How AI is Transforming Life Sciences: Panel Discussion | TiEcon2024

00:24:40
https://www.youtube.com/watch?v=1dOVcp_cFmo

الملخص

TLDREl video presenta un panel de discusión sobre el impacto de la inteligencia artificial (IA) en las ciencias de la vida, enfocado en cómo las empresas están adoptando y adaptando esta tecnología para mejorar el desarrollo de medicamentos y otros procesos de salud. Los expertos, provenientes de distintas áreas del sector, comparten sus perspectivas sobre los desafíos que enfrentan y las oportunidades que ven al usar IA. Se destaca que, aunque la IA tiene el potencial de revolucionar la industria al reducir los tiempos de desarrollo y mejorar el acceso a tratamientos, todavía existen desafíos significativos en términos de integración en flujos de trabajo clínicos, regulación, y generación de confianza en los procesos. Un enfoque prudente y medir los riesgos son esenciales antes de una implementación generalizada. Además, se exploran ideas sobre cómo la colaboración entre tecnología y expertos en salud es crucial para introducir mejoras significativas en el sector.

الوجبات الجاهزة

  • 🤖 La IA ofrece oportunidades revolucionarias en ciencias de la vida.
  • ⚖️ La gestión de riesgos es primordial al implementar IA.
  • ⏱️ Acortar el tiempo de desarrollo de medicamentos es clave.
  • 📈 La IA puede transformar los modelos de negocio y procesos.
  • 🚦 La confianza y seguridad en modelos de IA es crucial.
  • 🔄 La integración de IA requiere cambios organizativos significativos.
  • 🧠 La colaboración entre expertos en tecnología y salud es esencial.
  • 🌍 La IA busca ser accesible y escalable globalmente.
  • 📄 Los procesos regulatorios actuales son un obstáculo.
  • 🧬 La IA facilita la personalización del tratamiento.

الجدول الزمني

  • 00:00:00 - 00:05:00

    Tarun Matur, CTO de Indigene, modera un panel sobre la aplicación de la IA en el sector de las ciencias de la vida. Los panelistas incluyen a Jeremy Zang de Gilead, Michelle Rorer, y Priya Abani de AliveCor. Se discuten los desafíos y oportunidades de integrar la IA en sus respectivos campos, desde el desarrollo de fármacos hasta la regulación y los dispositivos médicos. La conversación inicial se centra en cómo la IA puede transformar estos procesos, con Jeremy destacando la importancia de entender la integración de la IA en la toma de decisiones de desarrollos farmacéuticos costosos.

  • 00:05:00 - 00:10:00

    Jeremy Zang continúa explicando cómo integrarse con colaboradores importantes como OpenAI y Anthropic es crucial. Michelle Rorer, desde el lado regulatorio, señala que los trámites aún son en gran parte en formato 'papel electrónico', lo que genera ineficiencias en el desarrollo y aprobación de medicamentos. Destaca la oportunidad de un proceso donde un medicamento pueda estar disponible inmediatamente después de la validación de datos clave, contrastando con el plazo actual que puede tomar años.

  • 00:10:00 - 00:15:00

    Priya Abani de AliveCor habla de integrar AI en la medicina personalizada, enfatizando un enfoque cauteloso al implementar soluciones. Explica cómo AliveCor utiliza IA para crear herramientas que ayudan en el cuidado cardiológico remoto. Priya subraya la importancia de ganar la confianza del paciente mediante un enfoque gradual y medido, integrando tecnología avanzada de manera responsable.

  • 00:15:00 - 00:24:40

    El panel concluye con una discusión sobre cómo las startups pueden impactar el sector. Jeremy Zang menciona el desafío en encontrar pacientes adecuados para ensayos clínicos, mientras Michelle Rorer y Priya Abani destacan la importancia de soluciones que integren investigación clínica en la atención médica y enfoques centrados en la asequibilidad global. El panel enfatiza que la gestión de riesgos es crítica en este espacio y que la IA tiene el potencial de transformar significativamente la industria científica de vida.

اعرض المزيد

الخريطة الذهنية

Mind Map

الأسئلة الشائعة

  • ¿Cuáles son los principales desafíos al incorporar IA en las ciencias de la vida?

    El uso de la IA está enfrentando desafíos como la integración en flujos de trabajo clínicos, la evaluación de riesgos, y la validación de sus resultados en un entorno altamente regulado.

