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Linear Digressions
Ben Jaffe and Katie Malone
291 episodes
9 months ago
In each episode, your hosts explore machine learning and data science through interesting (and often very unusual) applications.
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Technology
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All content for Linear Digressions is the property of Ben Jaffe and Katie Malone and is served directly from their servers with no modification, redirects, or rehosting. The podcast is not affiliated with or endorsed by Podjoint in any way.
In each episode, your hosts explore machine learning and data science through interesting (and often very unusual) applications.
Show more...
Technology
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A Reality Check on AI-Driven Medical Assistants
Linear Digressions
14 minutes
5 years ago
A Reality Check on AI-Driven Medical Assistants
The data science and artificial intelligence community has made amazing strides in the past few years to algorithmically automate portions of the healthcare process. This episode looks at two computer vision algorithms, one that diagnoses diabetic retinopathy and another that classifies liver cancer, and asks the question—are patients now getting better care, and achieving better outcomes, with these algorithms in the mix? The answer isn’t no, exactly, but it’s not a resounding yes, because these algorithms interact with a very complex system (the healthcare system) and other shortcomings of that system are proving hard to automate away. Getting a faster diagnosis from an image might not be an improvement if the image is now harder to capture (because of strict data quality requirements associated with the algorithm that wouldn’t stop a human doing the same job). Likewise, an algorithm getting a prediction mostly correct might not be an overall benefit if it introduces more dramatic failures when the prediction happens to be wrong. For every data scientist whose work is deployed into some kind of product, and is being used to solve real-world problems, these papers underscore how important and difficult it is to consider all the context around those problems.
Linear Digressions
In each episode, your hosts explore machine learning and data science through interesting (and often very unusual) applications.