Your browser doesn't support javascript.
loading
A Novel Triage Tool of Artificial Intelligence Assisted Diagnosis Aid System for Suspected COVID-19 pneumonia In Fever Clinics
Cong Feng; Lili Wang; Xin Chen; Yongzhi Zhai; Feng Zhu; Hua Chen; Yingchan Wang; Xiangzheng Su; Sai Huang; Lin Tian; Weixiu Zhu; Wenzheng Sun; Liping Zhang; Qingru Han; Juan Zhang; Fei Pan; Li Chen; Zhihong Zhu; Hongju Xiao; Yu Liu; Gang Liu; Wei Chen; Tanshi Li.
Affiliation
  • Cong Feng; PLA general hospital
  • Lili Wang; PLAGH
  • Xin Chen; PLAGH
  • Yongzhi Zhai; PLAGH
  • Feng Zhu; PLAGH
  • Hua Chen; PLAGH
  • Yingchan Wang; PLAGH
  • Xiangzheng Su; PLAGH
  • Sai Huang; PLAGH
  • Lin Tian; PLAGH
  • Weixiu Zhu; PLAGH
  • Wenzheng Sun; PLAGH
  • Liping Zhang; PLAGH
  • Qingru Han; PLAGH
  • Juan Zhang; PLAGH
  • Fei Pan; PLAGH
  • Li Chen; PLAGH
  • Zhihong Zhu; PLAGH
  • Hongju Xiao; PLAGH
  • Yu Liu; PLAGH
  • Gang Liu; PLAGH
  • Wei Chen; PLAGH
  • Tanshi Li; PLAGH
Preprint in English | medRxiv | ID: ppmedrxiv-20039099
ABSTRACT
BackgroundCurrently, the prevention and control of the novel coronavirus disease (COVID-19) outside Hubei province in China, and other countries have become more and more critically serious. We developed and validated a diagnosis aid model without computed tomography (CT) images for early identification of suspected COVID-19 pneumonia (S-COVID-19-P) on admission in adult fever patients and made the validated model available via an online triage calculator. MethodsPatients admitted from Jan 14 to February 26, 2020 with the epidemiological history of exposure to COVID-19 were included [Model development (n = 132) and validation (n = 32)]. Candidate features included clinical symptoms, routine laboratory tests, and other clinical information on admission. Features selection and model development were based on the least absolute shrinkage and selection operator (LASSO) regression. The primary outcome was the development and validation of a diagnostic aid model for S-COVID-19-P early identification on admission. ResultsThe development cohort contained 26 S-COVID-19-P and 7 confirmed COVID-19 pneumonia cases. The final selected features included 1 variable of demographic information, 4 variables of vital signs, 5 variables of blood routine values, 7 variables of clinical signs and symptoms, and 1 infection-related biomarker. The model performance in the testing set and the validation cohort resulted in the area under the receiver operating characteristic (ROC) curves (AUCs) of 0.841 and 0.938, the F-1 score of 0.571 and 0.667, the recall of 1.000 and 1.000, the specificity of 0.727 and 0.778, and the precision of 0.400 and 0.500. The top 5 most important features were Age, IL-6, SYS_BP, MONO%, and Fever classification. Based on this model, an optimized strategy for S-COVID-19-P early identification in fever clinics has also been designed. ConclusionsS-COVID-19-P could be identified early by a machine-learning model only used collected clinical information without CT images on admission in fever clinics with a 100% recall score. The well-performed and validated model has been deployed as an online triage tool, which is available at https//intensivecare.shinyapps.io/COVID19/.
License
cc_no
Full text: Available Collection: Preprints Database: medRxiv Type of study: Cohort_studies / Diagnostic study / Observational study / Prognostic study Language: English Year: 2020 Document type: Preprint
Full text: Available Collection: Preprints Database: medRxiv Type of study: Cohort_studies / Diagnostic study / Observational study / Prognostic study Language: English Year: 2020 Document type: Preprint
...