『EP 79: Digital Twins and the AI Revolution in Healthcare with Andree Bates, Part 1』のカバーアート

EP 79: Digital Twins and the AI Revolution in Healthcare with Andree Bates, Part 1

EP 79: Digital Twins and the AI Revolution in Healthcare with Andree Bates, Part 1

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In Part 1 of this two-part conversation, Anastassia and Dr. Andrée Bates take the concept of digital twins from its industrial roots — NASA rockets and GE power plants — all the way into the human body. Andrée unpacks what a true clinical-grade digital twin actually requires (individuation, credibility evidence, uncertainty quantification, and regulator-aligned analytical roles), and why many things called "digital twins" in healthcare today are really just well-marketed predictive models. The conversation travels through clinical trials, rare disease drug development, AI-assisted drug repurposing, and lands in genuinely mind-expanding territory: brain cells powering server farms, a non-invasive headband restoring speech to paralyzed patients, and the bold thesis that AI alone is not enough — that medicine needs physics embedded into its models.Key Takeaways:A real digital twin has three parts: a physical reference (the human), a virtual representation, and a live data link that continuously updates — without all three, it's just a predictive modelSynthetic control arms are already FDA- and EMA-accepted in clinical trials, especially for rare diseases where putting patients in a placebo arm would be unethical[1]Clinical-grade digital twins require four properties: individuation, formal verification/validation for regulators, calibrated uncertainty quantification (not point estimates), and a regulator-aligned statistical analysis planThe FDA approved digital twins for clinical trials in late 2022AI alone is insufficient for drug development — despite ~$20 billion invested, no AI-discovered drug has reached market yet; physics-based modeling ("world models") is the missing layerAI excels at drug repurposing, demonstrated powerfully during COVID with baricitinib and atazanavir identified from existing approved drugs8,000 rare diseases exist, but only ~100 have treatments — AI-driven matching of existing drugs to rare disease profiles is a massively under-leveraged opportunityFull-body digital twins remain a decade+ away due to the complexity of organ-system interaction and computational cost — individual organ twins are mature, but integration is the hard problemGuest Bio — Dr. Andrée BatesDr. Andrée Bates is the Chairwoman, Founder, and CEO of Eularis, AI consultancy for the pharmaceutical and life sciences industry. She hosts her own podcast with over 220 episodes on AI in pharma. Chapters:00:00 The Emergence of Digital Twins in Medicine03:03 Understanding Digital Twins: Definition and Applications10:09 Digital Twins in Clinical Trials: A New Paradigm10:17 Dynamic Systems and AI in Drug Development39:53 Leveraging AI for Drug Repurposing41:38 Regulatory Landscape for AI and Digital Twins42:45 Exploring the Digital Twin Concept43:51 Regulatory Landscape and AI in MedicineHyperlinks:LinkedIn Dr. Andree BatersCorporate Website EularisAI in Pharma — search on Spotify/Apple Podcasts (220+ episodes)Anastassia Lauterbach - LinkedInFirst Public Reading, Romy, Roby and the Secrets of Sleep (1/3) First Public Reading, Romy, Roby and the Secrets of Sleep (2/3) First Public Reading, Romy, Roby and the Secrets of Sleep (3/3) AI Snacks with Romy and Roby@romyandroby “Leading Through Disruption”AI EdutainmentThe AI Imperative BookRomy & Roby Book
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