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Bruno Batinica: Predicting Cardiovascular Disease Across Populations Using Deep Learning

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posted on 2023-10-03, 12:30 authored by Bruno BatinicaBruno Batinica

Novel deep-learning techniques have the potential to enable the accurate and low-cost prediction of cardiovascular disease (CVD) using only routinely collected administrative data. This research develops state-of-the-art models for predicting CVD across New Zealand and demonstrates their superiority over currently utilised traditional statistical models.

 

This poster was uploaded for the SGS Research Showcase 2023.

 

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University of Auckland

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