Department of Mathematics and Computer Science, Adrem Data Lab, University of Antwerp, Antwerp, Belgium.
Biomedical Informatics Research Network Antwerp (biomina), University of Antwerp, Antwerp, Belgium.
Genes Immun. 2019 Mar;20(3):255-260. doi: 10.1038/s41435-018-0035-y. Epub 2018 Jun 15.
Pathogens of past and current infections have been identified directly by means of PCR or indirectly by measuring a specific immune response (e.g., antibody titration). Using a novel approach, Emerson and colleagues showed that the cytomegalovirus serostatus can also be accurately determined by using a T cell receptor repertoire data mining approach. In this study, we have sequenced the CD4 memory T cell receptor repertoire of a Belgian cohort with known cytomegalovirus serostatus. A random forest classifier was trained on the CMV specific T cell receptor repertoire signature and used to classify individuals in the Belgian cohort. This study shows that the novel approach can be reliably replicated with an equivalent performance as that reported by Emerson and colleagues. Additionally, it provides evidence that the T cell receptor repertoire signature is to a large extent present in the CD4 memory repertoire.
过去和当前感染的病原体已通过 PCR 直接或通过测量特定免疫反应(例如,抗体滴定)间接识别。 Emerson 及其同事采用一种新方法表明,也可以通过使用 T 细胞受体库数据挖掘方法来准确确定巨细胞病毒血清状态。在这项研究中,我们对具有已知巨细胞病毒血清状态的比利时队列的 CD4 记忆 T 细胞受体库进行了测序。基于 CMV 特异性 T 细胞受体库特征,训练了一个随机森林分类器,并用于对比利时队列中的个体进行分类。本研究表明,该新方法可以可靠地复制,其性能与 Emerson 及其同事报告的相当。此外,它还提供了证据表明,T 细胞受体库特征在很大程度上存在于 CD4 记忆库中。