NSF requires disclosure of AI tool usage in proposal preparation. Ensure you disclose the use of FindGrants' AI drafting in your application.
NSF
Label-free biomedical optical imaging (LBI) is a technology used to study tissues by measuring interactions between tissue and light. This CAREER project will link biological activity to the signals detected by LBI. The goal is to determine how biological changes, such as changes in how genes are expressed, affect the way light interacts with tissue. The research will create new artificial intelligence (AI) methods to map the relationship between gene activity and LBI. The results could lead to better tools for diagnosing disease, studying tissue health, and improving pathology. In addition, the project includes a strong educational plan to prepare future leaders in bioengineering and AI. New learning activities will be created for students and the public that combine biology and AI. These activities will be designed to improve public understanding of AI and prepare students for modern science and technology careers. Overall, this project supports national interests by advancing leadership in biotechnology, optics, and AI. A major knowledge gap exists in understanding how high-level biological changes influence interaction between light and tissue. The goal of this CAREER project is to establish a clear, measurable relationship between changes in gene networks and contrast observed in LBI. The research will measure tissue-wide gene expression patterns and determine how these patterns influence optical properties such as tissue fluorescence. First, the project will define how alterations in gene networks correspond to changes in LBI contrast across tissues. Second, new LBI image features and feature extraction algorithms will be developed to better represent transcriptomic signatures. Third, the relationship between gene expression and LBI will be incorporated into novel AI models to digitally analyze and classify tissues without chemical assays. This framework will help improve interpretation of optical imaging data and develop novel applications of AI in biotechnology. The project will advance biomedical imaging and AI by enabling rapid, non-destructive estimation of gene network activity and by establishing a general framework that can be extended to other optical methods and biological systems. 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.
Up to $625K
2031-05-31
Detailed requirements not yet analyzed
Have the NOFO? Paste it below for AI-powered requirement analysis.
One-time $749 fee · Includes AI drafting + templates + PDF export
EPSCoR CREST Phase I: Center for Post-Transcriptional Regulation
NSF — up to $7.5M
CREST Phase I: Center for Circadian Rhythmicity and Sleep Homeostasis
NSF — up to $7.4M
Institute for Foundations of Machine Learning
NSF — up to $6.5M
MIP: Biomaterials, Polymers, and Advanced Constructs from Integrated Chemistry Materials Innovation Platform (BioPACIFIC MIP)
NSF — up to $5.8M
A Shallow Drilling Campaign to Assess the Pleistocene Hydrogeology, Geomicrobiology, Nutrient Fluxes, and Fresh Water Resources of the Atlantic Continental Shelf, New England
NSF — up to $5.0M
BII: Predicting the global host-virus network from molecular foundations
NSF — up to $4.8M