Artwork

Το περιεχόμενο παρέχεται από το Heather D. Couture. Όλο το περιεχόμενο podcast, συμπεριλαμβανομένων των επεισοδίων, των γραφικών και των περιγραφών podcast, μεταφορτώνεται και παρέχεται απευθείας από τον Heather D. Couture ή τον συνεργάτη της πλατφόρμας podcast. Εάν πιστεύετε ότι κάποιος χρησιμοποιεί το έργο σας που προστατεύεται από πνευματικά δικαιώματα χωρίς την άδειά σας, μπορείτε να ακολουθήσετε τη διαδικασία που περιγράφεται εδώ https://el.player.fm/legal.
Player FM - Εφαρμογή podcast
Πηγαίνετε εκτός σύνδεσης με την εφαρμογή Player FM !

Better Therapeutics Using Lab-Grown Tissue with Andrei Georgescu from Vivodyne

33:57
 
Μοίρασέ το
 

Manage episode 436279611 series 3401994
Το περιεχόμενο παρέχεται από το Heather D. Couture. Όλο το περιεχόμενο podcast, συμπεριλαμβανομένων των επεισοδίων, των γραφικών και των περιγραφών podcast, μεταφορτώνεται και παρέχεται απευθείας από τον Heather D. Couture ή τον συνεργάτη της πλατφόρμας podcast. Εάν πιστεύετε ότι κάποιος χρησιμοποιεί το έργο σας που προστατεύεται από πνευματικά δικαιώματα χωρίς την άδειά σας, μπορείτε να ακολουθήσετε τη διαδικασία που περιγράφεται εδώ https://el.player.fm/legal.

One of the biggest hurdles in medical research is the gap between animal studies and human trials, a disconnect that often leads to failed drug tests and wasted resources. But what if there was a way to bridge that gap and create treatments that are more effective for humans from the start?

Today, I am joined by Dr. Andrei Georgescu, Founder and CEO of Vivodyne, a groundbreaking biotechnology company that is transforming how scientists study human biology and develop new therapeutics. In this episode, he reveals how Vivodyne harnesses lab-grown tissue and advanced multimodal AI to create more effective therapeutics. We explore the challenges of gathering human tissue data, the collaboration between biologists, robotics engineers, and machine learning developers to build powerful machine learning models, and the profound impact that Vivodyne is poised to make in the fight against diseases. To discover how Vivodyne’s innovations can lead to more successful treatments and faster drug development, tune in today!

Key Points:

  • Insight into Andrei’s background and how it led him to create Vivodyne.
  • What Vivodyne does and why it’s so important for drug discovery.
  • The role that AI and machine learning play in analyzing vast amounts of data.
  • Different data inputs and outputs for Vivodyne’s advanced multimodal AI.
  • The value of biased and unbiased AI outputs depending on the context.
  • Why interpretability and explainability are crucial in fields like biotechnology.
  • Challenges associated with collecting human tissue data to train Vivodyne’s models.
  • What goes into validating Vivodyne’s machine learning models.
  • Difficulties in integrating biology knowledge with robotics and machine learning.
  • Andrei’s business-focused advice for technical founders.
  • The profound impact that Vivodyne will have on drug discovery in the future.

Quotes:

“Vivodyne grows human tissues at a very large scale so that we can understand human physiology and we can test directly on it in order to discover and develop better drugs that are both safer and more efficacious.” — Andrei Georgescu

“We use machine learning and AI as a mechanism to understand the complexity of very deep data and to very efficiently apply that complexity and infer from what we've learned across the very large breadth of data that we collect.” — Andrei Georgescu

“To address [the problem of a] glaring lack of trainable data, we create that data by growing it at scale.” — Andrei Georgescu

“If you're a technical founder, do something that is incredibly hard because the ability for you to do that thing will grant you much more leverage than creating what is otherwise a much more simple and generic business.” — Andrei Georgescu

“[With Vivodyne], we will enter a world of plenty where the development of new drugs against diseases becomes a far more successful, reliable, and predictive process, and we're able to make much safer and much more effective drugs just by virtue of being able to optimize that therapeutic on human tissues before giving it to people for the first time in-clinic.” — Andrei Georgescu

Links:

Andrei Georgescu

Vivodyne

Andrei Georgescu on LinkedIn

Resources for Computer Vision Teams:

LinkedIn – Connect with Heather.

Computer Vision Insights Newsletter – A biweekly newsletter to help bring the latest machine learning and computer vision research to applications in people and planetary health.