  • ¿Para qué se está utilizando la IA actualmente en las ciencias de la vida?

    La IA está siendo utilizada para mejorar la investigación clínica, desde el descubrimiento de fármacos hasta la personalización del tratamiento y la eficiencia de los ensayos clínicos.

  • ¿Qué precauciones deben tomarse al implementar modelos de IA en el ámbito clínico?

    El uso de grandes modelos de lenguaje debe manejarse con precaución para asegurar que no comprometa la seguridad del paciente y que cumpla con las regulaciones.

  • ¿Cuáles son las oportunidades más emocionantes del uso de IA en ciencias de la vida?

    Las oportunidades incluyen la reducción del tiempo de llegada al mercado de los medicamentos, la mejora de los procesos regulatorios, y el uso de IA para la terapia personalizada y la predicción de enfermedades.

  • ¿Por qué es tan importante generar confianza en las soluciones de IA?

    La confianza es un factor crucial que requiere que las soluciones de IA sean seguras, efectivas, y que no perjudiquen la seguridad del paciente antes de ser implementadas a gran escala.

  • ¿Cómo están las empresas integrando de manera segura la IA en sus procesos?

    Las empresas están adoptando un enfoque medido, probando la IA en pequeños ciclos y evaluando cuidadosamente los resultados antes de implementarla a gran escala, priorizando la seguridad.

  • ¿Qué implica integrar IA en flujos de trabajo tradicionales de ciencias de la vida?

    El cambio organizativo es esencial para integrar la IA, requiriendo un replanteamiento de procesos y la colaboración entre expertos en dominios y tecnología.

  • ¿Qué metas tienen las empresas a largo plazo al usar IA en sus productos y servicios?

    La personalización y la escalabilidad global son algunas de las metas que se proponen las empresas para mejorar la accesibilidad a la atención sanitaria.

