In silico tools for accurate HLA and KIR inference from clinical sequencing data empower immunogenetics on individual-patient and population scales

Author:

Chen Jieming1,Madireddi Shravan2,Nagarkar Deepti2,Migdal Maciej3,Vander Heiden Jason1ORCID,Chang Diana4,Mukhyala Kiran1,Selvaraj Suresh5,Kadel Edward E6,Brauer Matthew J7,Mariathasan Sanjeev6,Hunkapiller Julie4,Jhunjhunwala Suchit1,Albert Matthew L8,Hammer Christian9ORCID

Affiliation:

1. Department of Bioinformatics and Computational Biology

2. Department of Cancer Immunology

3. Roche’s Global IT Solution Centre

4. Department of Human Genetics

5. Roche/Genentech’s Biosample & Repository Management

6. Department of Oncology Biomarker Development

7. Data Science at Maze Therapeutics

8. Immunology & Infectious Diseases

9. Departments of Cancer Immunology and Human Genetics

Abstract

Abstract Immunogenetic variation in humans is important in research, clinical diagnosis and increasingly a target for therapeutic intervention. Two highly polymorphic loci play critical roles, namely the human leukocyte antigen (HLA) system, which is the human version of the major histocompatibility complex (MHC), and the Killer-cell immunoglobulin-like receptors (KIR) that are relevant for responses of natural killer (NK) and some subsets of T cells. Their accurate classification has typically required the use of dedicated biological specimens and a combination of in vitro and in silico efforts. Increased availability of next generation sequencing data has led to the development of ancillary computational solutions. Here, we report an evaluation of recently published algorithms to computationally infer complex immunogenetic variation in the form of HLA alleles and KIR haplotypes from whole-genome or whole-exome sequencing data. For both HLA allele and KIR gene typing, we identified tools that yielded >97% overall accuracy for four-digit HLA types, and >99% overall accuracy for KIR gene presence, suggesting the readiness of in silico solutions for use in clinical and high-throughput research settings.

Publisher

Oxford University Press (OUP)

Subject

Molecular Biology,Information Systems

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