Quantifying selection in high-throughput Immunoglobulin sequencing data sets

Quantifying selection in high-throughput Immunoglobulin sequencing data sets

Yaari, Gur;Uduman, Mohamed;Kleinstein, Steven H.;
Nucleic Acids Research 2012 Vol. 40 pp. e134-e134
129
gur2012nucleicquantifying

Abstract

Abstract. High-throughput immunoglobulin sequencing promises new insights into the somatic hypermutation and antigen-driven selection processes that underlie B

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