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التمرير التلقائي:
  • 00:00:02
    [Music]
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    so now we move from patient care to Life
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    Sciences to understand how the
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    Enterprises in the Life Sciences sector
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    what are they doing about AI so we've
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    picked a panel first of all tun matur is
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    the CTO of indigene and he's kindly
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    agreed to moderate the panel we have uh
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    Jeremy Zang from Gilead he brings the
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    length of uh the clinical research drug
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    development to this discussion uh we
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    have uh Michelle rorer she brings the
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    regulatory lens you know when I was
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    asking Michelle what she's most
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    passionate about she said it takes too
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    long from the time we realize we have a
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    medicine to the time we dose the first
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    patient I want to cut that time and I
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    want to see how AI can help us cut that
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    time so that's her passion and finally
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    priia Priya is a CEO of alive core so
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    she brings both the Enterprise lens and
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    as well as what alive core is doing to
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    incorporate AI into their products and
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    solutions so uh tarun matur uh will
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    moderate the session he's right behind
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    me I'm really excited to be able to
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    engage with a really distinguished panel
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    of experts and our topic is of course
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    one that's on the top of all of our
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    minds we've seen it throughout the
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    various sessions these couple of days um
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    my name is teron Mo I'm the chief
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    technology officer for indig
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    and uh so our company is a 25-year-old
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    organization we exclusively work in the
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    Life Sciences space Enterprise Life
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    Sciences to be more specific and we are
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    primarily a services and solutions
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    company about 6,000 is employees 40% of
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    our company are domain experts so
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    clinicians pharmacists um other uh
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    business experts and we have heavy
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    technology expertise as well now with
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    the Gen revolutions happening we we
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    recognized a few years ago this shift in
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    Opportunity that's happening with geni
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    and I can say from the indigene side we
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    actually went through a substantial
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    reorganization within the company to
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    really capitalize on that intersection
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    of domain and technology and so we've um
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    rebuilt our teams we we've changed the
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    processes we you know sdlc for familiar
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    with software development life cycle
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    we've actually rebuilt that thinking
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    about how do I fold in domain experts
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    differently and we started from prompts
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    to we heard retrieval augmentation and
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    today is all about agents and we've
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    heard a couple of talks about the power
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    of Agents so U we've seen a lot of
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    really amazing opportunities from the
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    services uh side of the business on what
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    you can do from Clinical Research
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    through medical and Regulatory writing
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    and submission all the way through
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    commercialization and postc
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    commercialization activities I'm I'm
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    honored to have such a fantastic panel
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    of experts here who really know this
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    space inside and out and I want to make
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    sure that we really can get great
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    advantage of their time so what'll do is
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    maybe we'll dist off the discussion if
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    each of you then can introduce yourself
  • 00:03:00
    while we talk about the uh The Prompt
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    but let's let's start off with really
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    from an entrepreneur and innovator lens
