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Seminar Series

VALIANT Deeper Dive

VALIANT Deeper Dive is a virtual seminar series that highlights recently published research aligned with the center’s mission in artificial intelligence and translational computational science. Each session features an invited author presenting an in-depth exploration of a recent publication. Talks emphasize the problem context, technical approach, key findings, and broader implications of the work, followed by moderated discussion and audience engagement.


Upcoming Seminars:

Apr. 28th: "Targeting Model Inversion from Generative Models"

Presented by Mingxing (Ethan) Rao

We invite you to join us for an engaging seminar with Mingxing (Ethan) Rao, a Ph.D. student in Computer Science at ÎåÒ»²è¹Ý¶ù. Ethan’s research explores the intersection of generative models, AI security, and privacy, with a focus on understanding how modern AI systems learn from—and potentially expose—the data they are trained on.

In this seminar, Ethan will present his latest work on Targeting Model Inversion from Generative Models, examining how sensitive training data may be reconstructed from large-scale generative models such as diffusion and flow-based architectures. This research sheds light on emerging risks related to data privacy, copyright, and model security, while offering new perspectives on how to identify and mitigate vulnerabilities in modern AI systems.

The seminar will be held in FGH 200 on April 28th from 1-2PM CST. Snacks will be provided. The seminar will also be available remotely via Zoom (access link will be sent out to all registrants on the day of the event). Don’t miss this opportunity to explore the cutting edge of AI security and generative modeling. Register now to secure your spot!

Previous Seminars:

Mengqi Wu

Mar. 18th: "Integrating Multimodal Imaging and Non-Imaging Data via Graph Learning"

Presented by Weifeng Yu

In this seminar, Weifeng presented Integrating Multimodal Imaging and Non-Imaging Data via Graph Learning, showcasing how advanced machine learning techniques can combine brain imaging and behavioral data to uncover new insights into neurodevelopment and mental health. This work highlighted the growing role of AI in advancing psychiatric research and improving our understanding of the human brain.

Weifeng Yu is a Research Assistant at the University of Virginia School of Data Science. His research explores how computational neuroimaging and AI-driven methods can deepen our understanding of brain connectivity, behavior, and psychiatric disorders.

Mengqi Wu

Feb. 24th: "Harmonizing Brain MRI Across Sites Without Paired Data"

Presented by Mengqi Wu

In this session Menqi presents his latest work on "Harmonizing Brain MRI Across Sites Without Paired Data", introducing UMH-a groundbreaking approach that overcomes traditional barriers in multi-site MRI harmonization by using an innovative image style-guided latent diffusion model. This method not only improves cross-site image alignment but also preserves critical biological features, paving the way for more robust AI diagnostic tools.

Mengqi Wu is a Ph.D. Candidate in Biomedical Engineering at UNC Chapel Hill. He conducts cutting-edge research in AI-driven neuroimaging harmonization, developing novel deep learning frameworks that enable large-scale, multi-site analyses vital for advancing diagnostics of neurodegenerative disorders.

Mengqi Wu

Feb. 3rd: "Distribution-Guided Multi-Tracer Brain PET Synthesis from Structural MRI with Class-Conditioned Weighted Diffusion"

Presented by Minhui Yu

In this session, Minhui presents her work on Distribution-Guided Multi-Tracer Brain PET Synthesis from Structural MRI with Class-Conditioned Weighted Diffusion. She will detail a novel normalized diffusion framework (NDF) that generates high-quality PET images across multiple tracers, addressing critical issues of cost, radiation exposure, and tracer availability. This cutting-edge approach leverages class-conditioned diffusion models and distributional constraints to ensure accurate and consistent image synthesis, with promising results validated on a large multi-subject dataset.

Minhui Yu is a Ph.D. candidate in Biomedical Engineering at UNC Chapel Hill. Her innovative research tackles key challenges in neurodegenerative disease diagnosis by synthesizing multi-tracer brain PET images from structural MRI data using advanced generative deep learning models.

Got Questions?

Contact Lianrui Zuo (lianrui.zuo@vanderbilt.edu) or Yihao Liu (yihao.liu@vanderbilt.edu).