MaLMIC Virtual Open Forum on Foundation Models and Multimodal AI in Brain Health – Forum, April 10, 2026

1024 607 MaLMIC - Machine Learning in Medical Imaging Consortium

Join the Machine Learning in Medical Imaging Consortium (MaLMIC) for an opportunity to network on machine learning

MaLMIC Virtual Open Forum on Foundation Models and Multimodal AI in Brain Health

This MALMIC Virtual Forum will explore how artificial intelligence and multimodal data are transforming the future of brain health and medical imaging. Dr. Ruogo Fang will present advanced multimodal AI frameworks—including digital twins and foundation models—that move beyond “one-size-fits-all” approaches to enable more precise, equitable care. Complementing this, Dr. Kuang Gong will highlight cutting-edge innovations in PET imaging, showcasing how foundation models, 3D diffusion techniques, and vision-language approaches can significantly enhance image quality for improved diagnosis and disease monitoring.

April 10th, 2026 
12:00 to 1:00 p.m. Eastern

Interested in joining? Please contact us.

MaLMIC Virtual Open Forum on Foundation Models and Multimodal AI in Brain Health

This MALMIC Virtual Forum will explore how artificial intelligence and multimodal data are transforming the future of brain health and medical imaging. Dr. Ruogo Fang will present advanced multimodal AI frameworks—including digital twins and foundation models—that move beyond “one-size-fits-all” approaches to enable more precise, equitable care. Complementing this, Dr. Kuang Gong will highlight cutting-edge innovations in PET imaging, showcasing how foundation models, 3D diffusion techniques, and vision-language approaches can significantly enhance image quality for improved diagnosis and disease monitoring.

April 10th, 2026 
12:00 to 1:00 p.m. Eastern

Interested in joining? Please contact us.

Ruogu Fang, PhD
Associate Professor, Pruitt Family Endowed Faculty Fellow in the J. Crayton Pruitt Family Department of Biomedical Engineering at the University of Florida

Dr. Fang’s research focuses on integrating AI and deep learning with neuroscience, with two main themes: AI-driven precision brain health and brain-inspired AI. She works on early Alzheimer’s detection, predicting treatment outcomes, and designing personalized interventions using multimodal medical imaging. As founder and director of the SMILE Lab, she develops advanced AI models to better understand, diagnose, and treat brain disorders using complex datasets.

Talk Title: Brain Digital Twins and Foundation Model

Talk Description: The synergy of artificial intelligence (AI) and multimodality data is unlocking new frontiers in brain health. This talk delves into multimodal AI models that transcend traditional “one size fits all” methodologies, which often result in misdiagnoses, suboptimal treatment outcomes, and healthcare inequities. Specifically, Dr. Fang will talk about how an advanced multimodal AI framework, including multimodal digital twins and foundation models, paves the way for precision medicine in brain health from the bottom-up and top-down approaches.

Kuang Gong, PhD
Assistant Professor, J. Crayton Pruitt Family Department of Biomedical Engineering at the University of Florida

Dr. Gong’s research interests are centered around the convergence of deep learning, medical imaging, and data science to enhance the diagnosis and treatment monitoring of various diseases, particularly Alzheimer’s disease (AD) and cancer. His work involves developing novel methodologies in medical physics-informed deep learning, leveraging prior information-guided network design, and applying clinical task-driven network training for more accurate and precise results.

Talk Title: Foundational Models for PET image quality enhancement

Talk Description: PET image quality enhancement is essential for better disease diagnosis and progression monitoring. In his talk, Dr. Gong will discuss recent results from his lab on foundation models for PET image quality enhancement via 3D diffusion models, vision-language models, and agentic approaches will be discussed.

Privacy Preferences

When you visit our website, it may store information through your browser from specific services, usually in the form of cookies. Here you can change your Privacy preferences. It is worth noting that blocking some types of cookies may impact your experience on our website and the services we are able to offer.

Click to enable/disable Google Analytics tracking code.
Click to enable/disable Google Fonts.
Click to enable/disable Google Maps.
Click to enable/disable video embeds.
Our website uses cookies, mainly from 3rd party services. Define your Privacy Preferences and/or agree to our use of cookies.