Awardee OrganizationICAHN SCHOOL OF MEDICINE AT MOUNT SINAI
Description
Abstract Text
With ageing populations world-wide, neurodegenerative diseases are placing an ever increasing
burden on long- term well-being, healthcare costs and family life. Despite decades of research and
enormous investment, no disease-modifying treatment is available for the most common of these
diseases: Alzheimer’s (AD). The majority of these, to-date unsuccessful, efforts have focused
on one potential cause of AD: amyloid-β aggregation. Combining population-scale data
collection, human genetics and machine learning provides a way forward to uncover and characterize
new causal cellular processes involved in AD. This would provide an array of potential therapeutic
targets, increasing the chance that one will be more easily modulated than the amyloid-β pathway.
AD-specific genomic datasets of unprecedented scale are being actively collected: whole genome
sequencing (WGS) from ~20k individuals, gene expression (RNA-seq) and epigenomics (ATAC-seq,
histone ChIP-seq) from
>1000 post-mortem AD brains, single-cell transcriptomes and similar modalities in peripheral and
brain-resident innate immune cells (which we and others have shown to be AD-relevant). Effectively
integrating these diverse data to better understand AD represents a substantial computational
challenge, both in terms of data scale and analysis complexity. This proposal leverages
state-of-the-art deep learning (DL) and machine learning (ML), combined with human genetic
analyses, to address this challenge. We will train DL models to predict epigenomic signals and
RNA splicing from genomic sequence, enabling in silico mutagenesis to estimate the
functional impact (a “delta score”) of any genetic variant. The delta scores will be used in
genetic analyses that distinguish causal associations: cellular changes that drive AD
pathogenesis rather than downstream/side effects of disease. Delta scores will aid in
associating both rare and common variants to AD. To achieve sufficient power, rare variants must be
aggregated (e.g. for a gene): delta scores will allow filtering out many likely non-functional
(particularly non-coding) variants. Most common variants from AD Genome Wide Association Studies
(GWAS) are simply correlated with the causal variant due to linkage disequilibrium (LD). Delta
scores, combined with trans-ethnic GWAS, will enable estimation of the likely causal variant(s).
These analyses will highlight variants and genes involved in AD. However, genes do not operate in a
vacuum so robust probabilistic ML will be used to learn cell-type and disease-specific gene
regulatory networks from sorted bulk and single-cell RNA-seq. The detected networks will be
integrated with our genetic findings to discover network neighborhoods/pathways especially
enriched in AD variants. Such pathways will be prime candidates for future functional and
therapeutic studies of AD.
Public Health Relevance Statement
The goal of this research is to use machine learning algorithms to work out which
genetic differences in the genomes of Alzheimer’s disease (AD) patients might have
caused their disease. We will do this by learning computational models of how genes are
controlled by genetic sequence and other genes. The proposed study will discover what genes,
pathways and molecular mechanisms are involved in AD, which will provide novel
therapeutic targets for AD patients.
No Sub Projects information available for 5U01AG068880-05
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