# New York Center for Collaborative Research in Common Disease Genomics

> **NIH NIH UM1** · NEW YORK GENOME CENTER · 2020 · $8,294,496

## Abstract

In this proposal, we address the enormous challenges common complex diseases pose for genomic
analysis and the enormous opportunities surmounting them offers for advancing healthcare. The common
genetic disorders proposed for study here are believed to have extreme locus heterogeneity, requiring the
analysis of large numbers of samples to comprehensively identify the genomic variants underlying them. We
propose that a combination of deep population studies and joint analysis of SNPs, indels, and structural
variants both in coding and noncoding regions will provide the next level of understanding of common genetic
disorders. Whole genome sequencing (WGS) will be critical to this next-generation approach to the genomics
of complex disease. WGS will need to be accompanied by the technical ability to generate and handle very
large data sets, a particular focus and strength of NYGC. WGS will also need to be accompanied by new
statistical tools and algorithms, which will be developed by the strong core group committed to this proposal.
 An overarching goal of this proposal, one that capitalizes on the power of WGS, is to identify disease-
associated variants at the individual nucleotide level. In many cases pathogenic mutations fall in noncoding
regions of the genome, which can only be fruitfully explored with WGS. A major effort will be put into building
new computational strategies to functionally annotate noncoding transcribed sequences, and to build new
datasets to enable such strategies, opening new frontiers of understanding of disease-related regulatory
variants. We will explore a wide spectrum of human variation using the WGS platform, including rare variants
of modest to large effect, de novo variants of large effect, and common variants of small effect. We will
combine available RNA and epigenomic datasets to predict modes of action of risk and identify protective
alleles. These results, combined with the integration of environmental and clinical data, will enhance our
understanding of genetic risk for common disease and lay the groundwork for utilization of personal genomics
in disease prevention and treatment, including the delineation of pathways for drug development.
 Many of the population cohorts proposed for study are from New York, which harbors the most diverse
population in the world. Analyzing diverse populations is a critical component of comprehensive common
disease analysis, as effect sizes of individual alleles are believed to vary in different populations due to gene-
gene interactions. Using the genetic admixture present in different populations from NY and throughout the
United States, we will conduct the first systematic study of these interaction effects in many phenotypes.
 These aims will be accomplished through widespread collaborations, with genomicists, physicians, and
patients, organized through a focused team at NYGC. They will be enriched by the collaboration and support
from independent Foundations and from Indust...

## Key facts

- **NIH application ID:** 9923502
- **Project number:** 3UM1HG008901-04S2
- **Recipient organization:** NEW YORK GENOME CENTER
- **Principal Investigator:** THOMAS P MANIATIS
- **Activity code:** UM1 (R01, R21, SBIR, etc.)
- **Funding institute:** NIH
- **Fiscal year:** 2020
- **Award amount:** $8,294,496
- **Award type:** 3
- **Project period:** 2019-04-30 → 2021-11-30

## Primary source

NIH RePORTER: https://reporter.nih.gov/project-details/9923502

## Citation

> US National Institutes of Health, RePORTER application 9923502, New York Center for Collaborative Research in Common Disease Genomics (3UM1HG008901-04S2). Retrieved via AI Analytics 2026-05-25 from https://api.ai-analytics.org/grant/nih/9923502. Licensed CC0.

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