  • 00:03:08
    within your functions in your space What
  • 00:03:10
    are some of the big challenges that
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    you're seeing and what are some of the
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    opportunities and maybe they're the same
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    thing right opportunities come from
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    challenges but maybe we can start from
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    from uh that discussion and maybe you'll
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    follow the the drug life cycle maybe
  • 00:03:24
    Jeremy I'll start with you and look at
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    from the clinical side of things um
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    maybe you can tell us bit about yourself
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    and your function and the opportunities
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    and challenges that you're seeing in
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    your your role sure and yeah thank you
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    so much tan and avanish for inviting me
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    um so I lead drug uh drug Discovery and
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    development uh from an AI perspective at
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    Gilead um we a medium-size Pharma of
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    about $27 billion of Revenue um and by
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    far like if you're in this space you
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    know about eo's law which means that the
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    ROI of drug R&D is trending towards like
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    negative so so AI I think is like one of
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    the things that can potentially turn
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    this around like there was a blip during
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    covid where the ROI went up um and there
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    was a famous story that fiser claimed
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    that they developed their drug using AI
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    the reality is um and I think the last
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    uh speaker said it really well the AI is
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    quickly not becoming that much of a
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    differentiator um I think even at Gilead
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    what we're seeing is that the key to
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    providing value and one of the biggest
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    challenges that we face um especially
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    when I I speak to startups in this space
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    like pretty much weekly I think the key
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    differentiator that I see is the ones
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    that really understand how to address
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    the challenge of integrating the AI into
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    how decision- making actually happens
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    for like these billion dooll drug
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    development programs are the ones that
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    really get like a second look from us or
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    even like a CO a partnership or a
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    co-design opportunity um the ones that
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    we tend to skip over are the ones who
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    try to lead too much with hey we have
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    like some AI special secret sauce um but
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    since we partner with like open Ai and
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    anthropic we know that that's probably
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    not really the case especially for a
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    really small and early startup so any
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    any any you know group of entrepreneurs
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    that really understands like how to
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    actually integrate into the clinical
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    workflows and also decision decision-
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    making and development is really the
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    ones that are actually addressing the
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    challenges so that's so that's
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    interesting for from a business side of
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    of the view this technology enablers are
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    one thing so certainly familiar with the
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    anthropic and open eye so we're seeing
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    powerful technology enablers um then the
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    change management aspect so for example
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    we can go to maybe gp4 and through
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    clever prompting and Rag and agents make
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    it do claims right uh or try to identify
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    new claims but from a change management
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    and Regulatory perspective are there
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    certain challenges or roadblocks in
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    terms of establishing The credibility or
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    trust that you see from your function um
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    along those
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    lines yeah maybe I can answer it and
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    actually I think Michelle probably has a
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    really good followup to this um you're
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    absolutely right I think one of the
