4.2 Article

hlaR: A rapid and reproducible tool to identify eplet mismatches between transplant donors and recipients

期刊

HUMAN IMMUNOLOGY
卷 83, 期 3, 页码 248-255

出版社

ELSEVIER SCIENCE INC
DOI: 10.1016/j.humimm.2022.01.007

关键词

Eplet; HLA; Epitope; Software; Imputation

资金

  1. NIH/NCI [5U19 AI051731-18, R01 MD011682-03, R01 AI126322-04, U01 AI138909-01]
  2. Carlos and Marguerite Mason Fund
  3. James M. Cox Foundation
  4. ASTS Jon Fryer Resi-dent Research Scholarship
  5. James O. Robbins Fellowship

向作者/读者索取更多资源

Eplet mismatch has an impact on transplant recipient outcomes, and accurate assessment requires high-resolution HLA typing. To simplify eplet analysis, we developed a software tool that can impute high-resolution data from low-resolution data and calculate overall and single molecule eplet mismatch. Compared to existing tools, this tool shows high consistency in eplet mismatch and provides rapid and reproducible imputation and mismatch calculation.
Eplet mismatch load, both overall and at the single molecule level, correlates with transplant recipient outcomes. However, precise eplet assessment requires high-resolution HLA typing of both the donor and recipient. Anything less than high-resolution typing requires imputation of HLA types. The currently available methods to identify eplet mismatch are both tedious and demanding. Therefore, we developed a software package and user-friendly web application (hlaR), that simplifies the workflow of eplet analysis, provides functions to impute high-resolution from low-resolution data and calculates both overall and single molecule eplet mismatch for single or multiple donor recipient pairs. Compared to manual assessments using currently available tools (namely, HLAMatchMaker), hlaR resulted in only minimal discrepancy in eplet mismatches (mean absolute difference of 0.56 for class I and 0.86 for class II for unique sum across loci). Additionally, output of the single molecule eplet function compared well to manual calculation, with an average single antigen count increase of 0.19. Importantly, the hlaR tool permits rapid and reproducible imputation and eplet mismatch including comparison between eplet reference tables (e.g. HLAMatchMaker version 2 or 3). Users can import data from a spreadsheet rather than relying on keystroke entry of individual donor and recipient data, thus reducing the risk of data entry errors. The resulting improved scalability of the hlaR tool is highlighted by plotting analysis time against the size of the input dataset. The new hlaR tool can provide eplet mismatch data with a streamlined workflow. With decreased effort from the end user, eplet matching and mismatch load data can be further incorporated into both research and clinical use.(c) 2022 American Society for Histocompatibility and Immunogenetics. Published by Elsevier Inc. All rights reserved.

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