Hughes Shana D, Woods William J, O'Keefe Kara J, Delgado Viva, Pipkin Sharon, Scheer Susan, Truong Hong-Ha M
University of California, San Francisco, CA, USA.
San Francisco Department of Public Health, San Francisco, CA, USA.
J Mix Methods Res. 2021 Jul;15(3):327-347. doi: 10.1177/15586898211012786. Epub 2021 May 8.
Mixed methods studies of human disease that combine surveillance, biomarker, and qualitative data can help elucidate what drives epidemiological trends. Viral genetic data are rarely coupled with other types of data due to legal and ethical concerns about patient privacy. We developed a novel approach to integrate phylogenetic and qualitative methods in order to better target HIV prevention efforts. The overall aim of our mixed methods study was to characterize HIV transmission clusters. We combined surveillance data with HIV genomic data to identify cases whose viruses share enough similarities to suggest a recent common source of infection or participation in linked transmission chains. Cases were recruited through a multi-phase process to obtain consent for recruitment to semi-structured interviews. Through linkage of viral genetic sequences with epidemiological data, we identified individuals in large transmission clusters, which then served as a sampling frame for the interviews. In this article, we describe the multi-phase process and the limitations and challenges encountered. Our approach contributes to the mixed methods research field by demonstrating that phylogenetic analysis and surveillance data can be harnessed to generate a sampling frame for subsequent qualitative data collection, using an explanatory sequential design. The process we developed also respected protections of patient confidentiality. The novel method we devised may offer an opportunity to implement a sampling frame that allows for the recruitment and interview of individuals in high-transmission clusters to better understand what contributes to spread of other infectious diseases, including COVID-19.
结合监测、生物标志物和定性数据的人类疾病混合方法研究有助于阐明推动流行病学趋势的因素。由于对患者隐私的法律和伦理担忧,病毒基因数据很少与其他类型的数据相结合。我们开发了一种将系统发育方法和定性方法相结合的新方法,以便更好地确定艾滋病病毒预防工作的目标。我们混合方法研究的总体目标是对艾滋病病毒传播集群进行特征描述。我们将监测数据与艾滋病病毒基因组数据相结合,以识别那些病毒具有足够相似性,表明存在近期共同感染源或参与关联传播链的病例。通过多阶段流程招募病例,以获得参与半结构化访谈的同意。通过将病毒基因序列与流行病学数据相联系,我们确定了大型传播集群中的个体,这些个体随后成为访谈的抽样框架。在本文中,我们描述了多阶段流程以及遇到的局限性和挑战。我们的方法通过展示利用系统发育分析和监测数据来生成后续定性数据收集的抽样框架,采用解释性序列设计,为混合方法研究领域做出了贡献。我们开发的流程也尊重对患者保密性的保护。我们设计的新方法可能提供一个机会,实施一个抽样框架,以便招募和访谈高传播集群中的个体,从而更好地了解导致包括新冠肺炎在内的其他传染病传播的因素。