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    biggest challenges in a really highly
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    regulated space is um our threshold for
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    risk is is quite High um so if we see
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    something that's um potentially or
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    actually quite low like if we see see
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    something that is even has a chance of
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    impacting patient safety it's just
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    completely unacceptable to use um which
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    makes it very difficult to trust large
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    language models in a vacuum for any kind
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    of um design of a clinical study or
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    patient you know research angle making
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    product claims about what drugs can do
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    um everything is augmentation um and I
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    think that's another approach like I
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    highly recommend people take is to
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    approach it from an augmentation
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    perspective um and I I really think that
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    we will almost never reach a state where
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    a large language model can perfectly
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    prescribe um like how to run a program
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    because there just too much risk
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    associated with patients Michelle yeah
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    Michelle it's a great segue to you if
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    you can maybe introduce yourself thanks
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    hi good morning good afternoon everyone
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    Michelle roar I come to from jentech Ro
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    where I head up development regulatory
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    um we can talk at length about the
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    challenges of AI use in a large Pharma
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    and there are also an abundant number of
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    opportunities but if I could take you
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    into my world of regulatory for a minute
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    a key two key challenges that I would
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    highlight um for you um did you know
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    know that by and large drugs are
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    developed and reviewed with Regulators
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    still in more or less a paper format now
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    it is an electronic paper format but we
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    have to create large volumes of um
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    Consolidated PDFs that are linked of
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    course electronically and then the
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    regulatory reviewers at the different
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    countries and we operate in excess of
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    150 countries all review these large um
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    electronic
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    dossier that's a real reality for us
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    which means that those dossier that are
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    electronic paper need to be
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    written um and now of course we can we
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    can leverage generative Ai and
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    structured content management to write
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    those dossier um but the
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    opportunity um is is really large um in
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    part because of a stark
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    reality and I want to take you into a
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    world where you all pretend that you are
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    innovators at a biotech or at a large
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    Pharma and you have a drug that you're
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    really excited about that you've been
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    developing you've been running it
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    through the phase one phase two and
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    phase three trials and you're at the
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    point where you have pivotal trial data
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    now let's just pretend that this trial
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    data set is a large data set said maybe
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    upwards of a th000 patients maybe 2,000
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    patients and you're operating in a
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    disease where there is no drug there is
  • 00:09:08
    an unmet medical need and you're sitting
  • 00:09:11
    in the room and we're the review team
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    and we're sitting in the room when we
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    unblind that
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    data and the data is very clear this
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    product works and it works like Gang
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    Busters let's just pretend that it saves
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    lives people live if you get the treated
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    treatment or they die if they don't you
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    know that
  • 00:09:36
    day that you have a
  • 00:09:39
    drug you are
  • 00:09:42
    probably approximately 6 months away
  • 00:09:45
