Just published: "Learning dynamics vs. aggregate metrics: clinical applicability of machine learning survival prediction in eye cancer"

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Dear Edson Neto,

Based on the papers you've read, we think you might be interested in this recently published article from Academia Biology: Learning dynamics vs. aggregate metrics: clinical applicability of machine learning survival prediction in eye cancer
Learning dynamics vs. aggregate metrics: clinical applicability of machine learning survival prediction in eye cancer
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Daniel Shin, Jubilee Chung, Author Photo Milan Toma
2026, Academia Biology
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Abstract
Introduction: The application of machine learning in healthcare requires models that demonstrate not only acceptable classification performance but also trustworthy learning behavior suitable for clinical deployment. Class imbalance represents a pervasive challenge in medical datasets, where patients with favorable... Read more
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