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Publication : Machine learning reveals genetic modifiers of the immune microenvironment of cancer.

First Author  Riley-Gillis B Year  2023
Journal  iScience Volume  26
Issue  9 Pages  107576
PubMed ID  37664640 Mgi Jnum  J:340305
Mgi Id  MGI:7528317 Doi  10.1016/j.isci.2023.107576
Citation  Riley-Gillis B, et al. (2023) Machine learning reveals genetic modifiers of the immune microenvironment of cancer. iScience 26(9):107576
abstractText  Heritability in the immune tumor microenvironment (iTME) has been widely observed yet remains largely uncharacterized. Here, we developed a machine learning approach to map iTME modifiers within loci from genome-wide association studies (GWASs) for breast cancer (BrCa) incidence. A random forest model was trained on a positive set of immune-oncology (I-O) targets, and then used to assign I-O target probability scores to 1,362 candidate genes in linkage disequilibrium with 155 BrCa GWAS loci. Cluster analysis of the most probable candidates revealed two subfamilies of genes related to effector functions and adaptive immune responses, suggesting that iTME modifiers impact multiple aspects of anticancer immunity. Two of the top ranking BrCa candidates, LSP1 and TLR1, were orthogonally validated as iTME modifiers using BrCa patient biopsies and comparative mapping studies, respectively. Collectively, these data demonstrate a robust and flexible framework for functionally fine-mapping GWAS risk loci to identify translatable therapeutic targets.
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