Direct Prediction of Cardiovascular Mortality from Low-dose Chest CT using Deep Learning
Sanne G.M. van Velzen, Majd Zreik, Nikolas Lessmann, Max A. Viergever,, Pim A. de Jong, Helena M. Verkooijen, Ivana I\v{s}gum

TL;DR
This study introduces a deep learning approach that automatically predicts 5-year cardiovascular mortality from low-dose chest CT scans, bypassing manual feature extraction, and demonstrates its effectiveness with an AUC of 0.72.
Contribution
The paper presents a novel method that directly predicts cardiovascular mortality from chest CT scans using deep learning, eliminating the need for engineered features.
Findings
Achieved an AUC of 0.72 in predicting mortality.
Automatically identifies at-risk individuals from screening scans.
Demonstrates feasibility of direct deep learning prediction from CT images.
Abstract
Cardiovascular disease (CVD) is a leading cause of death in the lung cancer screening population. Chest CT scans made in lung cancer screening are suitable for identification of participants at risk of CVD. Existing methods analyzing CT images from lung cancer screening for prediction of CVD events or mortality use engineered features extracted from the images combined with patient information. In this work we propose a method that automatically predicts 5-year cardiovascular mortality directly from chest CT scans without the need for hand-crafting image features. A set of 1,583 participants of the National Lung Screening Trial was included (1,188 survivors, 395 non-survivors). Low-dose chest CT images acquired at baseline were analyzed and the follow-up time was 5 years. To limit the analysis to the heart region, the heart was first localized by our previously developed algorithm for…
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