    from submitting that data to regulators
  • 00:09:49
    and then Regulators will review that
  • 00:09:50
    data for another
  • 00:09:52
    year but you know that day you have a
  • 00:09:55
    drug this is our inefficient process
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    that Jeremy alluded to the opportunity
  • 00:10:02
    is that the day after that unblinding in
  • 00:10:06
    the world of using Tech from both the
  • 00:10:09
    innovator side as well as the regulator
  • 00:10:12
    side that the next day you have a drug
  • 00:10:15
    that's available for patients and we
  • 00:10:17
    will be there someday but we're not
  • 00:10:20
    there today because we are drowning in a
  • 00:10:24
    paper process that is regulated and
  • 00:10:28
    expected
  • 00:10:31
    so there's a a lot of daylight between
  • 00:10:34
    the opportunity and the challenge but I
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    do believe um that together because of
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    the inefficiencies of the process are
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    creating bottlenecks both at the
  • 00:10:44
    regulator side as well as the sponsor
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    side in terms of having an business
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    models that are are profitable and can
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    sustain The Innovation that the
  • 00:10:56
    dissatisfaction is rising to a level
  • 00:10:59
    where we will see breakthroughs and that
  • 00:11:01
    there will be more experimentation to
  • 00:11:03
    lead us to the world of when we know we
  • 00:11:05
    have a drug it will be available for
  • 00:11:08
    patients in a very short time window and
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    now I want to introduce you to my
  • 00:11:13
    colleague priia who has a really
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    exciting company with um a patient
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    centered approach just keep I could just
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    keep listening to all of you seriously
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    um hi everybody I'm priia abani CEO of
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    live core uh been here a little bit over
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    4 and a half years came from Tech so I
  • 00:11:30
    came from the Dark Side um and uh
  • 00:11:33
    strongly believe in this intersection of
  • 00:11:35
    healthcare and Tech because I think we
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    all know the challenges that we are
  • 00:11:38
    facing including some of what was
  • 00:11:40
    mentioned right now and that's not just
  • 00:11:42
    for drug delivery and Drug creation it's
  • 00:11:44
    also for devices it's also for AI it's
  • 00:11:47
    the same process that we all go through
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    of creating something that we know is
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    going to change the lives of millions of
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    people but then having waiting for those
  • 00:11:56
    processes to unfold and sometimes many
  • 00:11:58
    many years go by before actually
  • 00:12:00
    patients can benefit from it so a little
  • 00:12:03
    bit about aive cod we're a health tech
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    company we are devoted to the
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    advancement of remote cardiological care
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    and just from our Journey's point of
  • 00:12:12
    view we our founder founded the company
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    like about I think 11 years back I'm
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    losing track of time now because years
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    are just flying by this is the longest
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    I've been in one job by the way um and I
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    feel like I'm just getting started but
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    um we started off with the single lead
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    ECG device we went to a six lead ECG
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    device we're now in the process of going
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    through clearance of a 12 lead device
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    that can be used from home uh but what
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    is changed in the meantime is we have
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    been doing AI way before it was school
  • 00:12:41
    so um we had like you know three
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    determinations uh for those of you who
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    know something about the heart we had
  • 00:12:47
    arhythmia so atrial fibrillation Brady
  • 00:12:50
    cardia Taki cardia then we basically
  • 00:12:52
    looked at another lead and we said we
  • 00:12:54
    can do more things so we started doing
  • 00:12:57
    cue prolongation detection we started
  • 00:12:59
    doing sinus rhythms we are now looking
  • 00:13:01
    at atrial flutter and then with the 12
  • 00:13:04
    lead of course we want to expand that
  • 00:13:06
    the reason I'm saying this is this is
  • 00:13:08
    clinical Ai and that's the only way it's
  • 00:13:11
    going to be built it's not going to be
  • 00:13:12
    algorithmic anymore some things are okay
  • 00:13:14
    to be algorithmic but the kinds of uh
  • 00:13:17
    data that we can feed to DNN right now
  • 00:13:20
    there is no human possibility for
  • 00:13:22
    anybody even like a whole set of human
  • 00:13:24
    beings to consume that and train
  • 00:13:26
    themselves to create that kind of
  • 00:13:28
    prediction um and that's something we
  • 00:13:30
    all have to understand so from my point
  • 00:13:31
    of view I see nothing but opportunity
  • 00:13:34
    now of course generative AI is the new
  • 00:13:37
    buzz word we all like it we all
  • 00:13:39
    understand it but we have been very
  • 00:13:40
    measured right so the first thing we did
  • 00:13:42
    is we took um I want say chat GPT but we
  • 00:13:46
    took open AI you know GPT version
  • 00:13:49
    something put a rapper around it trained
  • 00:13:51
    it only to address cardiological needs
  • 00:13:55
    so it's right now sitting there as a
  • 00:13:57
    Bart in some of our device and some of
  • 00:13:59
    our subscriptions where the patient can
  • 00:14:01
    go and say hey my heart I'm having
  • 00:14:03
    palpitations I drank water today and I'm
  • 00:14:06
    doing this tomorrow is this okay or what
  • 00:14:08
    am I feeling do I have a blood pressure
  • 00:14:10
    issue Define atrial tribulation for me
  • 00:14:13
