Trajectory modeling for estimating the trend of human papillomavirus infection status among men who have sex with men.
- Author:
Bingxue HUANG
1
;
Guoyao SANG
2
;
Xiaoqing TUO
1
;
Tian TIAN
1
;
Ainiwaer ABIDAN
1
;
Jianghong DAI
1
Author Information
- Publication Type:Journal Article
- MeSH: Anal Canal; Bayes Theorem; HIV Infections; Homosexuality, Male; Humans; Male; Papillomavirus Infections; Prevalence; Risk Factors; Sexual and Gender Minorities
- From: Journal of Zhejiang University. Medical sciences 2018;47(2):150-155
- CountryChina
- Language:Chinese
-
Abstract:
OBJECTIVETo investigate whether trajectory model can be used to explore the trend of anal human papillomavirus (HPV) infection status among HIV-negative men who have sex with men (MSM).
METHODSHIV-negative MSM were recruited by using the "snowball" method from 1st September 2016 to 30th September 2017 in Urumqi. The subjects were followed-up every six months since enrollment. The cell samples in anal canal were collected and the 37-type HPV test kits were used for identification and classification of HPV infection at both baseline and follow-up visits. Taking the cumulative number of different types of HPV as the dependent variable and follow-up visits as the independent variable, the trajectory model was established for the study subjects who completed baseline, 6 months and 12 months follow-up. The model was used to simulate the trend of HPV infection status when the subjects were divided into 1, 2, 3 and 4 subgroups. Bayesian information criterion (BIC), log Bayes factor and average posterior probability (AvePP) were used to evaluate the fitting effect.
RESULTSA total of 400 HIV-negative MSM were recruited at baseline and 187 subjects completed baseline and two follow-ups. The fitting effect attained best when the variation trend was divided into two subgroups. The first subgroup accounted for 54.5%(102/187) of the total, and the curve of change in HPV infection was decreasing; the second subgroup accounted for 45.5%(85/187) of the total, and the curve of change in HPV infection was increasing.
CONCLUSIONSTrajectory model can effectively distinguish the trend of HPV infection status in HIV-negative MSM to identify the high-risk group of HPV infection.