Integrating Computational and Experimental Models to Predict Toxicity of the Pancreas
Project Number5R21DK134931-03
Contact PI/Project LeaderGEORGE, UDUAK ZENAS
Awardee OrganizationSAN DIEGO STATE UNIVERSITY
Description
Abstract Text
PROJECT SUMMARY
The CDC SEARCH for Diabetes in Youth study found that Type I Diabetes (T1D) incidence increased by 1.8%
each year between 2002-2012, and Type II Diabetes (T2D) increased by 4.8%. The Environmental
Determinants of Diabetes in the Young (TEDDY) study has attributed a substantial burden of T1D and T2D to
environmental contaminants. Due to the increasing prevalence of diabetes and metabolic diseases (especially
among youth), computational models for developmental pancreatic toxicity are needed. Understanding how
multiple factors such as chemical structure, gene expression and target tissue cytotoxicity integrate and impact
pancreatic health is vital. However, an integrated analysis of multiple factors at multiple scales poses great
challenges due to the inherent complexity, high-dimensionality, uncertainty, and heterogeneity. Multilayer
networks have emerged as a novel methodology in network science that combines multiple networks, called
“layers”, into one mathematical object. Multilayer networks are able to represent multiple factors across multi-
scales for a rigorous computational analysis of their interactions. Thereby, uncovering novel relations between
key factors on a multi-scale. The overarching goal of this research is to create multilayer network models by
which we can predict the magnitude and mechanisms of pancreatic developmental toxicity based on chemical
structure in a zebrafish (Danio rerio) model. Aim 1 will build a Quantitative Structure-Activity Relationship
(QSAR) model to predict mechanisms of toxicity resulting from pharmacological and toxicological exposures in
the developing pancreas. The goal of Aim 1 is to utilize a multilayer network and topological clustering model to
predict the relationship between exposures and pancreatic developmental toxicity based on chemical structure.
Aim 2 will utilize multi-scale modeling to create an Adverse Outcome Pathway (AOP) using molecular,
structural, and pathological criteria for pancreatic developmental toxicity. The goal of Aim 2 is to characterize
the processes by which exposures may disrupt pancreas development and early diabetic pathogenesis. We
will develop a rigorous predictive model that can be used to better inform a priori testing and expected
outcomes of small molecules in the context of pancreatic developmental diseases, and we will construct a
framework to connect peroxisome proliferator-activated receptor (PPAR) modulation (pharmacological &
toxicological) with aberrant pancreatic development and early function.
Public Health Relevance Statement
PROJECT NARRATIVE
Pediatric diabetes has been steadily increasing in recent decades by far greater rates than can be predicted by
diet and lifestyle alone. This research utilizes computational modeling to characterize how exposures to
pharmacological or toxicological agents during development can impair pancreatic organogenesis and
potentially predispose individuals to diabetes later in the lifecourse. Here, we employ a rigorous multilayer
network and topological clustering approach, rather than simple regression, to build predictive quantitative
structure-activity relationship (QSAR) models and adverse outcome pathways (AOPs) with broader
toxicological translation.
National Institute of Diabetes and Digestive and Kidney Diseases
CFDA Code
847
DUNS Number
073371346
UEI
H59JKGFZKHL7
Project Start Date
15-February-2023
Project End Date
31-December-2025
Budget Start Date
01-January-2025
Budget End Date
31-December-2025
Project Funding Information for 2025
Total Funding
$164,201
Direct Costs
$112,500
Indirect Costs
$51,701
Year
Funding IC
FY Total Cost by IC
2025
National Institute of Diabetes and Digestive and Kidney Diseases
$164,201
Year
Funding IC
FY Total Cost by IC
Sub Projects
No Sub Projects information available for 5R21DK134931-03
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.
No Publications available for 5R21DK134931-03
Patents
No Patents information available for 5R21DK134931-03
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 5R21DK134931-03
Clinical Studies
No Clinical Studies information available for 5R21DK134931-03
News and More
Related News Releases
No news release information available for 5R21DK134931-03
History
No Historical information available for 5R21DK134931-03
Similar Projects
No Similar Projects information available for 5R21DK134931-03