8: What is validation and how to validate an AI image analysis solution with Tom Westerling-Bui from Aiforia episode artwork

EPISODE · Jun 4, 2020 · 54 MIN

8: What is validation and how to validate an AI image analysis solution with Tom Westerling-Bui from Aiforia

from Digital Pathology Podcast · host Aleksandra Zuraw, DVM, PhD

Send us Fan MailThe tools to develop AI models for biomedical image analysis have recently become accessible also for non-computer scientists. With the accessibility to AI tools, the question arises whether the things we build are good enough? How do we check the model? How do we validate it and be sure that when deployed according to the intended use it will perform adequately and help us make the right decisions based on the correct premises?In this episode, Thomas Westerling-Bui from Aiforia explains the validation principles that should be applied to AI image analysis solutions. The AI image analysis model validation is like any other assay validation. It starts with finding out the boundaries of the assay's usability. As for any assay, also in the case of an AI model its precision and recall are the most important parameters we want to check. We need to perform a conceptual validation and find out if the platform used does what we want it to do and an analytical validation to precisely quantify the accuracy of the method. Validation is different from improving the AI model on a given data set and always needs to be performed on an independent data set. Unfortunately, there seems to be confusion about that in the scientific community which weakens many of the biomedical publications describing the development and use of AI models.  Another important concept - the intended use, is crucial not only for the use of the assay but also for its validation. The validation of a screening tool will be performed differently than the validation of a diagnostic tool. As powerful as they are, the AI-based tools are just tools and will not do the things they are not designed (trained) to do so the validation should be tailored to the things they ARE trained to do. As supervised AI methods rely on human-generated ground truth both for training and for validation the decision of how many validation regions to include depends heavily on the human capacity to provide adequate ground truth - in the case of image analysis it often includes annotations. If the users are pressed to generate a large number of annotations, precision may suffer so a middle ground needs to be found to provide an adequate number and maintain precision. Another important aspect of generating ground truth is interobserver variability. It needs to be quantified and accounted for during the validation, which is why comparing model outputs against ground truth generated by just one individual is of limited value. In a nutshell, the subject is complex, and to understand these and other nuances of AI model validation the following resources may be of use:Online courses:Coursera:Convolutional Neural NetworksAI for everyoneAI foundations for everyoneOther:Elements of AIBooks:Practical statistics for data scientistsAn introduction to statistical learningDeep medicineSupport the showGet the "Digital Pathology 101" FREE E-book and join us!

Send us Fan Mail The tools to develop AI models for biomedical image analysis have recently become accessible also for non-computer scientists. With the accessibility to AI tools, the question arises whether the things we build are good enough? How do we check the model? How do we validate it and be sure that when deployed according to the intended use it will perform adequately and help us make the right decisions based on the correct premises? In this episode, Thomas Westerling-Bui fro...

NOW PLAYING

8: What is validation and how to validate an AI image analysis solution with Tom Westerling-Bui from Aiforia

0:00 54:46

No transcript for this episode yet

We transcribe on demand. Request one and we'll notify you when it's ready — usually under 10 minutes.

That Hoarder: Overcome Compulsive Hoarding That Hoarder Hoarding disorder is stigmatised and people who hoard feel vast amounts of shame. This podcast began life as an audio diary, an anonymous outlet for somebody with this weird condition. That Hoarder speaks about her experiences living with compulsive hoarding, she interviews therapists, academics, researchers, children of hoarders, professional organisers and influencers, and she shares insight and tips for others with the problem. Listened to by people who hoard as well as those who love them and those who work with them, Overcome Compulsive Hoarding with That Hoarder aims to shatter the stigma, share the truth and speak openly and honestly to improve lives. The Small Business Startup School – Business Notes | Financial Literacy | Retail Psychology – For Professionals & Entrepreneurs The Small Business Startup School Inc. Starting or buying a small business? While personal circumstances may vary, business patterns remain timeless. On The Small Business Startup School, we explore strategies, insights, and practical solutions to help entrepreneurs confidently navigate their journey.Hosted by Ola Williams—a retail entrepreneur, fintech founder, and financial coach with over two decades of experience—this podcast marries financial awareness and retail psychology with optimism to deliver actionable takeaways.Join us to learn, grow, and connect as we uncover the keys to business success.Let’s continue to learn together and be encouraged to keep on connecting! DIOSA. Carolina Sanper This podcast is a sacred space created by Carolina Sanper where you connect with your inner wisdom and embody your magnetic feminine power.It is the realization that the mystical realm is where you plant the seeds of your desired reality.It is a portal to your true essence: awareness, presence, and receiving with ease. Welcome home, DIOSA. 🖤 XXX Tech by SOVRYN Dr. Brian Sovryn The crossroads between technology, sensuality, and metaphysics - and the longest running anarchist podcast in the world! Brought to you by Dr. Brian Sovryn.

Frequently Asked Questions

How long is this episode of Digital Pathology Podcast?

This episode is 54 minutes long.

When was this Digital Pathology Podcast episode published?

This episode was published on June 4, 2020.

What is this episode about?

Send us Fan MailThe tools to develop AI models for biomedical image analysis have recently become accessible also for non-computer scientists. With the accessibility to AI tools, the question arises whether the things we build are good enough? How...

Can I download this Digital Pathology Podcast episode?

Yes, you can download this episode by clicking the download button on the episode player, or subscribe to the podcast in your preferred podcast app for automatic downloads.
URL copied to clipboard!