Litcius/Paper detail

Identification of risk genes for Alzheimer’s disease by gene embedding

Yashwanth Lagisetty, Thomas Bourquard, Ismael Al‐Ramahi, Carl Grant Mangleburg, Samantha Mota, Shirin Soleimani, Joshua Shulman, Juan Botas, Kwanghyuk Lee, Olivier Lichtarge

2022Cell Genomics26 citationsDOIOpen Access PDF

Abstract

Most disease-gene association methods do not account for gene-gene interactions, even though these play a crucial role in complex, polygenic diseases like Alzheimer’s disease (AD). To discover new genes whose interactions may contribute to pathology, we introduce GeneEMBED. This approach compares the functional perturbations induced in gene interaction network neighborhoods by coding variants from disease versus healthy subjects. In two independent AD cohorts of 5,169 exomes and 969 genomes, GeneEMBED identified novel candidates. These genes were differentially expressed in post mortem AD brains and modulated neurological phenotypes in mice. Four that were differentially overexpressed and modified neurodegeneration in vivo are PLEC, UTRN, TP53, and POLD1. Notably, TP53 and POLD1 are involved in DNA break repair and inhibited by approved drugs. While these data show proof of concept in AD, GeneEMBED is a general approach that should be broadly applicable to identify genes relevant to risk mechanisms and therapy of other complex diseases.

Topics & Concepts

GeneBiologyNeurodegenerationDiseaseGeneticsPhenotypeGenome-wide association studyGenomeIdentification (biology)Computational biologyBioinformaticsSingle-nucleotide polymorphismMedicineGenotypePathologyBotanyBioinformatics and Genomic NetworksAlzheimer's disease research and treatmentsEpigenetics and DNA Methylation
Identification of risk genes for Alzheimer’s disease by gene embedding | Litcius