Literature DB >> 29904098

Memory CD4+ T cell receptor repertoire data mining as a tool for identifying cytomegalovirus serostatus.

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


  6 in total

1.  Profiling the baseline performance and limits of machine learning models for adaptive immune receptor repertoire classification.

Authors:  Chakravarthi Kanduri; Milena Pavlović; Lonneke Scheffer; Keshav Motwani; Maria Chernigovskaya; Victor Greiff; Geir K Sandve
Journal:  Gigascience       Date:  2022-05-25       Impact factor: 7.658

2.  Deep generative models for T cell receptor protein sequences.

Authors:  Kristian Davidsen; Branden J Olson; William S DeWitt; Jean Feng; Elias Harkins; Philip Bradley; Frederick A Matsen
Journal:  Elife       Date:  2019-09-05       Impact factor: 8.140

3.  High-throughput sequencing of CD4+ T cell repertoire reveals disease-specific signatures in IgG4-related disease.

Authors:  Liwen Wang; Panpan Zhang; Jieqiong Li; Hui Lu; Linyi Peng; Jing Ling; Xuan Zhang; Xiaofeng Zeng; Yan Zhao; Wen Zhang
Journal:  Arthritis Res Ther       Date:  2019-12-19       Impact factor: 5.156

4.  Single-cell analysis shows that adipose tissue of persons with both HIV and diabetes is enriched for clonal, cytotoxic, and CMV-specific CD4+ T cells.

Authors:  Celestine N Wanjalla; Wyatt J McDonnell; Ramesh Ram; Abha Chopra; Rama Gangula; Shay Leary; Mona Mashayekhi; Joshua D Simmons; Christian M Warren; Samuel Bailin; Curtis L Gabriel; Liang Guo; Briana D Furch; Morgan C Lima; Beverly O Woodward; LaToya Hannah; Mark A Pilkinton; Daniela T Fuller; Kenji Kawai; Renu Virmani; Aloke V Finn; Alyssa H Hasty; Simon A Mallal; Spyros A Kalams; John R Koethe
Journal:  Cell Rep Med       Date:  2021-02-16

5.  Preexisting memory CD4 T cells in naïve individuals confer robust immunity upon hepatitis B vaccination.

Authors:  George Elias; Pieter Meysman; Esther Bartholomeus; Kris Laukens; Viggo Van Tendeloo; Benson Ogunjimi; Nicolas De Neuter; Nina Keersmaekers; Arvid Suls; Hilde Jansens; Aisha Souquette; Hans De Reu; Marie-Paule Emonds; Evelien Smits; Eva Lion; Paul G Thomas; Geert Mortier; Pierre Van Damme; Philippe Beutels
Journal:  Elife       Date:  2022-01-25       Impact factor: 8.140

Review 6.  Machine Learning Approaches to TCR Repertoire Analysis.

Authors:  Yotaro Katayama; Ryo Yokota; Taishin Akiyama; Tetsuya J Kobayashi
Journal:  Front Immunol       Date:  2022-07-15       Impact factor: 8.786

  6 in total

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