Automatic calcium scoring in low-dose chest CT using deep neural networks with dilated convolutions
Nikolas Lessmann, Bram van Ginneken, Majd Zreik, Pim A. de Jong, Bob, D. de Vos, Max A. Viergever, Ivana I\v{s}gum

TL;DR
This paper introduces a deep neural network-based method for automatic detection of cardiovascular calcifications in low-dose chest CT scans, enabling reliable risk assessment for smokers in lung cancer screening.
Contribution
It presents a novel two-step CNN approach for accurate calcification detection across different reconstruction filters in low-dose CT scans.
Findings
Achieved high F1 scores for calcification detection on soft filter images.
Demonstrated reliable risk category assignment with high kappa coefficients.
Method performs well across different image reconstruction filters.
Abstract
Heavy smokers undergoing screening with low-dose chest CT are affected by cardiovascular disease as much as by lung cancer. Low-dose chest CT scans acquired in screening enable quantification of atherosclerotic calcifications and thus enable identification of subjects at increased cardiovascular risk. This paper presents a method for automatic detection of coronary artery, thoracic aorta and cardiac valve calcifications in low-dose chest CT using two consecutive convolutional neural networks. The first network identifies and labels potential calcifications according to their anatomical location and the second network identifies true calcifications among the detected candidates. This method was trained and evaluated on a set of 1744 CT scans from the National Lung Screening Trial. To determine whether any reconstruction or only images reconstructed with soft tissue filters can be used…
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