Network properties derived from deep sequencing of the human B-cell receptor repertoires delineates B-cell populations
- Rachael Bashford-Rogers1,
- Anne Palser1,
- Brian Huntly2,
- Richard Rance1,
- George Vassiliou1,
- George Follows3 and
- Paul Kellam4,5
- 1 Wellcome Trust Sanger Institute;
- 2 Cambridge Institute for Medical Research, University of Cambridge;
- 3 Department of Hematology, University of Cambridge;
- 4 Wellcome Trust Sanger Institute and Division of Infection and Immunity, University College London
- ↵* Corresponding author; email: pk5{at}sanger.ac.uk
Abstract
The adaptive immune response selectively expands B- and T-cell clones following antigen recognition by B- and T-cell receptors (BCR and TCR) respectively. Next-generation sequencing is a powerful tool for dissecting the BCR and TCR populations at high-resolution, but robust computational analyses are required to interpret such sequencing. Here, we develop a novel computational approach for BCR repertoire analysis using established next-generation sequencing methods coupled with network construction and population analysis. BCR sequences organize into networks based on sequence diversity, with differences in network connectivity clearly distinguishing between diverse repertoires of healthy individuals and clonally expanded repertoires from individuals with chronic lymphocytic leukemia (CLL) and other clonal blood disorders. Network population measures defined by Gini Index and cluster sizes quantify the BCR clonality status and are robust to sampling and sequencing depths. BCR network analysis therefore allows the direct and quantifiable comparison of BCR repertoires between samples and intra-individual population changes between temporal or spatially separated samples and over the course of therapy.
- Received January 11, 2013.
- Accepted June 4, 2013.
- © 2013, Published by Cold Spring Harbor Laboratory Press
This manuscript is Open Access.
This article, published in Genome Research, is available under a Creative Commons License (Attribution-NonCommercial 3.0 Unported), as described at http://creativecommons.org/licenses/by-nc/3.0/.











