the primary and validation cohorts, respectively. |
Author | Mo, Yongkang Li, Shengkai Liao, Yuting Qiu, Jinming Sun, Hongfu Wu, Xianheng Yang, Zhijian Wu, Renhua Chen, Xiaofeng Tang, Yanyan Chen, Xiangguang Yang, Zhiqi Xiao, Jianning Dai, Zhuozhi Lin, Daiying |
Author_xml | – sequence: 1 givenname: Xiaofeng surname: Chen fullname: Chen, Xiaofeng organization: Department of Radiology, Meizhou People’s Hospital – sequence: 2 givenname: Yanyan surname: Tang fullname: Tang, Yanyan organization: Department of Radiology, 2nd Affiliated Hospital, Shantou University Medical College – sequence: 3 givenname: Yongkang surname: Mo fullname: Mo, Yongkang organization: Department of Radiology, First Affiliated Hospital, Shantou University Medical College – sequence: 4 givenname: Shengkai surname: Li fullname: Li, Shengkai organization: Department of Radiology, Huizhou Municipal Central Hospital – sequence: 5 givenname: Daiying surname: Lin fullname: Lin, Daiying organization: Department of Radiology, Shantou Central Hospital – sequence: 6 givenname: Zhijian surname: Yang fullname: Yang, Zhijian organization: Department of Radiology, Yongzhou People’s Hospital – sequence: 7 givenname: Zhiqi surname: Yang fullname: Yang, Zhiqi organization: Department of Radiology, Meizhou People’s Hospital – sequence: 8 givenname: Hongfu surname: Sun fullname: Sun, Hongfu organization: School of Information Technology and Electrical Engineering, University of Queensland – sequence: 9 givenname: Jinming surname: Qiu fullname: Qiu, Jinming organization: Department of Radiology, 2nd Affiliated Hospital, Shantou University Medical College – sequence: 10 givenname: Yuting surname: Liao fullname: Liao, Yuting organization: GE Healthcare – sequence: 11 givenname: Jianning surname: Xiao fullname: Xiao, Jianning organization: Department of Radiology, Shantou Central Hospital – sequence: 12 givenname: Xiangguang surname: Chen fullname: Chen, Xiangguang organization: Department of Radiology, Meizhou People’s Hospital – sequence: 13 givenname: Xianheng surname: Wu fullname: Wu, Xianheng organization: Department of Radiology, Shantou Central Hospital – sequence: 14 givenname: Renhua surname: Wu fullname: Wu, Renhua organization: Provincial Key Laboratory of Medical Molecular Imaging – sequence: 15 givenname: Zhuozhi surname: Dai fullname: Dai, Zhuozhi email: zhuozhi@ualberta.ca organization: Department of Radiology, 2nd Affiliated Hospital, Shantou University Medical College |
BackLink | https://www.ncbi.nlm.nih.gov/pubmed/32300971$$D View this record in MEDLINE/PubMed |
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Keywords | COVID-19 Radiology Pneumonia Diagnosis Multi-institutional systems |
Language | English |
License | Open Access This article is licensed under a Creative Commons Attribution 4.0 International License, which permits use, sharing, adaptation, distribution and reproduction in any medium or format, as long as you give appropriate credit to the original author(s) and the source, provide a link to the Creative Commons licence, and indicate if changes were made. The images or other third party material in this article are included in the article's Creative Commons licence, unless indicated otherwise in a credit line to the material. If material is not included in the article's Creative Commons licence and your intended use is not permitted by statutory regulation or exceeds the permitted use, you will need to obtain permission directly from the copyright holder. To view a copy of this licence, visit http://creativecommons.org/licenses/by/4.0/. |