    so it's sitting and doing something very
  • 00:14:14
    simple right now we're watching how
  • 00:14:17
    people are using It ultimately we do
  • 00:14:20
    think this will become a coach because
  • 00:14:22
    right now in our system we have human
  • 00:14:23
    coaches right and we of course have
  • 00:14:25
    cardiologists which I frankly I don't
  • 00:14:27
    think will'll ever be replaced uh
  • 00:14:29
    hopefully they can use all these tools
  • 00:14:31
    to augment and just get more efficient
  • 00:14:33
    and better uh but I think that human
  • 00:14:35
    coach element can probably be augmented
  • 00:14:38
    with an AI coach and that's what we are
  • 00:14:41
    doing right now so it's it's a step by
  • 00:14:42
    step you're not going wild and saying
  • 00:14:44
    I'm going to push this out there you
  • 00:14:46
    know in its full form because I don't
  • 00:14:48
    know what the definition of the full
  • 00:14:49
    form is and because we are already
  • 00:14:52
    training people to start using devices
  • 00:14:56
    in the first place to start monitoring
  • 00:14:58
    thems eles you can't throw like an
  • 00:15:01
    extreme thing at them just because the
  • 00:15:03
    tech industry thinks it's cool and this
  • 00:15:05
    is from a person who used to work on
  • 00:15:07
    Alexa which was all AI right so even I
  • 00:15:10
    understand the measured approach uh and
  • 00:15:12
    then how do you train but most
  • 00:15:15
    importantly win the trust of your
  • 00:15:17
    customer and the patient step by step to
  • 00:15:21
    ultimately take them to where you know
  • 00:15:23
    we all think they should be at so um I
  • 00:15:26
    mean it's a very exciting world right
  • 00:15:28
    now Hospital are running at Major you
  • 00:15:30
    know really thin margins we don't have
  • 00:15:33
    enough resources enough Physicians
  • 00:15:35
    there's like one cardiologist per 10,000
  • 00:15:37
    population in the United States um we
  • 00:15:39
    don't have enough nurses as we all know
  • 00:15:41
    we don't have enough administrative
  • 00:15:42
    staff U I mean how is this going to work
  • 00:15:45
    especially for a aging population so I
  • 00:15:48
    think AI is here to stay and it is going
  • 00:15:50
    to be a roll out some people will be
  • 00:15:52
    fast some people will be slow but the
  • 00:15:54
    patient has to accept it the system has
  • 00:15:56
    to accept it so that's kind of my
  • 00:15:59
    impression great thanks for and what I'm
  • 00:16:01
    hearing is and a common theme is that
  • 00:16:03
    the significant opportunities we see
  • 00:16:06
    were focused on getting AI into the
  • 00:16:08
    hands whether it's patients and
  • 00:16:09
    caregivers like you're talking about
  • 00:16:10
    priia or in the business how do I get
  • 00:16:12
    the right medicines to the right
  • 00:16:14
    patients faster right it's obviously
  • 00:16:15
    good for everybody at the same time
  • 00:16:17
    we're managing risks and we're trying to
  • 00:16:18
    figure out how to mitigate that I'm
  • 00:16:20
    Wonder within your roles have you seen
  • 00:16:23
    have there been certain heris or
  • 00:16:24
    approaches that okay we're going to be
  • 00:16:26
    launching gen we're going to try using
  • 00:16:28
    it in some way but here's a a measured
  • 00:16:29
    methodology for how we measure risks so
  • 00:16:32
    that we can make decisions and I'll tell
  • 00:16:33
    you from our our perspective we haven't
  • 00:16:35
    found a workbench for building gen
  • 00:16:38
    applications that infuses actual prompt
  • 00:16:41
    evaluation and testing Frameworks at a
  • 00:16:43
    sophisticated level right we've had to
  • 00:16:44
    build our own at indene but in each of
  • 00:16:47
    your organizations as you've been in
  • 00:16:48
    this geni journey have you started
  • 00:16:50
    tackling this problems about folding in
  • 00:16:52
    issues or un responsible ethical safety
  • 00:16:55
    and risk into your workflow and
  • 00:16:56
    processes maybe you can speak a bit
  • 00:16:57
    about that and Michelle you started off
  • 00:17:00
    Jeremy you're about to go the mic so you
  • 00:17:01
    start Jeremy yeah I guess we'll follow
  • 00:17:03
    the order so your spot on like I think
  • 00:17:06
    one of the biggest challenges is you
  • 00:17:07
    know you see a whole bunch of very
  • 00:17:10
    interesting Solutions um everything from
  • 00:17:13
    how to prescreen patients better lead
  • 00:17:15
    generation um how to design clinical
  • 00:17:17
    trials how to find patients through
  • 00:17:20
    terabytes of medical claims and EMR I
  • 00:17:23
    think the common challenge is well how
  • 00:17:24
    do you evaluate the effectiveness of
  • 00:17:26
    that solution and as well as the safety
  • 00:17:28
    um so internally we've tried to develop
  • 00:17:31
    adversarial challenges to multiple
  • 00:17:33
    different types of llms um we Implement
  • 00:17:36
    those challenges whether it's for
  • 00:17:37
    summarization extraction or whatever the
  • 00:17:40
    vendor is trying to do um but you're
  • 00:17:42
    right like if somebody could just come
  • 00:17:43
    up with something like almost every
  • 00:17:45
    single large Enterprise would be on
  • 00:17:46
    board immediately um to some sort of
  • 00:17:48
    like useful framework for adversarial
  • 00:17:50
    challenges for NLP um it would just see
  • 00:17:53
    so much usage um in a vacuum I know not
  • 00:17:56
    just at Gilead but I've You Know spoken
  • 00:17:58
    to colleagues at NCH and uh astroica for
  • 00:18:00
    example everybody is trying to develop
  • 00:18:02
    those Frameworks due to the risky nature
  • 00:18:04
    of what we do right so sure yeah you can
  • 00:18:08
    really we have ai being embedded
  • 00:18:10
    throughout the drug development
  • 00:18:11
    Continuum all the way to drug Discovery
  • 00:18:13
    to um protein engineering or small
  • 00:18:17
    molecule engineering um to decision
  • 00:18:19
    support like how do you make sure that
  • 00:18:22
    you're making the right bets in your
  • 00:18:24
    portfolio um to designing the protocols
  • 00:18:28
    um here AI is competing with Scientists
  • 00:18:31
    who always want more
  • 00:18:32
    data and so designing a protocol that
  • 00:18:35
    just collects enough data um to doing
  • 00:18:38
    things that probably you all are quite
  • 00:18:40
    well aware of like um translation of
  • 00:18:44
    informed consense um a few years ago we
  • 00:18:46
    used to have to have a person translate
  • 00:18:48
    into the multiple languages where we run
  • 00:18:51
    a clinical trial but today we can do
  • 00:18:53
    that um using a bot um so there's a the
  • 00:18:57
    ho there's a host of bis for for AI or
  • 00:19:00
    large language models generative AI or
  • 00:19:03
    technology Bots to be used throughout
  • 00:19:05
    the Continuum and I I would say that the
  • 00:19:08
    interest from the industry is at an
  • 00:19:09
    all-time high um because the the ROI
  • 00:19:14
    generally is declining and and that's
  • 00:19:16
