Discovery to Decision: Virtual Assays for Drug Target Ranking and Derisking

Augmenting Drug Discovery Pipelines with Mechanistic Insights Unlocked by Simulating Millions of Experiments in Turbine’s Virtual Lab

9

April

  • 3PM London / 10AM New York
  • Free
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Krishna Bulusu
VP of Product Innovation & Strategy

I am an established Healthcare AI leader with over 15 years of experience in academia and industry, specializing in the integration of data science into the drug discovery process to enhance patient outcomes through precision medicine. My leadership philosophy centers on empathy, which I consider essential for cultivating high-performing teams.

As VP of Product Innovation & Strategy at Turbine, I lead a team driving product vision and roadmap at the intersection of science, technology, and strategy to transform drug discovery and development. My role bridges long-term innovation with near-term delivery, shaping priorities, guiding products from concept to launch, and building partnerships across pharma, biotech, and academia. By combining Turbine’s Virtual Biology platform with lab-in-the-loop innovation, we aim to deliver solutions with meaningful scientific and commercial impact for patients.

In my previous role at AZ, I led a global data science team delivering innovation in multi-modal data integration and deep insights into disease and drug mechanisms, informing critical portfolio milestones and reducing data-to-decision timelines. We leveraged the power of GenerativeAI to amplify insights from structured data representations across the drug discovery and development journey. My team’s efforts ensured the back-translation of clinical insights into early discovery, informing target discovery and patient-selection hypotheses.

My work is supported by a robust record of publications and presentations in the field of Healthcare AI.I am an established Healthcare AI leader with over 15 years of experience in academia and industry, specializing in the integration of data science into the drug discovery process to enhance patient outcomes through precision medicine. My leadership philosophy centers on empathy, which I consider essential for cultivating high-performing teams. As VP of Product Innovation & Strategy at Turbine, I lead a team driving product vision and roadmap at the intersection of science, technology, and strategy to transform drug discovery and development. My role bridges long-term innovation with near-term delivery, shaping priorities, guiding products from concept to launch, and building partnerships across pharma, biotech, and academia. By combining Turbine’s Virtual Biology platform with lab-in-the-loop innovation, we aim to deliver solutions with meaningful scientific and commercial impact for patients. In my previous role at AZ, I led a global data science team delivering innovation in multi-modal data integration and deep insights into disease and drug mechanisms, informing critical portfolio milestones and reducing data-to-decision timelines. We leveraged the power of GenerativeAI to amplify insights from structured data representations across the drug discovery and development journey. My team’s efforts ensured the back-translation of clinical insights into early discovery, informing target discovery and patient-selection hypotheses. My work is supported by a robust record of publications and presentations in the field of Healthcare AI.

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Csilla Hegedűs
Senior Product Manager

Translational oncology scientist and scientific strategy leader with over a decade of experience integrating cancer genomics, mechanistic cell modeling, and biological insight to support target discovery, biomarker development, and precision oncology decision frameworks. Proven track record in translating complex multi-omics and computational outputs into biologically actionable insights and guiding cross-disciplinary teams across discovery and translational research initiatives. Experienced in bridging computational, experimental, and clinical perspectives to advance oncology research and therapeutic innovation.

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