Hallett T B, Garnett G P, Mupamberiyi Z, Gregson S
Department of Infectious Disease Epidemiology, Imperial College London, UK.
Int J Epidemiol. 2008 Feb;37(1):77-87. doi: 10.1093/ije/dym232. Epub 2007 Dec 20.
Complicated HIV transmission dynamics make it unclear how to design and interpret results from community-randomized controlled trials (CRCT) of interventions to prevent infection.
Mathematical modelling was used to investigate the effectiveness of interventions to prevent HIV transmission aimed at high-risk groups and factors related to the chance of recording a statistically significant result.
Behaviour change by high-risk groups can substantially reduce HIV incidence in the whole population, although its effect is sensitive to the structure of the sexual network and the phase of the epidemic. There is a delay between the behaviour change happening and its full effect being realized in the low-risk group and this can pull the measured incidence rate ratio towards one and reduce the chance of recording a statistically significant result in a CRCT. Our simulations suggest that only with unrealistically favourable study conditions would a statistically significant result be likely with 5 years follow-up or less. Small differences in the epidemiological parameters between communities can lead to misleading incidence rate ratios. Behaviour change independent of the intervention can increase the epidemiological impact of the intervention and the chance of recording a statistically significant result.
HIV prevention interventions, especially those targeted at high-risk groups may take longer to work at the population level and need more follow-up time in a CRCT to generate statistically significant results. Mathematical modelling can be used in the design and analysis of CRCTs to understand how the impact of the intervention could develop and the implications this has for statistical power.
复杂的HIV传播动态使得不清楚如何设计和解读针对预防感染的社区随机对照试验(CRCT)的结果。
采用数学建模来研究针对高危人群的预防HIV传播干预措施的有效性以及与记录具有统计学显著结果的可能性相关的因素。
高危人群的行为改变可大幅降低整个人群中的HIV发病率,尽管其效果对性网络结构和流行阶段敏感。行为改变发生与低危人群中其全部效果实现之间存在延迟,这可能使测得的发病率比趋向于1,并降低在CRCT中记录具有统计学显著结果的可能性。我们的模拟表明,只有在不切实际的有利研究条件下,5年或更短随访时间才可能获得具有统计学显著的结果。社区之间流行病学参数的微小差异可能导致误导性的发病率比。与干预无关的行为改变可增加干预的流行病学影响以及记录具有统计学显著结果的可能性。
HIV预防干预措施,尤其是针对高危人群的措施,在人群层面可能需要更长时间才能起效,并且在CRCT中需要更多随访时间才能产生具有统计学显著的结果。数学建模可用于CRCT的设计和分析,以了解干预的影响如何发展以及这对统计效力的影响。