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Modeling and AI in Generic Drug Development 2025: AI and Quantitative Medicine – Presentations



    About

    Quantitative Medicine has long guided drug development by transforming biology into models, predictions, and decisions. Whether through pharmacometrics, systems pharmacology, or translational modeling, it has helped reduce uncertainty and increase precision across the drug lifecycle. Today, a new force is accelerating this transformation: Artificial Intelligence/Machine Learning. More than a buzzword, AI/ML approaches are becoming an indispensable extension of Quantitative Medicine—augmenting our ability to analyze massive, complex datasets, generate real-time insights, and simulate decisions at scale. In this session, we explore how AI is unlocking new possibilities for the entire lifecycle of drug development.

    Presentations

    Speaker Introductions
    Rajanikanth Madabushi, PhD
    Associate Director, Guidance & Scientific Policy at IO, OCP, OTS, FDA

    Digital Twins: What are They? How Can They Facilitate Drug Development?
    Adarsh Subbaswamy, PhD
    Assistant Professor, Center for Translational Medicine, UMB SOP

    AI-Driven Knowledge Management in PBPK Modeling: Challenges and Opportunities
    Vladmir Chupakhin, PhD
    Principal Scientist, Simulation Plus Inc.

    Role of AI/ML Approaches in New Drug Development and Evaluation
    Qi Liu, PhD, MStat, FCP
    Associate Director for Innovation & Partnership, OCP, OTS, FDA

    AI for Augmenting and Accelerating Computational Fluid Dynamics Predictions of Regional Lung Deposition
    Ross Walenga, PhD
    Senior Chemical Engineer, DQMM, ORS, OGD, FDA

    Using GenAI to Support Regulatory Applications and Product Lifecycle Management: Lessons Learned and Solutions
    Liang Zhao, PhD, MAS, MBA
    Professor & VC, Dept Bioengineering & Therapeutic Sci, SOP & SOM UCSF

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