Predicting Coronary Artery Calcium Severity based on Non-Contrast Cardiac CT images using Deep Learning
- URL: http://arxiv.org/abs/2511.07695v1
- Date: Wed, 12 Nov 2025 01:12:04 GMT
- Title: Predicting Coronary Artery Calcium Severity based on Non-Contrast Cardiac CT images using Deep Learning
- Authors: Lachlan Nguyen, Aidan Cousins, Arcot Sowmya, Hugh Dixson, Sonit Singh,
- Abstract summary: Coronary artery calcium (CAC) scoring is a powerful tool to stratify the risk of atherosclerotic cardiovascular disease.<n>Current scoring practices require time-intensive semiautomatic analysis of cardiac computed tomography images.<n>This study develops a CNN model to classify the calcium score in cardiac, non-contrast computed tomography images into one of six clinical categories.
- Score: 6.223136363125015
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: Cardiovascular disease causes high rates of mortality worldwide. Coronary artery calcium (CAC) scoring is a powerful tool to stratify the risk of atherosclerotic cardiovascular disease. Current scoring practices require time-intensive semiautomatic analysis of cardiac computed tomography by radiologists and trained radiographers. The purpose of this study is to develop a deep learning convolutional neural networks (CNN) model to classify the calcium score in cardiac, non-contrast computed tomography images into one of six clinical categories. A total of 68 patient scans were retrospectively obtained together with their respective reported semiautomatic calcium score using an ECG-gated GE Discovery 570 Cardiac SPECT/CT camera. The dataset was divided into training, validation and test sets. Using the semiautomatic CAC score as the reference label, the model demonstrated high performance on a six-class CAC scoring categorisation task. Of the scans analysed, the model misclassified 32 cases, tending towards overestimating the CAC in 26 out of 32 misclassifications. Overall, the model showed high agreement (Cohen's kappa of 0.962), an overall accuracy of 96.5% and high generalisability. The results suggest that the model outputs were accurate and consistent with current semiautomatic practice, with good generalisability to test data. The model demonstrates the viability of a CNN model to stratify the calcium score into an expanded set of six clinical categories.
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