Machine learning nominates the inositol pathway and novel genes in Parkinson's disease

Brain. 2024 Mar 1;147(3):887-899. doi: 10.1093/brain/awad345.

Abstract

There are 78 loci associated with Parkinson's disease in the most recent genome-wide association study (GWAS), yet the specific genes driving these associations are mostly unknown. Herein, we aimed to nominate the top candidate gene from each Parkinson's disease locus and identify variants and pathways potentially involved in Parkinson's disease. We trained a machine learning model to predict Parkinson's disease-associated genes from GWAS loci using genomic, transcriptomic and epigenomic data from brain tissues and dopaminergic neurons. We nominated candidate genes in each locus and identified novel pathways potentially involved in Parkinson's disease, such as the inositol phosphate biosynthetic pathway (INPP5F, IP6K2, ITPKB and PPIP5K2). Specific common coding variants in SPNS1 and MLX may be involved in Parkinson's disease, and burden tests of rare variants further support that CNIP3, LSM7, NUCKS1 and the polyol/inositol phosphate biosynthetic pathway are associated with the disease. Functional studies are needed to further analyse the involvements of these genes and pathways in Parkinson's disease.

Keywords: GWAS; Parkinson’s disease; gene prioritization; machine learning.

Publication types

  • Research Support, Non-U.S. Gov't

MeSH terms

  • Dopaminergic Neurons
  • Genome-Wide Association Study*
  • Humans
  • Inositol Phosphates
  • Machine Learning
  • Parkinson Disease* / genetics
  • Phosphotransferases (Phosphate Group Acceptor)

Substances

  • Inositol Phosphates
  • PPIP5K2 protein, human
  • Phosphotransferases (Phosphate Group Acceptor)

Grants and funding