Identification of the novel HLA-DPB1*1149:01.

HLA

Laboratory of Immunogenetics and Transplant, Department of Oncohematology and Cell and Gene Therapy, IRCCS Bambin Gesù Pediatric Hospital, Rome, Italy.

Published: May 2021

AI Article Synopsis

  • The allele HLA-DPB1*1149:01 is a variant of the HLA-DPB1 gene.
  • It differs from another variant, HLA-DPB1*09:01:01, by a single nucleotide change.
  • This nucleotide substitution occurs specifically in Exon 4 of the gene.

Article Abstract

The new allele HLA-DPB1*1149:01 differs from HLA-DPB1*09:01:01 by one nucleotide substitution in Exon 4.

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Source
http://dx.doi.org/10.1111/tan.14212DOI Listing

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