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A Simple Clinical Prediction Tool for COVID-19 in Primary Care with Epidemiology: Temperature-Leukocytes-CT Results

BACKGROUND: Effective identification of patients with suspected COVID-19 is vital for the management. This study aimed to establish a simple clinical prediction model for COVID-19 in primary care. MATERIAL/METHODS: We consecutively enrolled 60 confirmed cases and 152 suspected cases with COVID-19 in...

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Autores principales: Hao, Wanming, Zhao, Long, Yu, Xinjuan, Wu, Song, Xie, Weifeng, Wang, Ning, Lv, Weihong, Sood, Akshay, Leng, Shuguang, Li, Yongchun, Sun, Qing, Guan, Jun, Han, Wei
Formato: Online Artículo Texto
Lenguaje:English
Publicado: International Scientific Literature, Inc. 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8504192/
https://www.ncbi.nlm.nih.gov/pubmed/34611122
http://dx.doi.org/10.12659/MSM.931467
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author Hao, Wanming
Zhao, Long
Yu, Xinjuan
Wu, Song
Xie, Weifeng
Wang, Ning
Lv, Weihong
Sood, Akshay
Leng, Shuguang
Li, Yongchun
Sun, Qing
Guan, Jun
Han, Wei
author_facet Hao, Wanming
Zhao, Long
Yu, Xinjuan
Wu, Song
Xie, Weifeng
Wang, Ning
Lv, Weihong
Sood, Akshay
Leng, Shuguang
Li, Yongchun
Sun, Qing
Guan, Jun
Han, Wei
author_sort Hao, Wanming
collection PubMed
description BACKGROUND: Effective identification of patients with suspected COVID-19 is vital for the management. This study aimed to establish a simple clinical prediction model for COVID-19 in primary care. MATERIAL/METHODS: We consecutively enrolled 60 confirmed cases and 152 suspected cases with COVID-19 into the study. The training cohort consisted of 30 confirmed and 78 suspected cases, whereas the validation cohort consisted of 30 confirmed and 74 suspected cases. Four clinical variables – epidemiological history (E), body temperature (T), leukocytes count (L), and chest computed tomography (C) – were collected to construct a preliminary prediction model (model A). By integerizing coefficients of model A, a clinical prediction model (model B) was constructed. Finally, the scores of each variable in model B were summed up to build the ETLC score. RESULTS: The preliminary prediction model A was Logit (Y(A))=2.657X(1)+1.153X(2)+2.125X(3)+2.828X(4)–10.771, while the model B was Logit (Y(B))=2.5X(1)+1X(2)+2X(3)+3X(4)–10. No significant difference was found between the area under the curve (AUC) of model A (0.920, 95% CI: 0.875–0.953) and model B (0.919, 95% CI: 0.874–0.952) (Z=0.035, P=0.972). When ETLC score was more than or equal to 9.5, the sensitivity and specificity for COVID-19 was 76.7% (46/60) and 90.1% (137/152), respectively, and the positive and negative predictive values were 75.4% (46/61) and 90.7% (137/151), respectively. CONCLUSIONS: The ETLC score is helpful for efficiently identifying patients with suspected COVID-19.
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spelling pubmed-85041922021-11-02 A Simple Clinical Prediction Tool for COVID-19 in Primary Care with Epidemiology: Temperature-Leukocytes-CT Results Hao, Wanming Zhao, Long Yu, Xinjuan Wu, Song Xie, Weifeng Wang, Ning Lv, Weihong Sood, Akshay Leng, Shuguang Li, Yongchun Sun, Qing Guan, Jun Han, Wei Med Sci Monit Database Analysis BACKGROUND: Effective identification of patients with suspected COVID-19 is vital for the management. This study aimed to establish a simple clinical prediction model for COVID-19 in primary care. MATERIAL/METHODS: We consecutively enrolled 60 confirmed cases and 152 suspected cases with COVID-19 into the study. The training cohort consisted of 30 confirmed and 78 suspected cases, whereas the validation cohort consisted of 30 confirmed and 74 suspected cases. Four clinical variables – epidemiological history (E), body temperature (T), leukocytes count (L), and chest computed tomography (C) – were collected to construct a preliminary prediction model (model A). By integerizing coefficients of model A, a clinical prediction model (model B) was constructed. Finally, the scores of each variable in model B were summed up to build the ETLC score. RESULTS: The preliminary prediction model A was Logit (Y(A))=2.657X(1)+1.153X(2)+2.125X(3)+2.828X(4)–10.771, while the model B was Logit (Y(B))=2.5X(1)+1X(2)+2X(3)+3X(4)–10. No significant difference was found between the area under the curve (AUC) of model A (0.920, 95% CI: 0.875–0.953) and model B (0.919, 95% CI: 0.874–0.952) (Z=0.035, P=0.972). When ETLC score was more than or equal to 9.5, the sensitivity and specificity for COVID-19 was 76.7% (46/60) and 90.1% (137/152), respectively, and the positive and negative predictive values were 75.4% (46/61) and 90.7% (137/151), respectively. CONCLUSIONS: The ETLC score is helpful for efficiently identifying patients with suspected COVID-19. International Scientific Literature, Inc. 2021-10-06 /pmc/articles/PMC8504192/ /pubmed/34611122 http://dx.doi.org/10.12659/MSM.931467 Text en © Med Sci Monit, 2021 https://creativecommons.org/licenses/by-nc-nd/4.0/This work is licensed under Creative Common Attribution-NonCommercial-NoDerivatives 4.0 International (CC BY-NC-ND 4.0 (https://creativecommons.org/licenses/by-nc-nd/4.0/) )
spellingShingle Database Analysis
Hao, Wanming
Zhao, Long
Yu, Xinjuan
Wu, Song
Xie, Weifeng
Wang, Ning
Lv, Weihong
Sood, Akshay
Leng, Shuguang
Li, Yongchun
Sun, Qing
Guan, Jun
Han, Wei
A Simple Clinical Prediction Tool for COVID-19 in Primary Care with Epidemiology: Temperature-Leukocytes-CT Results
title A Simple Clinical Prediction Tool for COVID-19 in Primary Care with Epidemiology: Temperature-Leukocytes-CT Results
title_full A Simple Clinical Prediction Tool for COVID-19 in Primary Care with Epidemiology: Temperature-Leukocytes-CT Results
title_fullStr A Simple Clinical Prediction Tool for COVID-19 in Primary Care with Epidemiology: Temperature-Leukocytes-CT Results
title_full_unstemmed A Simple Clinical Prediction Tool for COVID-19 in Primary Care with Epidemiology: Temperature-Leukocytes-CT Results
title_short A Simple Clinical Prediction Tool for COVID-19 in Primary Care with Epidemiology: Temperature-Leukocytes-CT Results
title_sort simple clinical prediction tool for covid-19 in primary care with epidemiology: temperature-leukocytes-ct results
topic Database Analysis
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8504192/
https://www.ncbi.nlm.nih.gov/pubmed/34611122
http://dx.doi.org/10.12659/MSM.931467
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