Artificial Intelligence General Overview with Examples in Machine Learning & Deep Learning

This presentation by Eric Munger, Ph.D., explores the application of machine learning and deep learning techniques, specifically focusing on a traumatic brain injury (TBI) study using the VA TBI Model Systems (TBIMS) database. It contrasts traditional machine learning with deep learning, detailing various algorithms like random forests and neural networks. The presentation emphasizes a Random Survival Forest model used to predict patient retention in the TBIMS study, analyzing variable importance and model performance using metrics such as the Brier score. Additionally, it introduces Generative Adversarial Networks (GANs) as a method for generating synthetic data. The overall goal is to demonstrate the utility of AI in analyzing complex TBI datasets and improving predictive modeling.

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