NIH policy NOT-OD-25-132 prohibits the use of AI-generated text in grant applications that is not substantially modified by the applicant. All AI-drafted sections must be thoroughly rewritten in your own words before submission.
View full policyOD - NIH Office of the Director
ABSTRACT Medical devices, a critical component of healthcare infrastructure, play an essential role in clinical interventions and represent a significant portion of healthcare expenditure. The FDA specifically focuses on complex medical devices, encompassing a range of complexities from advanced materials and intricate mechanisms to software integration and combined products like device-drug or device-biologic combinations. Despite a streamlined regulatory pathway for these devices, ensuring their safety and efficacy remains a formidable challenge. This project aims to enhance the monitoring of complex medical devices in the post-market phase by integrating a wide array of data sources, including Cosmos, IQVIA, MAUDE, claims data, local EHRs at UTHealth, alongside unstructured clinical notes, social media, and device recall data. The project will develop a suite of Mixture-of-Expert (MoE) tools and corresponding open-source software designed for processing rich, ethically sourced multimodal data to facilitate their use in downstream predictive tasks like adverse event detection. Our MoE frameworks will 1) repurpose state-of-the-art pre-trained models from diverse modalities and aggregate these unimodal models as a series of experts; 2) learn modality-aware routing to synergize the modeling of heterogeneous modalities; and 3) co-design with ethical regularizations to promote multimodal privacy and fairness. These tools, featuring user-friendly APIs with comprehensive explanations, will be made accessible to the biomedical research community, enabling researchers not currently specializing in Al/ML to leverage these advanced tools in their medical device surveillance efforts. This careful ethics-multimodal co-design is crucial for identifying device functionality and patient safety issues through improved post-market surveillance.
Up to $2.0M
2026-09-21
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
Dynamic Cognitive Phenotypes for Prediction of Mental Health Outcomes in Serious Mental Illness
NIMH - National Institute of Mental Health — up to $18.3M
COORDINATED FACILITIES REQUIREMENTS FOR FY25 - FACILITIES TO I
NCI - National Cancer Institute — up to $15.1M
Leveraging Artificial Intelligence to Predict Mental Health Risk among Youth Presenting to Rural Primary Care Clinics
NIMH - National Institute of Mental Health — up to $15.0M
Feasibility of Genomic Newborn Screening Through Public Health Laboratories
OD - NIH Office of the Director — up to $14.4M
WOMEN'S HEALTH INITIATIVE (WHI) CLINICAL COORDINATING CENTER - TASK AREA A AND A2
NHLBI - National Heart Lung and Blood Institute — up to $10.2M
Metal Exposures, Omics, and AD/ADRD risk in Diverse US Adults
NIA - National Institute on Aging — up to $10.2M