Delving into AI in medical devices and medicine, Mila Orlovsky shares insights on practical applications, data challenges, and navigating regulatory standards. Topics include predictive analytics, business side learnings, impact of ML models in medicine, FDA compliance, future of ML and AI, and controversial predictions in the field. Essential listening for healthcare professionals looking to implement AI.
Navigating technical uncertainties and market acceptance hurdles are essential aspects in breaking new grounds in medical AI.
Mila advocates for understanding end-user needs, simplicity in solution design, and the benefits of community collaboration for professional growth in the field of AI.
Deep dives
Medical AI Innovations and Deep Learning at Zebra Medical
Mila Orlovsky, a medical AI leader, discusses her journey from pioneering clinical insights with EMR data to leveraging deep learning at Zebra Medical. Her work in deep learning at Zebra, focusing on innovative use cases like computer vision and NLP in radiology, showcases the pioneering spirit in medical AI.
Challenges in Early Adoption of Deep Learning in Medical AI
Mila illuminates the challenges faced in early deep learning adoption at Zebra, emphasizing the trial-and-error process and the importance of understanding market applicability. Navigating technical uncertainties and market acceptance hurdles are essential aspects in breaking new grounds in medical AI.
Medical Data Complexity and Regulatory Compliance
Exploring the complexities of medical data integration and the necessity of FDA compliance in medical AI product development. Mila underscores the critical role data scientists play in ensuring ethical, reliable, and compliant AI solutions in the healthcare domain.
User-Centric Design and Community Engagement in AI Development
Encouraging a user-centric approach in AI development and stressing the significance of engaging with communities like MedS. Mila advocates for understanding end-user needs, simplicity in solution design, and the benefits of community collaboration for professional growth in the field of AI.