Predicting Cardiovascular Risk Factors in Retinal Fundus Photographs using Deep Learning

Abstract
Traditionally, medical discoveries are made by observing associations and then designing experiments to test these hypotheses. However, observing and quantifying associations in images can be difficult because of the wide variety of features, patterns, colors, values, shapes in real data. In this paper, we use deep learning, a machine learning technique that learns its own features, to discover new knowledge from retinal fundus images. Using...
Paper Details
Title
Predicting Cardiovascular Risk Factors in Retinal Fundus Photographs using Deep Learning
Published Date
Aug 31, 2017
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