Harnessing Molecular Drivers of Comorbidity for Precision Drug Discovery
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A critical factor in the successful development of drugs is identifying suitable targets that drive disease progression and developing therapies that effectively treat the disease while minimizing adverse effects.
In this webinar, Professor Jeffrey Skolnick will introduce POLYPHARM-AI, a suite of AI algorithms designed to identify common driver proteins shared across multiple comorbid diseases. He will also showcase its performance through benchmarking studies, applications in ovarian cancer cell lines and its capability to identify novel pain treatments.
We’re also excited to welcome Kevin Grady from Lonza, who will discuss how primary cells and optimized media systems can build advanced 2D and 3D predictive models, supporting preclinical and clinical workflows in drug discovery.
By attending this webinar, you will learn:
- How AI-driven tools can identify drug targets across comorbid diseases
- The role of predictive cell models in understanding pharmacokinetics and metabolism
- New approaches for tackling complex diseases and advancing drug discovery