    due to the increasing costs and
  • 00:19:19
    complexity of operating in this
  • 00:19:22
    space yeah just I I I agree with
  • 00:19:25
    everything that's being said but just to
  • 00:19:27
    add to that right ethical so security
  • 00:19:30
    privacy consent um for us in our case
  • 00:19:34
    getting data from a vast majority of
  • 00:19:37
    people who look different from each
  • 00:19:40
    other um you know making sure we do that
  • 00:19:42
    like when we train U you know a DNN on 1
  • 00:19:46
    million ECGs you don't want it all to be
  • 00:19:49
    from the same zip code from Bay Area
  • 00:19:52
    right or uh specific so I I I think
  • 00:19:55
    making very deliberate efforts to you
  • 00:19:58
    know be
  • 00:19:59
    inclusive uh and sometimes I am certain
  • 00:20:02
    like all other things in our country
  • 00:20:04
    we're going to go to one extreme and
  • 00:20:06
    then we'll have to go back to the other
  • 00:20:07
    extremes and we'll come back in the
  • 00:20:08
    middle but I think every leader um not
  • 00:20:12
    just the cxos but I think actually the
  • 00:20:15
    head of every discipline has to think
  • 00:20:17
    about a how they can use AI in their own
  • 00:20:20
    discipline um and then secondly how can
  • 00:20:22
    they be more inclusive and then of
  • 00:20:24
    course the the whole matter of security
  • 00:20:26
    and privacy and you know having an on
  • 00:20:28
    onized data like this is just Baseline
  • 00:20:31
    in my mind I think companies that breach
  • 00:20:33
    that should like should definitely be
  • 00:20:35
    reprimanded right because that is just
  • 00:20:37
    putting it's it's a it's a question of
  • 00:20:39
    putting funding and resources towards
  • 00:20:42
    making sure that that Baseline is not uh
  • 00:20:45
    breached great so in the couple of
  • 00:20:47
    minutes we have remaining I want to do
  • 00:20:49
    kind of a quick lightning round here um
  • 00:20:51
    so if you put yourself in the shoes
  • 00:20:53
    let's say you're leading a startup
  • 00:20:55
    incubator and you have this pile of
  • 00:20:57
    applicants coming in to to get started
  • 00:20:59
    with what would be especially given your
  • 00:21:02
    experience your pragmatic reality and
  • 00:21:04
    your vision what would be things that
  • 00:21:06
    would kind of excite you and are there
  • 00:21:07
    anything things maybe you just kind of
  • 00:21:09
    throw away saying okay these guys are
  • 00:21:10
    just talking as a PowerPoint as
  • 00:21:12
    vaporware but potential but is there
  • 00:21:13
    anything that you would get excited and
  • 00:21:14
    jazzed about that you would look for as
  • 00:21:16
    a an incubator lead and maybe we'll go
  • 00:21:18
    order again maybe jerem me sure um
  • 00:21:21
    finding patients is tough to enroll into
  • 00:21:24
    clinical trials extremely hard like in
  • 00:21:27
    oncology um you typically only find a
  • 00:21:29
    patient as a referral um and then you
  • 00:21:32
    know in HIV and he viral hepatitis um
  • 00:21:35
    when we try to find patients who are
  • 00:21:37
    naive meaning they've never been treated
  • 00:21:39
    it's extremely hard um partially due to
  • 00:21:42
    our own success but yeah so like what
  • 00:21:44
    we've tried to start doing is take the
  • 00:21:46
    volume of not just us but Global
  • 00:21:48
    electronic medical records and build
  • 00:21:51
    massive arrays of predictive models that
  • 00:21:53
    will predict in advance a potential
  • 00:21:55
    successful screening or successful
  • 00:21:57
    diagnosis 6 months to 1 year before a
  • 00:22:00
    patient is even diagnosed um but that is
  • 00:22:03
    a massive undertaking and it is
  • 00:22:05
    something that I think if if a
  • 00:22:07
    really well-minded group of people could
  • 00:22:10
    solve that challenge to how do we
  • 00:22:11
    connect Global electronic medical
  • 00:22:13
    records together and make predictive
  • 00:22:15
    patient identification a reality I think
  • 00:22:17
    it would be fantastic awesome Yep two
  • 00:22:20
    two items for me that I would look for
  • 00:22:21
    from entrepreneurs there's a a real
  • 00:22:24
    desire for clinical research to be
  • 00:22:27
    embedded into clinical care today these
  • 00:22:31
    worlds operate connected but
  • 00:22:34
    separate um the second um would be that
  • 00:22:38
    most clinical trials that are run
  • 00:22:42
    fail um and it would be wonderful to
  • 00:22:45
    have um an assist of some sort um that
  • 00:22:50
    would help make it so that most clinical
  • 00:22:53
    trials
  • 00:22:55
    succeed great yeah yeah I by the way I
  • 00:22:58
    wish I an incubator one day I'm so I I
  • 00:23:00
    have this tendency of wanting to run
  • 00:23:02
    things versus sitting behind so that's a
  • 00:23:04
    problem so two things from my side um I
  • 00:23:06
    think investing in companies that are
  • 00:23:09
    aiming from day one to make things
  • 00:23:11
    affordable and scalable across the globe
  • 00:23:13
    I think as part of a mission even if it
  • 00:23:15
    takes them decades is something I always
  • 00:23:17
    look for it's I have something I've
  • 00:23:18
    always looked at when I joined my new
  • 00:23:22
    companies and the second thing is any
  • 00:23:24
    any kind of AI that will make my
  • 00:23:26
    teenagers listen to me I think would be
  • 00:23:28
    one wonderful so I I I would invest in
  • 00:23:31
    that like right now oh yeah I think most
  • 00:23:33
    of us in the room may feel along those
  • 00:23:34
    lines I'm totally with you thank you so
  • 00:23:36
    much I know we're at time uh just as a
  • 00:23:38
    quick final takeaway and what I'm
  • 00:23:39
    hearing as well is that um gen
  • 00:23:41
    opportunities of course we're all
  • 00:23:42
    excited about it we've heard that
  • 00:23:44
    statement over and over again but we've
  • 00:23:45
    gone beyond individual productivity
  • 00:23:48
    right the days of just saying chat and
  • 00:23:49
    GPT is you know a great productivity
  • 00:23:52
    tool we're looking at Value chain
  • 00:23:53
    disruption how can I actually change
  • 00:23:56
    business processes in a meaningful way
  • 00:23:58
    but she prioritize those decisions
  • 00:24:00
    thinking about risk in our space
  • 00:24:02
    Enterprise Life Sciences risk comes
  • 00:24:04
    first and we're we'll take a hit on the
  • 00:24:06
    ROI if we're able to manage those risks
  • 00:24:09
    and I think that's a powerful place I'll
  • 00:24:11
    I'll end it there uh we're at time but
  • 00:24:13
    thank you so much U really delighted and
  • 00:24:16
    hopefully we can hear more on this topic
  • 00:24:17
    throughout the rest of the sessions
  • 00:24:19
    thank you
  • 00:24:20
    [Applause]
  • 00:24:23
    [Music]
  • 00:24:34
    every
  • 00:24:37
    [Music]
الوسوم
  • Inteligencia Artificial
  • Ciencias de la Vida
  • Regulación
  • Desarrollo de Medicamentos
  • Innovación Tecnológica
  • Integración Empresarial
  • Seguridad del Paciente
  • Mejoras de Procesos