51. Gabriel Alexander Vignolle - Ensembles methods in medical applications

51. Gabriel Alexander Vignolle - Ensembles methods in medical applications

Author: Manuel Pasieka January 19, 2024 Duration: 58:24

## Summary

Hello and welcome back to the Austrian Artificial Intelligence Podcast in 2024.


With this episode we start into the third year of the podcast. I am very happy to see that the number of listeners has been growing steadily since the beginning and I want to thank you dear listeners for coming back to the podcast and sharing it with your friends.

Gabriel is a Bioinformatician at the Austrian Institute of Technology and is going to explain his work on ensemble methods and their application in the medical domain.

For those not familiar with the term, an Ensemble is a combination of individual base models that are combined with the goal to outperform each individual model.

So the basic idea is, that one combines multiple models that each have their strength and weaknesses into a single ensemble that in the best case has all the strengths without the weaknesses.

We have seen one type of ensemble methods in the past. These where homogeneous ensemble methods like federated learning, where one trains the same algorithm multiple times by multiple parties or different subsets of the data, for performance reasons or in order to combine model weights without sharing the training data.


Today, Gabriel will talk about heterogeneous ensembles that are a combination of different models types and their usage in medical applications. He will explain how one can use them to increase the robustness and the accuracy of predictions. We will discuss how to select and create compositions of models, as well how to combine the different predictions of the individual base models in smart ways that improve their accuracy over simply methods like averaging over majority voting.


## AAIP Community

Join our discord server and ask guest directly or discuss related topics with the community.

https://discord.gg/5Pj446VKNU


## TOC

00:00:00 Beginning

00:03:31 Guest Introduction

00:06:40 Challenges of applying AI in medical applications

00:17:56 Homogeneous Ensemble Methods

00:25:50 Combining base model predictions

00:40:14 Composing Ensembles

00:45:57 Explainability of Ensemble Methods


## Sponsors

- Quantics: Supply Chain Planning for the new normal - the never normal - https://quantics.io/

- Belichberg GmbH: Software that Saves the Planet: The Future of Energy Begins Here - https://belichberg.com/


## References

Gabriel Alexander Vignolle - https://www.linkedin.com/in/gabriel-alexander-vignolle-385b141b6/

Publications - https://publications.ait.ac.at/en/persons/gabriel.vignolle

Molecular Diagnostics - https://molecular-diagnostics.ait.ac.at/


Hosted by Manuel Pasieka, the Austrian Artificial Intelligence Podcast offers a grounded, local perspective on a global phenomenon. Instead of abstract theorizing, each conversation focuses on the tangible impact and practical applications of AI within Austria's unique ecosystem. You'll hear from a diverse range of guests-researchers, entrepreneurs, policymakers, and creatives-who are actively shaping this landscape, discussing both the remarkable opportunities and the nuanced challenges specific to the region. The discussions delve into how these technologies are being integrated into Austrian industry, academia, and society, moving beyond hype to examine real-world implementation and ethical considerations. This podcast serves as an essential audio forum for anyone in Austria, or with an interest in the European tech scene, looking to understand how artificial intelligence is evolving right here. It’s about the people behind the algorithms and the local stories within a global revolution. For those engaged with the content, questions and suggestions are always welcome at the provided email address.
Author: Language: English Episodes: 73

Austrian Artificial Intelligence Podcast
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