Skip to main content

CAREER: Artificial Intelligence-Driven Framework for Efficient and Explainable Immunotherapy Design

NSF

open

About This Grant

Immunotherapy is a cancer treatment that uses the patient's own immune system to control tumor growth. Adoptive cell transfer of chimeric antigen receptor (CAR) T cells into cancer patients has revolutionized the treatment of blood cancers, demonstrating the power of synthetic signaling receptors for immunotherapy. Despite this tremendous promise, there is a need for better, highly diverse receptor systems for effective therapies to apply immunotherapy to solid tumors. There is a wide range of potential receptor design directions to engineer more potent immunotherapeutic cells. To address the combinatorial complexity of possible design solutions, computational tools and methods are vital for the continuous innovation and improvement of these therapies to make them safer, more effective, and tailored to individual patient needs. This project aims to develop a computational framework with a novel methodology that integrates knowledge from published scientific papers and databases with experimental data using large language models (LLMs) and graph neural networks (GNNs), to provide a tool that will enable transformative cancer immunotherapy treatment designs. This project includes outreach programs and educational storytelling videos to introduce future generations of engineers and scientists and the broader community to the field of synthetic biology, as well as curriculum development and student mentoring. In this project, a fully automated framework will be created that integrates knowledge-driven and data-driven artificial intelligence approaches to recommend the most effective immunotherapeutic cell designs. Specifically, prompting methods will be developed as part of the framework to enable efficient use of LLMs for reliably extracting knowledge facts and symbolic rules from scientific literature. These facts will be represented in the form of knowledge graphs that capture the knowledge about signaling networks within immunotherapeutic cells, connecting newly designed receptors or pathways with markers of important processes, such as cytotoxicity and stemness. Further, GNN architectures will be utilized when exploring and improving the knowledge graphs, as well as when explaining the dynamic behavior of signaling networks within the tumor microenvironment. This project will also develop methods for reliably identifying and resolving inconsistencies in knowledge graphs when studying intracellular signaling. This work will provide new AI algorithmic approaches that incorporate scientific facts and principles within learning and reasoning to ensure explainable and trustworthy predictions. The developed computational methods will be generalizable to other T cells and immune cells, thus equipping synthetic biologists with a framework to quickly identify and explain receptor or pathway designs that could lead to potent cellular behaviors. This award reflects NSF's statutory mission and has been deemed worthy of support through evaluation using the Foundation's intellectual merit and broader impacts review criteria.

Focus Areas

biologyeducation

Eligibility

universitynonprofitsmall business

How to Apply

Funding Range

Up to $225K

Deadline

2030-03-31

Complexity
Medium
Start Application

One-time $749 fee · Includes AI drafting + templates + PDF export

AI Requirement Analysis

Detailed requirements not yet analyzed

Have the NOFO? Paste it below for AI-powered requirement analysis.

0 characters (min 50)