| Literature DB >> 29904098 |
Nicolas De Neuter1,2,3, Esther Bartholomeus4,5, George Elias4,6, Nina Keersmaekers4,7, Arvid Suls4,5, Hilde Jansens8, Evelien Smits4,6,9,10, Niel Hens4,7,11,12, Philippe Beutels4,7, Pierre Van Damme4,12, Geert Mortier4,5, Viggo Van Tendeloo4,6, Kris Laukens13,14,4, Pieter Meysman13,14,4, Benson Ogunjimi4,7,15.
Abstract
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.Mesh:
Substances:
Year: 2018 PMID: 29904098 DOI: 10.1038/s41435-018-0035-y
Source DB: PubMed Journal: Genes Immun ISSN: 1466-4879 Impact factor: 2.676