U24CA264009
Cooperative Agreement
Overview
Grant Description
UCSC-BUCK Genome Data Analysis Center for the Genomic Data Analysis Network V2.0 - Abstract Tumor Heterogeneity -- The complex mix of tumor subclones, the cell-of-origin that first became transformed, the evolution of tumor subclones under selective pressures of the body and due to treatment, and the interplay of these cells with the tumor microenvironment (TME) -- contributes to the character, behavior, and mystery of tumors and is a key determinant of cancer progression and a patient’s response to therapy.
Large-scale genomics projects like the Cancer Genome Atlas (TCGA) and the Genome Data Analysis Network (GDAN) have revealed important characteristics and patterns from a multi-omics overview of various tumor types. However, it remains a mystery on how to maximize the use of these data to choose the best course of treatment for an individual patient.
The proposed GDAN will close this gap in knowledge by collecting clinical information and outcomes endpoints alongside the multiple omics platforms that will provide key linkages upon which to train supervised computational approaches. We propose to contribute our key competencies of pathway analysis, integrative machine-learning, mRNA-seq analysis, assessment of driving somatic mutations, and visualization of high-throughput datasets to serve the future GDAN Analysis Working Groups (AWGs) to achieve these goals.
We will collect and share widely a database of gene expression signatures that capture cell state information gleaned from the large collection of single-cell mRNA sequencing data such as from the Human Cell Atlas (AIM 1). In addition, we will contribute our existing, and novel extensions to, machine-learning approaches like AKIMATE to maximally use these signatures and others in combination with AWG-approved omics datasets as features to train accurate predictors of response for the GDAN’s studies like ALCHEMIST (AIM 2).
Our proposal will adapt the TumorMap to benefit weekly analysis and bolster the exploration and publication of results. Specifically, we will work with the group to create new maps that show the TME and TIC comparisons of the patient samples separately to help elucidate new important subtypes implied by the collected data (AIM 3).
As we have done for the past twelve years for TCGA and the GDAN, we propose to continue working closely with the consortium in these endeavors to significantly enrich our understanding of the molecular and cellular basis of tumor heterogeneity and its influence on cancer progression and treatment response.
Large-scale genomics projects like the Cancer Genome Atlas (TCGA) and the Genome Data Analysis Network (GDAN) have revealed important characteristics and patterns from a multi-omics overview of various tumor types. However, it remains a mystery on how to maximize the use of these data to choose the best course of treatment for an individual patient.
The proposed GDAN will close this gap in knowledge by collecting clinical information and outcomes endpoints alongside the multiple omics platforms that will provide key linkages upon which to train supervised computational approaches. We propose to contribute our key competencies of pathway analysis, integrative machine-learning, mRNA-seq analysis, assessment of driving somatic mutations, and visualization of high-throughput datasets to serve the future GDAN Analysis Working Groups (AWGs) to achieve these goals.
We will collect and share widely a database of gene expression signatures that capture cell state information gleaned from the large collection of single-cell mRNA sequencing data such as from the Human Cell Atlas (AIM 1). In addition, we will contribute our existing, and novel extensions to, machine-learning approaches like AKIMATE to maximally use these signatures and others in combination with AWG-approved omics datasets as features to train accurate predictors of response for the GDAN’s studies like ALCHEMIST (AIM 2).
Our proposal will adapt the TumorMap to benefit weekly analysis and bolster the exploration and publication of results. Specifically, we will work with the group to create new maps that show the TME and TIC comparisons of the patient samples separately to help elucidate new important subtypes implied by the collected data (AIM 3).
As we have done for the past twelve years for TCGA and the GDAN, we propose to continue working closely with the consortium in these endeavors to significantly enrich our understanding of the molecular and cellular basis of tumor heterogeneity and its influence on cancer progression and treatment response.
Funding Goals
NOT APPLICABLE
Grant Program (CFDA)
Awarding / Funding Agency
Place of Performance
Santa Cruz,
California
950641077
United States
Geographic Scope
Single Zip Code
Related Opportunity
Analysis Notes
Amendment Since initial award the total obligations have increased 269% from $412,872 to $1,523,829.
Santa Cruz University Of California was awarded
UCSC-Buck Genome Data Analysis Center for the Genomic Data Analysis Network v2.0
Cooperative Agreement U24CA264009
worth $1,523,829
from National Cancer Institute in September 2021 with work to be completed primarily in Santa Cruz California United States.
The grant
has a duration of 5 years and
was awarded through assistance program 93.394 Cancer Detection and Diagnosis Research.
The Cooperative Agreement was awarded through grant opportunity Genomic Data Analysis Network: Genomic Data Center (U24 Clinical Trial Not Allowed).
Status
(Ongoing)
Last Modified 8/20/24
Period of Performance
9/7/21
Start Date
8/31/26
End Date
Funding Split
$1.5M
Federal Obligation
$0.0
Non-Federal Obligation
$1.5M
Total Obligated
Activity Timeline
Subgrant Awards
Disclosed subgrants for U24CA264009
Transaction History
Modifications to U24CA264009
Additional Detail
Award ID FAIN
U24CA264009
SAI Number
U24CA264009-4234712223
Award ID URI
SAI UNAVAILABLE
Awardee Classifications
Public/State Controlled Institution Of Higher Education
Awarding Office
75NC00 NIH NATIONAL CANCER INSTITUTE
Funding Office
75NC00 NIH NATIONAL CANCER INSTITUTE
Awardee UEI
VXUFPE4MCZH5
Awardee CAGE
1CV82
Performance District
CA-19
Senators
Dianne Feinstein
Alejandro Padilla
Alejandro Padilla
Budget Funding
Federal Account | Budget Subfunction | Object Class | Total | Percentage |
---|---|---|---|---|
National Cancer Institute, National Institutes of Health, Health and Human Services (075-0849) | Health research and training | Grants, subsidies, and contributions (41.0) | $684,768 | 100% |
Modified: 8/20/24