A lesion-specific coronary artery calcium quantification framework for the prediction of cardiac events.

Information Technology in Biomedicine, IEEE Transactions(2011)

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摘要
CT-based coronary artery calcium (CAC) scanning has been introduced as a noninvasive, low-radiation imaging technique for the assessment of the overall coronary arterial atherosclerotic burden. A 3-D CAC volume contains significant clinically relevant information, which is unused by conventional whole-heart CAC quantification methods. In this paper, we have developed a novel distance-weighted lesion-specific CAC quantification framework that predicts cardiac events better than the conventional whole-heart CAC measures. This framework consists of 1) a novel lesion-specific CAC quantification tool that measures each calcific lesion's attenuation, morphologic and geometric statistics; 2) a distance-weighted event risk model to estimate the risk probability caused by each lesion; and 3) a Naive Bayesian-based technique for risk integration. We have tested our lesion-specific event predictor on 60 CAC positive scans (20 with events and 40 without events), and compared it with conventional whole-heart CAC scores. Experimental results showed that our novel approach significantly improves the predictive accuracy, indicated by an improved area under the curve of receiver operating characteristic analysis from 62% to 68%, an improved specificity by 23-55% at the 80% sensitivity level, and a net reclassification improvement of 30% .
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关键词
novel lesion-specific cac quantification,cac positive scan,cardiac events,conventional whole-heart cac measure,3-d cac volume,lesion-specific cac quantification framework,lesion-specific event predictor,quantification framework,distance-weighted event risk model,conventional whole-heart cac quantification,conventional whole-heart cac score,lesion-specific coronary artery calcium,novel approach,calcium,computed tomography,cardiovascular system,heart,three dimensional,receiver operator characteristic,area under the curve
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