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CN 34-1304/RISSN 1674-3679

Volume 28 Issue 9
Sep.  2024
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DING Hongmei, ZHANG Mingya, XU Xiaoqin, ZHANG Hongxiu. Machine learning and Cox proportional hazards regression model for warning of persistent infection with high-risk HPV type[J]. CHINESE JOURNAL OF DISEASE CONTROL & PREVENTION, 2024, 28(9): 1083-1089. doi: 10.16462/j.cnki.zhjbkz.2024.09.014
Citation: DING Hongmei, ZHANG Mingya, XU Xiaoqin, ZHANG Hongxiu. Machine learning and Cox proportional hazards regression model for warning of persistent infection with high-risk HPV type[J]. CHINESE JOURNAL OF DISEASE CONTROL & PREVENTION, 2024, 28(9): 1083-1089. doi: 10.16462/j.cnki.zhjbkz.2024.09.014

Machine learning and Cox proportional hazards regression model for warning of persistent infection with high-risk HPV type

doi: 10.16462/j.cnki.zhjbkz.2024.09.014
Funds:

Scientific Research Project of Jiangsu Maternal and Child Health Care Association FYX202345

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  • Corresponding author: ZHANG Hongxiu, E-mail: hongxiuz@njmu.edu.cn
  • Received Date: 2023-08-31
  • Rev Recd Date: 2024-03-16
  • Available Online: 2024-10-24
  • Publish Date: 2024-09-10
  •   Objective  A prediction model of human papillomavirus based on machine learning was established to determine the factors associated with the persistent infection of high-risk human papilloma virus(HR-HPV), so as to provide early warning for the persistent infection of HR-HPV.  Methods  Clinical data of 4 407 women who participated in HPV testing at four health centers in Taizhou City from September 2017 to September 2019 and participated in HPV follow-up from September 2020 to September 2022 were collected. The demographic characteristics of total 4 407 subjects in this cohort study were used as the input of the machine learning model, and the change process of the results of the two HPV inspections as the output, a prediction model based on machine learning was established, including random forest and multi-layer perceptron, to predict the HPV follow-up results of the research object. Univariate Cox risk proportion regression model and multivariate Cox risk proportion regression model were used to statistically analyze 583 primary screening HR-HPV positive cases.  Results  The accuracy of the random forest prediction model was 84.3%, and the accuracy of the multi-layer perceptron was 80.5%. The top five viral types with persistent positive rate of HR-HPV were HPV58, multiple infections, HPV31, HPV33, and HPV52. The multivariate Cox regression analysis showed that the conversion risk of HR-HPV infection in those with junior high school education or below was 1.72 times that of those with high school education and above (HR=1.72, 95% CI: 1.03-2.87, P=0.037), and the conversion risk of HR-HPV infection in non-menopausal individuals was 2.11 times higher than that in menopausal individuals (HR=2.11, 95% CI: 1.10-4.06, P=0.025).  Conclusions  Machine learning and Cox regression analysis models can provide an early warning of the HR-HPV persistent infection population, which has an important clinical value for the subsequent management of HR-HPV-infected women and the prevention and control of cervical cancer.
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