In this episode, I had the pleasure of speaking with Mila Orlovsky, a pioneer in medical AI. We delve into practical applications, overcoming data challenges, and the intricacies of developing AI tools that meet regulatory standards. Mila discusses her experiences with predictive analytics in patient care, offering tips on navigating the complexities of AI implementation in medical environments. This episode is packed with actionable advice and forward-thinking strategies, making it essential listening for professionals looking to impact healthcare through AI.
Join our Discord community: https://discord.gg/tEYvqxwhah
---
Timestamps:
00:00 Introduction and Background
4:03 Early Days of Machine Learning in Medicine
5:19 Challenges in Building Medical AI Systems
6:54 Differences Between Medical ML and Other ML Domains
15:36 Unique Challenges of Medical Data in ML
24:01 Counterintuitive Learnings on the Business Side
28:07 Impact and Value of ML Models in Medicine
29:41 The Role of Doctors in the Age of AI
38:44 Explainability in Medical ML
44:31 The FDA and Compliance in Medical ML
48:56 Feedback and Iteration in Medical ML
52:25 Predictions for the Future of ML and AI
53:59 Controversial Predictions in the Field of ML
56:02 Recommendations
57:58 Conclusion
➡️ Mila Orlovsky on LinkedIn – https://www.linkedin.com/in/milaorlovsky/
🩺MeDS – Medical Data Science Israel Community – https://www.facebook.com/groups/452832939966464/
🌐 Check Out Our Website! https://dagshub.com
Social Links:
➡️ LinkedIn: https://www.linkedin.com/company/dagshub
➡️ Twitter: https://twitter.com/TheRealDAGsHub
➡️ Dean Pleban: https://twitter.com/DeanPlbn