BMC Medical Imaging (Mar 2022)

Performances of clinical characteristics and radiological findings in identifying COVID-19 from suspected cases

  • Xuanxuan Li,
  • Yajing Zhao,
  • Yiping Lu,
  • Yingyan Zheng,
  • Nan Mei,
  • Qiuyue Han,
  • Zhuoying Ruan,
  • Anling Xiao,
  • Xiaohui Qiu,
  • Dongdong Wang,
  • Bo Yin

DOI
https://doi.org/10.1186/s12880-022-00780-y
Journal volume & issue
Vol. 22, no. 1
pp. 1 – 14

Abstract

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Abstract Background To identify effective factors and establish a model to distinguish COVID-19 patients from suspected cases. Methods The clinical characteristics, laboratory results and initial chest CT findings of suspected COVID-19 patients in 3 institutions were retrospectively reviewed. Univariate and multivariate logistic regression were performed to identify significant features. A nomogram was constructed, with calibration validated internally and externally. Results 239 patients from 2 institutions were enrolled in the primary cohort including 157 COVID-19 and 82 non-COVID-19 patients. 11 features were selected by LASSO selection, and 8 features were found significant using multivariate logistic regression analysis. We found that the COVID-19 group are more likely to have fever (OR 4.22), contact history (OR 284.73), lower WBC count (OR 0.63), left lower lobe involvement (OR 9.42), multifocal lesions (OR 8.98), pleural thickening (OR 5.59), peripheral distribution (OR 0.09), and less mediastinal lymphadenopathy (OR 0.037). The nomogram developed accordingly for clinical practice showed satisfactory internal and external validation. Conclusions In conclusion, fever, contact history, decreased WBC count, left lower lobe involvement, pleural thickening, multifocal lesions, peripheral distribution, and absence of mediastinal lymphadenopathy are able to distinguish COVID-19 patients from other suspected patients. The corresponding nomogram is a useful tool in clinical practice.

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