Sacks-Davis Rachel, McBryde Emma, Grebely Jason, Hellard Margaret, Vickerman Peter
Centre for Population Health, Burnet Institute, Melbourne, Australia Department of Epidemiology and Preventive Medicine, Monash University, Melbourne, Australia
Centre for Population Health, Burnet Institute, Melbourne, Australia Victorian Infectious Diseases Service, Royal Melbourne Hospital, Melbourne, Australia Department of Medicine, University of Melbourne, Melbourne, Australia.
J R Soc Interface. 2015 Mar 6;12(104):20141197. doi: 10.1098/rsif.2014.1197.
Hepatitis C virus (HCV) reinfection rates are probably underestimated due to reinfection episodes occurring between study visits. A Markov model of HCV reinfection and spontaneous clearance was fitted to empirical data. Bayesian post-estimation was used to project reinfection rates, reinfection spontaneous clearance probability and duration of reinfection. Uniform prior probability distributions were assumed for reinfection rate (more than 0), spontaneous clearance probability (0-1) and duration (0.25-6.00 months). Model estimates were 104 per 100 person-years (95% CrI: 21-344), 0.84 (95% CrI: 0.59-0.98) and 1.3 months (95% CrI: 0.3-4.1) for reinfection rate, spontaneous clearance probability and duration, respectively. Simulation studies were used to assess model validity, demonstrating that the Bayesian model estimates provided useful information about the possible sources and magnitude of bias in epidemiological estimates of reinfection rates, probability of reinfection clearance and duration or reinfection. The quality of the Bayesian estimates improved for larger samples and shorter test intervals. Uncertainty in model estimates notwithstanding, findings suggest that HCV reinfections frequently and quickly result in spontaneous clearance, with many reinfection events going unobserved.
由于研究访视期间发生再感染事件,丙型肝炎病毒(HCV)再感染率可能被低估。将HCV再感染和自发清除的马尔可夫模型拟合到经验数据中。采用贝叶斯后验估计来预测再感染率、再感染自发清除概率和再感染持续时间。对再感染率(大于0)、自发清除概率(0 - 1)和持续时间(0.25 - 6.00个月)假设均匀先验概率分布。再感染率、自发清除概率和持续时间的模型估计分别为每100人年104例(95% CrI:21 - 344)、0.84(95% CrI:0.59 - 0.98)和1.3个月(95% CrI:0.3 - 4.1)。采用模拟研究评估模型有效性,结果表明贝叶斯模型估计为再感染率、再感染清除概率和再感染持续时间的流行病学估计中的可能偏差来源和偏差程度提供了有用信息。对于更大的样本和更短的检测间隔,贝叶斯估计的质量有所提高。尽管模型估计存在不确定性,但研究结果表明HCV再感染频繁且迅速导致自发清除,许多再感染事件未被观察到。