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References | Shi H, Han X, Jiang N et al (2020) Radiological findings from 81 patients with COVID-19 pneumonia in Wuhan, China: a descriptive study. Lancet Infect Dis 20:425-434 Daghir-WojtkowiakEWiczlingPBocianSLeast absolute shrinkage and selection operator and dimensionality reduction techniques in quantitative structure retention relationship modeling of retention in hydrophilic interaction liquid chromatographyJ Chromatogr A2015140354621:CAS:528:DC%2BC2MXptFOgtb0%3D10.1016/j.chroma.2015.05.025 LiuZLiZQuJRadiomics of multiparametric MRI for pretreatment prediction of pathologic complete response to neoadjuvant chemotherapy in breast cancer: a multicenter studyClin Cancer Res201925353835471:CAS:528:DC%2BB3cXhsFalsL7P10.1158/1078-0432.CCR-18-3190 Kim H (2020) Outbreak of novel coronavirus (COVID-19): what is the role of radiologists? Eur Radiol. https://doi.org/10.1007/s00330-020-06748-2 Song F, Shi N, Shan F et al (2020) Emerging coronavirus 2019-nCoV pneumonia. Radiology. https://doi.org/10.1148/radiol.2020200274 Lei J, Li J, Li X, Qi X (2020) CT imaging of the 2019 novel coronavirus (2019-nCoV) pneumonia. Radiology. https://doi.org/10.1148/radiol.2020200236 Das KM, Lee EY, Enani MA et al (2015) CT correlation with outcomes in 15 patients with acute Middle East respiratory syndrome coronavirus. AJR Am J Roentgenol 204:736–742 Xie X, Zhong Z, Zhao W et al (2020) Chest CT for typical 2019-nCoV pneumonia: relationship to negative RT-PCR testing. Radiology. https://doi.org/10.1148/radiol.2020200343 Pan Y, Guan H (2020) Imaging changes in patients with 2019-nCov. Eur Radiol. https://doi.org/10.1007/s00330-020-06713-z Organization WH (2020) Novel coronavirus (2019-nCoV) situation reports. Available via https://www.who.int/emergencies/diseases/novel-coronavirus-2019/situation-reports/. Accessed 16 Mar 2020 Zhu N, Zhang D, Wang W et al (2020) A novel coronavirus from patients with pneumonia in China, 2019. N Engl J Med 382: 727-733 LuHRuiHPengxinYShaokangWLimingXA correlation study of CT and clinical features of different clinical types of 2019 novel coronavirus pneumoniaChin J Radiol202054E003E003 Pan Y, Guan H, Zhou S et al (2020) Initial CT findings and temporal changes in patients with the novel coronavirus pneumonia (2019-nCoV): a study of 63 patients in Wuhan, China. Eur Radiol. https://doi.org/10.1007/s00330-020-06731-x PanesarNSLymphopenia in SARSLancet2003361198510.1016/S0140-6736(03)13557-X Fang Y, Zhang H, Xie J et al (2020) Sensitivity of chest CT for COVID-19: comparison to RT-PCR. Radiology. https://doi.org/10.1148/radiol.2020200432 HuTWangSHuangLA clinical-radiomics nomogram for the preoperative prediction of lung metastasis in colorectal cancer patients with indeterminate pulmonary nodulesEur Radiol20192943944910.1007/s00330-018-5539-3 Kanne JP (2020) Chest CT findings in 2019 novel coronavirus (2019-nCoV) infections from Wuhan, China: key points for the radiologist. 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Available via https://www.who.int/emergencies/diseases/novel-coronavirus-2019/technical-guidance/laboratory-guidance. Accessed 16 Mar 2020 WuWPierceLAZhangYComparison of prediction models with radiological semantic features and radiomics in lung cancer diagnosis of the pulmonary nodules: a case-control studyEur Radiol2019296100610810.1007/s00330-019-06213-9 6829_CR13 Q Feng (6829_CR20) 2018; 9 6829_CR12 6829_CR11 6829_CR10 T Hu (6829_CR19) 2019; 29 Z Liu (6829_CR24) 2019; 25 6829_CR9 H Lu (6829_CR15) 2020; 54 6829_CR18 6829_CR7 6829_CR17 6829_CR8 6829_CR16 6829_CR5 6829_CR6 6829_CR14 6829_CR3 6829_CR4 6829_CR1 6829_CR2 E Daghir-Wojtkowiak (6829_CR23) 2015; 1403 W Wu (6829_CR28) 2019; 29 GT Sica (6829_CR29) 2006; 238 6829_CR22 NS Panesar (6829_CR27) 2003; 361 6829_CR26 6829_CR25 Y Shao (6829_CR21) 2018; 10 |
