Los Alamos National Laboratory, Los Alamos, New Mexico, USA
New Mexico Consortium, Los Alamos, New Mexico, USA.
mBio. 2020 Mar 24;11(2):e00324-20. doi: 10.1128/mBio.00324-20.
Many HIV prevention strategies are currently under consideration where it is highly informative to know the study participants' times of infection. These can be estimated using viral sequence data sampled early in infection. However, there are several scenarios that, if not addressed, can skew timing estimates. These include multiple transmitted/founder (TF) viruses, APOBEC (apolipoprotein B mRNA editing enzyme, catalytic polypeptide-like)-mediated mutational enrichment, and recombination. Here, we suggest a pipeline to identify these problems and resolve the biases that they introduce. We then compare two modeling strategies to obtain timing estimates from sequence data. The first, Poisson Fitter (PF), is based on a Poisson model of random accumulation of mutations relative to the TF virus (or viruses) that established the infection. The second uses a coalescence-based phylogenetic strategy as implemented in BEAST. The comparison is based on timing predictions using plasma viral RNA (cDNA) sequence data from 28 simian-human immunodeficiency virus (SHIV)-infected animals for which the exact day of infection is known. In this particular setting, based on nucleotide sequences from samples obtained in early infection, the Poisson method yielded more accurate, more precise, and unbiased estimates for the time of infection than did the explored implementations of BEAST. The inference of the time of infection is a critical parameter in testing the efficacy of clinical interventions in protecting against HIV-1 infection. For example, in clinical trials evaluating the efficacy of passively delivered antibodies (Abs) for preventing infections, accurate time of infection data are essential for discerning levels of the Abs required to confer protection, given the natural Ab decay rate in the human body. In such trials, genetic sequences from early in the infection are regularly sampled from study participants, generally prior to immune selection, when the viral population is still expanding and genetic diversity is low. In this particular setting of early viral growth, the Poisson method is superior to the alternative approach based on coalescent methods. This approach can also be applied in human vaccine trials, where accurate estimates of infection times help ascertain if vaccine-elicited immune protection wanes over time.
目前有许多 HIV 预防策略正在研究中,了解研究参与者的感染时间非常重要。这些可以通过在感染早期采样的病毒序列数据来估计。然而,如果不解决以下几种情况,就会导致时间估计产生偏差。这些情况包括多个传播/创始(TF)病毒、APOBEC(载脂蛋白 B mRNA 编辑酶,催化多肽样)介导的突变富集和重组。在这里,我们建议采用一种流水线来识别这些问题,并解决它们引入的偏差。然后,我们比较了两种从序列数据中获取时间估计的建模策略。第一种是泊松拟合器(PF),它基于相对于建立感染的 TF 病毒(或病毒)随机积累突变的泊松模型。第二种方法使用基于合并的系统发育策略,如 BEAST 中实现的方法。这种比较是基于对 28 只感染了猴免疫缺陷病毒(SHIV)的动物的血浆病毒 RNA(cDNA)序列数据进行时间预测,这些动物的感染确切日期是已知的。在这种特殊情况下,基于早期感染样本获得的核苷酸序列,泊松方法比探索性实施的 BEAST 方法更准确、更精确和无偏地估计了感染时间。感染时间的推断是检验临床干预措施预防 HIV-1 感染功效的关键参数。例如,在评估被动递呈抗体(Abs)预防感染功效的临床试验中,准确的感染时间数据对于确定在人体内 Abs 自然衰减率下,预防感染所需的 Abs 水平至关重要。在这些试验中,通常在免疫选择之前,从研究参与者身上定期采集感染早期的遗传序列,此时病毒种群仍在扩张,遗传多样性较低。在这种早期病毒生长的特殊情况下,泊松方法优于基于合并方法的替代方法。这种方法也可以应用于人类疫苗试验中,在这些试验中,感染时间的准确估计有助于确定疫苗诱导的免疫保护是否随时间推移而减弱。