Miller Rachel L, McLaughlin Angela, Liang Richard H, Harding John, Wong Jason, Le Anh Q, Brumme Chanson J, Montaner Julio S G, Joy Jeffrey B
Molecular Epidemiology and Evolutionary Genetics, British Columbia Centre for Excellence in HIV/AIDS, Vancouver, Canada.
Laboratory Program, British Columbia Centre for Excellence in HIV/AIDS, Vancouver, Canada.
Evol Med Public Health. 2022 Jul 22;10(1):305-315. doi: 10.1093/emph/eoac026. eCollection 2022.
Public health officials faced with a large number of transmission clusters require a rapid, scalable and unbiased way to prioritize distribution of limited resources to maximize benefits. We hypothesize that transmission cluster prioritization based on phylogenetically derived lineage-level diversification rates will perform as well as or better than commonly used growth-based prioritization measures, without need for historical data or subjective interpretation.
9822 HIV pol sequences collected during routine drug resistance genotyping were used alongside simulated sequence data to infer sets of phylogenetic transmission clusters via patristic distance threshold. Prioritized clusters inferred from empirical data were compared to those prioritized by the current public health protocols. Prioritization of simulated clusters was evaluated based on correlation of a given prioritization measure with future cluster growth, as well as the number of direct downstream transmissions from cluster members.
Empirical data suggest diversification rate-based measures perform comparably to growth-based measures in recreating public heath prioritization choices. However, unbiased simulated data reveals phylogenetic diversification rate-based measures perform better in predicting future cluster growth relative to growth-based measures, particularly long-term growth. Diversification rate-based measures also display advantages over growth-based measures in highlighting groups with greater future transmission events compared to random groups of the same size. Furthermore, diversification rate measures were notably more robust to effects of decreased sampling proportion.
Our findings indicate diversification rate-based measures frequently outperform growth-based measures in predicting future cluster growth and offer several additional advantages beneficial to optimizing the public health prioritization process.
面对大量传播集群的公共卫生官员需要一种快速、可扩展且无偏差的方法来对有限资源的分配进行优先级排序,以实现效益最大化。我们假设,基于系统发育推导的谱系水平多样化率进行传播集群优先级排序的效果将与常用的基于增长的优先级排序方法相当或更好,且无需历史数据或主观解读。
在常规耐药基因分型过程中收集的9822条HIV pol序列与模拟序列数据一起用于通过简约距离阈值推断系统发育传播集群集。将从经验数据推断出的优先级集群与当前公共卫生协议确定优先级的集群进行比较。基于给定优先级排序方法与未来集群增长的相关性以及集群成员的直接下游传播数量,对模拟集群的优先级排序进行评估。
经验数据表明,基于多样化率的方法在重现公共卫生优先级选择方面与基于增长的方法表现相当。然而,无偏差的模拟数据显示,基于系统发育多样化率的方法在预测未来集群增长方面比基于增长的方法表现更好,尤其是长期增长。与基于增长的方法相比,基于多样化率的方法在突出未来传播事件较多的群体方面也显示出优势,这些群体相对于相同规模的随机群体而言。此外,多样化率方法对抽样比例降低的影响具有明显更强的稳健性。
我们的研究结果表明,基于多样化率的方法在预测未来集群增长方面通常优于基于增长的方法,并提供了一些其他优势,有利于优化公共卫生优先级排序过程。