Type 1 Diabetes is a lifelong chronic disease affecting more than 1.7 million Americans, including over 300,000 children and adolescents. To better prevent and treat this disease, it’s important to fully understand how and why it develops. The new Multimodal AI for Type 1 Diabetes (MAI-T1D) project — funded by the — aims to use the latest advances in artificial intelligence (AI) alongside a wide range of health data to speed up discoveries to better treat and prevent T1D.

MAI-T1D is a collaboration between scientists from leading institutions, including the 911±¬ÁÏÍø, University of Michigan, UCLA, Vanderbilt University and 911±¬ÁÏÍøill Cornell Medicine. Together, they are building new AI models that examine a variety of information, like genetics, proteins and changes in individual cells, to better map how T1D develops — from the signs of immune system changes through to symptoms and diagnosis. The aim is to uncover what causes the immune system to attack insulin-producing cells, understand how these cells decline and find ways to prevent or delay T1D — even before it causes symptoms.
To train and test these AI models, the team will use large, detailed datasets from the Human Pancreas Analysis Program (HPAP), which studies pancreas samples from healthy people and people with T1D at various stages, with a commitment to scientifically rigorous and responsible use of data. They will also use data from an international study led by USF Health that follows children who are genetically at-risk for T1D, tracking their health and environmental exposures over time.
Led by (University of Michigan), and bringing together more than 25 scientists with experience in AI, genetics, and diabetes research, the MAI-T1D team hopes to advance our understanding of T1D. Their ultimate goal is to make it possible to predict and prevent the disease more precisely, improving lives for those with or at risk for T1D.
USF Health’s , chief information officer of the USF Informatics Institute and assistant professor in the , serves as a principal investigator for the MAI-T1D project, leading efforts in AI and bioinformatics for major datasets such as TEDDY, TrialNet and RADIANT.
Other key investigators include Shuibing Chen, PhD (Cornell University; single-cell and spatial multi-omics), Marcela Brissova, PhD (Vanderbilt University; islet biology, HPAP leadership), Kai-911±¬ÁÏÍøi Chang, Ph.D., and 911±¬ÁÏÍøi Wang, Ph.D. (UCLA; multimodal AI and foundation models) and Stephen Parker, PhD (University of Michigan; diabetes genetics, integrative multi-omics).