Awardee OrganizationUNIVERSITY OF SOUTHERN CALIFORNIA
Description
Abstract Text
Project 1: Integration of Omic Data to Estimate Mediation or Latent Structures
Abstract
The omic era is upon us and population-based studies are moving rapidly to measure multiple types of data to
explore the underlying connection between risk factors and outcomes. Integration of data from complementary
avenues of research using novel statistical approaches will result in discoveries within each area of research,
probe the area between, and push innovation forward. Overall, this project focuses on the development of
statistical approaches for the integration of multiple omics data that are suspected, a priori, to act on a disease
or trait outcome via mediation or a latent structured model. The approaches span the analysis of studies with
multiple omic measures on the same individuals to summary statistics from omic data measured from multiple
studies. In Aim 1, we will develop a multi-omic causal inference test (CIT) to facilitate its application to large
multi-omic datasets measured on individuals to simultaneously model multiple risk factors and multiple
mediators. In Aim 2, we will develop an integrative model to estimate latent unknown clusters aiming to
incorporate multiple types of omic measures either measured cross-sectionally or at multiple time points to
jointly estimating subgroups relevant to the outcome of interest. In Aim 3, we will estimate joint causal effects
of intermediate factors or latent-outcome associations using summary statistics for multiple SNPs and multiple
intermediates. We will leverage methodological developments from other projects within the overall program
project and, using expertise and assistance from the computational and translation cores, we will develop
robust, computationally efficient, and user-friendly software for application to applied projects. Overall, these
methods will have a direct impact on applied investigations by facilitating a better understanding of potential
biological mechanisms driving underlying cancer etiology via identifying novel factors, estimating connections
between those factors, and identifying subgroups of individuals with potentially different associated
mechanisms.
Public Health Relevance Statement
Project 1: Integration of Omic Data to Estimate Mediation or Latent Structures
Project Narrative
This project focuses on the development of statistical approaches for the integration of multiple omics data that
are suspected, a priori, to act on a disease or trait outcome via mediation or a latent structured model. The
approaches span the analysis of studies with multiple omic measures on the same individuals to summary
statistics from omic data measured from multiple studies. These methods will have a direct impact on applied
investigations by facilitating a better understanding of potential biological mechanisms driving underlying
cancer etiology via identifying novel factors, estimating connections between those factors, and identifying
subgroups of individuals with potentially different associated mechanisms.
NIH Spending Category
No NIH Spending Category available.
Project Terms
AreaAutomobile DrivingBiologicalBiological MarkersBiologyCancer EtiologyColorectal CancerComplexComputer softwareDataData SetDevelopmentDiseaseDisease OutcomeEtiologyExposure toFAIR principlesGene ExpressionGenesGeneticGenomicsGerm LinesGoalsHeterogeneityIndividualInvestigationJointsMalignant NeoplasmsMalignant neoplasm of prostateMathematicsMeasurementMeasuresMediatingMediationMediatorMethodologyMethodsModelingMolecularMultiomic DataOutcomePathway interactionsPhenotypePopulationPopulation StudyProcessProteomicsResearchRiskRisk FactorsSpecific qualifier valueStatistical MethodsStructureSubgroupTechniquesTechnologyTestingThe Cancer Genome AtlasTimeTissuesTranslationscancer genomicsdata integrationdata reductionfeature selectiongenome wide association studyinnovationinstrumentinterestmetabolomicsmicrobiomemultidimensional datamultiple data typesmultiple omicsnovelphenomicspleiotropismprogramsstatisticstraittranscriptomicsuser friendly software
No Sub Projects information available for 5P01CA196569-09 9452
Publications
Publications are associated with projects, but cannot be identified with any particular year of the project or fiscal year of funding. This is due to the continuous and cumulative nature of knowledge generation across the life of a project and the sometimes long and variable publishing timeline. Similarly, for multi-component projects, publications are associated with the parent core project and not with individual sub-projects.
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Patents
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Outcomes
The Project Outcomes shown here are displayed verbatim as submitted by the Principal Investigator (PI) for this award. Any opinions, findings, and conclusions or recommendations expressed are those of the PI and do not necessarily reflect the views of the National Institutes of Health. NIH has not endorsed the content below.
No Outcomes available for 5P01CA196569-09 9452
Clinical Studies
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History
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