# Computational Methods for Identification of Genetic Factors Affecting the Response to Drug Abuse

> **NIH NIH U01** · STANFORD UNIVERSITY · 2021 · $639,431

## Abstract

Project Summary/Abstract
Due to the increased morbidity and societal cost of drug abuse, identification of genetic factors affecting the
response to drugs of abuse (DOA) are of particular interest
and could provide potential novel targets for therapeutic development . However, a major challenge in biomedical
science is determining how genetic differences within a population affect the properties (i.e. phenotypes, traits)
of an individual. Using conventional methods, it often requires years of painstaking work to discover and
characterize a genetic variant that affects a given phenotypic response. Several years ago, we developed a
more efficient method for mapping genes to traits, called haplotype-based computational genetic mapping
(HBCGM).
because this will aid in identifying at risk populations
In an HBCGM experiment, a property of interest is measured in inbred mouse strains; and genetic
factors are computationally predicted by identifying the genomic regions where the pattern of genetic variation
correlates with the distribution of trait values among the strains. HBCGM analyses are completed much more
quickly than conventional genetic analysis methods. However, the methods used for experimental validation of
genetic factors have limitations and are time consuming.
This project will further develop computational methods that will enable genetic factors affecting many
important biomedical traits to be discovered and experimentally characterized. A high-throughput version of
HBCGM (HT-HBCGM) will be used to analyze 8,225 publicly available datasets, which measure 213,000
responses in panels of inbred mouse strains. We deploy a novel method that
increases genetic discovery
power by exploiting the redundancy present in the many datasets that examine similar responses. Novel
computational tools that facilitate the integrated analysis of genetic, transcriptional and metabolomic data will
also be developed. This includes
specialized metabolic networks (for brain and 3 other tissues) for
computationally identifying metabolomic changes that correlate with gene expression or genetic differences. To
stimulate other investigators to make genetic discoveries, all results and methods from this project will be
made fully available to the scientific community. These computational tools will be used to analyze customized
`multi-omic' (genetic, transcriptional, and metabolomic) datasets that measure: (i) fifteen responses of inbred
strain panels to four DOA (cocaine, methamphetamine, fentanyl, and nicotine); and (ii) corresponding DOA-
induced transcriptional and metabolomic changes in brain. Integrated analysis of this data will identify
genes/pathways affecting the response to DOA.
We then apply a high efficiency method for engineering
specific allelic changes into the genome of inbred strains, and the engineered lines are used to experimentally
test the effect of an identified genetic factor on the response to a DOA.

## Key facts

- **NIH application ID:** 10198889
- **Project number:** 5U01DA044399-05
- **Recipient organization:** STANFORD UNIVERSITY
- **Principal Investigator:** GARY A PELTZ
- **Activity code:** U01 (R01, R21, SBIR, etc.)
- **Funding institute:** NIH
- **Fiscal year:** 2021
- **Award amount:** $639,431
- **Award type:** 5
- **Project period:** 2017-09-01 → 2023-06-30

## Primary source

NIH RePORTER: https://reporter.nih.gov/project-details/10198889

## Citation

> US National Institutes of Health, RePORTER application 10198889, Computational Methods for Identification of Genetic Factors Affecting the Response to Drug Abuse (5U01DA044399-05). Retrieved via AI Analytics 2026-05-24 from https://api.ai-analytics.org/grant/nih/10198889. Licensed CC0.

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