Computer Vision Strategy Session – Not sure how to advance your computer vision project? Get unstuck with a clear set of next steps. Schedule a 1 hour strategy session now to advance your project.

  continue reading

107 επεισόδια

Artwork
iconΜοίρασέ το
 
Manage episode 436279611 series 3401994
Το περιεχόμενο παρέχεται από το Heather D. Couture. Όλο το περιεχόμενο podcast, συμπεριλαμβανομένων των επεισοδίων, των γραφικών και των περιγραφών podcast, μεταφορτώνεται και παρέχεται απευθείας από τον Heather D. Couture ή τον συνεργάτη της πλατφόρμας podcast. Εάν πιστεύετε ότι κάποιος χρησιμοποιεί το έργο σας που προστατεύεται από πνευματικά δικαιώματα χωρίς την άδειά σας, μπορείτε να ακολουθήσετε τη διαδικασία που περιγράφεται εδώ https://el.player.fm/legal.

One of the biggest hurdles in medical research is the gap between animal studies and human trials, a disconnect that often leads to failed drug tests and wasted resources. But what if there was a way to bridge that gap and create treatments that are more effective for humans from the start?

Today, I am joined by Dr. Andrei Georgescu, Founder and CEO of Vivodyne, a groundbreaking biotechnology company that is transforming how scientists study human biology and develop new therapeutics. In this episode, he reveals how Vivodyne harnesses lab-grown tissue and advanced multimodal AI to create more effective therapeutics. We explore the challenges of gathering human tissue data, the collaboration between biologists, robotics engineers, and machine learning developers to build powerful machine learning models, and the profound impact that Vivodyne is poised to make in the fight against diseases. To discover how Vivodyne’s innovations can lead to more successful treatments and faster drug development, tune in today!

Key Points:

  • Insight into Andrei’s background and how it led him to create Vivodyne.
  • What Vivodyne does and why it’s so important for drug discovery.
  • The role that AI and machine learning play in analyzing vast amounts of data.
  • Different data inputs and outputs for Vivodyne’s advanced multimodal AI.
  • The value of biased and unbiased AI outputs depending on the context.
  • Why interpretability and explainability are crucial in fields like biotechnology.
  • Challenges associated with collecting human tissue data to train Vivodyne’s models.
  • What goes into validating Vivodyne’s machine learning models.
  • Difficulties in integrating biology knowledge with robotics and machine learning.
  • Andrei’s business-focused advice for technical founders.
  • The profound impact that Vivodyne will have on drug discovery in the future.

Quotes:

“Vivodyne grows human tissues at a very large scale so that we can understand human physiology and we can test directly on it in order to discover and develop better drugs that are both safer and more efficacious.” — Andrei Georgescu

“We use machine learning and AI as a mechanism to understand the complexity of very deep data and to very efficiently apply that complexity and infer from what we've learned across the very large breadth of data that we collect.” — Andrei Georgescu

“To address [the problem of a] glaring lack of trainable data, we create that data by growing it at scale.” — Andrei Georgescu

“If you're a technical founder, do something that is incredibly hard because the ability for you to do that thing will grant you much more leverage than creating what is otherwise a much more simple and generic business.” — Andrei Georgescu

“[With Vivodyne], we will enter a world of plenty where the development of new drugs against diseases becomes a far more successful, reliable, and predictive process, and we're able to make much safer and much more effective drugs just by virtue of being able to optimize that therapeutic on human tissues before giving it to people for the first time in-clinic.” — Andrei Georgescu

Links:

Andrei Georgescu

Vivodyne

Andrei Georgescu on LinkedIn

Resources for Computer Vision Teams:

LinkedIn – Connect with Heather.

Computer Vision Insights Newsletter – A biweekly newsletter to help bring the latest machine learning and computer vision research to applications in people and planetary health.

Computer Vision Strategy Session – Not sure how to advance your computer vision project? Get unstuck with a clear set of next steps. Schedule a 1 hour strategy session now to advance your project.

  continue reading

107 επεισόδια

Όλα τα επεισόδια

×
 
Loading …

Καλώς ήλθατε στο Player FM!

Το FM Player σαρώνει τον ιστό για podcasts υψηλής ποιότητας για να απολαύσετε αυτή τη στιγμή. Είναι η καλύτερη εφαρμογή podcast και λειτουργεί σε Android, iPhone και στον ιστό. Εγγραφή για συγχρονισμό συνδρομών σε όλες τις συσκευές.

 

Οδηγός γρήγορης αναφοράς