References_xml | – reference: PanesarNSLymphopenia in SARSLancet2003361198510.1016/S0140-6736(03)13557-X – reference: Song F, Shi N, Shan F et al (2020) Emerging coronavirus 2019-nCoV pneumonia. Radiology. https://doi.org/10.1148/radiol.2020200274 – reference: LuHRuiHPengxinYShaokangWLimingXA correlation study of CT and clinical features of different clinical types of 2019 novel coronavirus pneumoniaChin J Radiol202054E003E003 – reference: World Health Organization (2020) Novel coronavirus (2019-nCoV) technical guidance: laboratory testing for 2019-nCoV in humans. Available via https://www.who.int/emergencies/diseases/novel-coronavirus-2019/technical-guidance/laboratory-guidance. Accessed 16 Mar 2020 – reference: ShaoYChenZMingSPredicting the development of normal-appearing white matter with radiomics in the aging brain: a longitudinal clinical studyFront Aging Neurosci2018103931:CAS:528:DC%2BC1MXitVyqsLzN10.3389/fnagi.2018.00393 – reference: Fang Y, Zhang H, Xie J et al (2020) Sensitivity of chest CT for COVID-19: comparison to RT-PCR. Radiology. https://doi.org/10.1148/radiol.2020200432 – reference: Xie X, Zhong Z, Zhao W et al (2020) Chest CT for typical 2019-nCoV pneumonia: relationship to negative RT-PCR testing. Radiology. https://doi.org/10.1148/radiol.2020200343 – reference: Das KM, Lee EY, Enani MA et al (2015) CT correlation with outcomes in 15 patients with acute Middle East respiratory syndrome coronavirus. AJR Am J Roentgenol 204:736–742 – reference: Kanne JP (2020) Chest CT findings in 2019 novel coronavirus (2019-nCoV) infections from Wuhan, China: key points for the radiologist. Radiology. https://doi.org/10.1148/radiol.2020200241 – reference: Huang C, Wang Y, Li X et al (2020) Clinical features of patients infected with 2019 novel coronavirus in Wuhan, China. Lancet 395:497-506 – reference: LiuZLiZQuJRadiomics of multiparametric MRI for pretreatment prediction of pathologic complete response to neoadjuvant chemotherapy in breast cancer: a multicenter studyClin Cancer Res201925353835471:CAS:528:DC%2BB3cXhsFalsL7P10.1158/1078-0432.CCR-18-3190 – reference: Chung M, Bernheim A, Mei X et al (2020) CT imaging features of 2019 novel coronavirus (2019-nCoV). Radiology. https://doi.org/10.1148/radiol.2020200230 – reference: Shi H, Han X, Jiang N et al (2020) Radiological findings from 81 patients with COVID-19 pneumonia in Wuhan, China: a descriptive study. Lancet Infect Dis 20:425-434 – reference: Lei J, Li J, Li X, Qi X (2020) CT imaging of the 2019 novel coronavirus (2019-nCoV) pneumonia. Radiology. https://doi.org/10.1148/radiol.2020200236 – reference: WuWPierceLAZhangYComparison of prediction models with radiological semantic features and radiomics in lung cancer diagnosis of the pulmonary nodules: a case-control studyEur Radiol2019296100610810.1007/s00330-019-06213-9 – reference: Ai T, Yang Z, Hou H et al (2020) Correlation of chest CT and RT-PCR testing in coronavirus disease 2019 (COVID-19) in China: a report of 1014 cases. Radiology. https://doi.org/10.1148/radiol.2020200642 – reference: Zhu N, Zhang D, Wang W et al (2020) A novel coronavirus from patients with pneumonia in China, 2019. N Engl J Med 382: 727-733 – reference: Kay F, Abbara S (2020) The many faces of COVID-19: spectrum of imaging manifestations. Radiology: Cardiothoracic Imaging. https://doi.org/10.1148/ryct.2020200037 – reference: Pan F, Ye T, Sun P et al (2020) Time course of lung changes on chest CT during recovery from 2019 novel coronavirus (COVID-19) pneumonia. Radiology. https://doi.org/10.1148/radiol.2020200370 – reference: Kim H (2020) Outbreak of novel coronavirus (COVID-19): what is the role of radiologists? Eur Radiol. https://doi.org/10.1007/s00330-020-06748-2 – reference: FengQChenYLiaoZCorpus callosum radiomics-based classification model in Alzheimer’s disease: a case-control studyFront Neurol2018961810.3389/fneur.2018.00618 – reference: Wu Y, Xie Y-l, Wang X (2020) Longitudinal CT findings in COVID-19 pneumonia: case presenting organizing pneumonia pattern. Radiology: Cardiothoracic Imaging. https://doi.org/10.1148/ryct.2020200031 – reference: Pan Y, Guan H (2020) Imaging changes in patients with 2019-nCov. Eur Radiol. https://doi.org/10.1007/s00330-020-06713-z – reference: Daghir-WojtkowiakEWiczlingPBocianSLeast absolute shrinkage and selection operator and dimensionality reduction techniques in quantitative structure retention relationship modeling of retention in hydrophilic interaction liquid chromatographyJ Chromatogr A2015140354621:CAS:528:DC%2BC2MXptFOgtb0%3D10.1016/j.chroma.2015.05.025 – reference: Ng M-Y, Lee EY, Yang J et al (2020) Imaging profile of the COVID-19 infection: radiologic findings and literature review. Radiology: Cardiothoracic Imaging. https://doi.org/10.1148/ryct.2020200034 – reference: HuTWangSHuangLA clinical-radiomics nomogram for the preoperative prediction of lung metastasis in colorectal cancer patients with indeterminate pulmonary nodulesEur Radiol20192943944910.1007/s00330-018-5539-3 – reference: SicaGTBias in research studiesRadiology200623878078910.1148/radiol.2383041109 – reference: Organization WH (2020) Novel coronavirus (2019-nCoV) situation reports. Available via https://www.who.int/emergencies/diseases/novel-coronavirus-2019/situation-reports/. Accessed 16 Mar 2020 – reference: Pan Y, Guan H, Zhou S et al (2020) Initial CT findings and temporal changes in patients with the novel coronavirus pneumonia (2019-nCoV): a study of 63 patients in Wuhan, China. 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Rapid and accurate diagnosis of coronavirus disease 2019 (COVID-19) is critical during the epidemic. We aim to identify differences in CT imaging... Rapid and accurate diagnosis of coronavirus disease 2019 (COVID-19) is critical during the epidemic. We aim to identify differences in CT imaging and clinical... ObjectivesRapid and accurate diagnosis of coronavirus disease 2019 (COVID-19) is critical during the epidemic. We aim to identify differences in CT imaging and... |
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SubjectTerms | Adolescent Adult Aged Betacoronavirus Chest Chi-square test Computed tomography Coronaviridae Coronavirus Infections - diagnostic imaging Coronaviruses COVID-19 Decision analysis Diagnosis Diagnostic Radiology Diagnostic systems Epidemics Female Humans Imaging Internal Medicine Interventional Radiology Lesions Lung - pathology Lungs Male Medical diagnosis Medical imaging Medicine Medicine & Public Health Middle Aged Neuroradiology Nomograms Pandemics Pneumonia Pneumonia, Viral - diagnostic imaging Radiology Regression analysis Retrospective Studies ROC Curve SARS-CoV-2 Semantics Statistical tests Tomography, X-Ray Computed - methods Ultrasound Viral diseases Young Adult |
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Title | A diagnostic model for coronavirus disease 2019 (COVID-19) based on radiological semantic and clinical features: a multi-center study |
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