Aligning Science Across Parkinson's Logo Text

Modeling cis-regulatory variation in human brain enhancers across a large Parkinson’s Disease cohort

Output Details

Genome-wide association studies (GWAS) have linked more than hundred non-coding genomic loci to Parkinson’s disease (PD) risk. Deciphering their functional impact on gene regulation requires cell type-aware modeling approaches to assess the effects of sequence variation on enhancer function and target gene expression. To address this challenge, we generated a comprehensive matched dataset from 190 human donors (115 controls and 75 PD), comprising long-read whole-genome sequencing alongside single nucleus multiome atlases (snATAC-seq and snRNA-seq for 3.1 and 1.1 million nuclei respectively) of the anterior cingulate cortex and substantia nigra. By integrating chromatin accessibility quantitative trait loci (caQTL), DNA methylation QTL (meQTL), and allele-specific chromatin accessibility (ASCA), we identified 53,841 high-confidence cis-acting genetic variants that modulate cell type-specific enhancer accessibility in one or both brain regions. We then demonstrate that sequence-to-function models can accurately predict the impact of these variants directly from the genomic sequence. Novel explainability approaches allowed stratifying these variants according to their regulatory function, with the majority disrupting specific transcription factor binding sites in a cell type specific manner. Integrating these “enhancer variants” (EV) with eQTL mapping and gene locus modeling linked a subset of EVs to their target genes. Finally, we applied these models to prioritize regulatory variants at known PD GWAS loci, bypassing statistical limitations in rare disease-relevant populations like dopaminergic neurons. All together, we establish a unique resource and new sequence modeling strategies to interpret functional non-coding variation in the human brain.
Tags
  • Original Research

Meet the Authors

  • User avatar fallback logo

    Olga Sigalova

    External Collaborator

  • User avatar fallback logo

    Alexandra Pančíková

    External Collaborator

  • User avatar fallback logo

    Julie De Man

    External Collaborator

  • User avatar fallback logo

    Koen Theunis

    External Collaborator

  • User avatar fallback logo

    Gert Hulselmans

    External Collaborator

  • User avatar fallback logo

    Vasileios Konstantakos

    External Collaborator

  • User avatar fallback logo

    Bram Stuyven

    External Collaborator

  • User avatar fallback logo

    Anton De Brabandere

    External Collaborator

  • User avatar fallback logo

    Jarne Geurts

    External Collaborator

  • User avatar fallback logo

    Antonina Mikorska

    External Collaborator

  • User avatar fallback logo

    Shinjini Mukherjee

    External Collaborator

  • Sara Salama, PhD

    Project Manager: Team Voet

    KU Leuven

  • User avatar fallback logo

    Katy Vandereyken

    External Collaborator

  • User avatar fallback logo

    Kristofer Davie

    External Collaborator

  • User avatar fallback logo

    Lukas Mahieu

    External Collaborator

  • User avatar fallback logo

    Charles H. Adler

    External Collaborator

  • User avatar fallback logo

    Thomas Beach

    External Collaborator

  • User avatar fallback logo

    Geidy Serrano

    External Collaborator

  • Thierry Voet, PhD

    Lead PI (Core Leadership): Team Voet

    KU Leuven

  • User avatar fallback logo

    Jonas Demeulemeester

    External Collaborator

  • Stein Aerts, PhD

    Co-PI (Core Leadership): Team Voet

    KU Leuven

Aligning Science Across Parkinson's
Privacy Overview

This website uses cookies so that we can provide you with the best user experience possible. Cookie information is stored in your browser and performs functions such as recognising you when you return to our website and helping our team to understand which sections of the website you find most interesting and useful.