自动冠状动脉钙化检测和评分

I. Išgum, B. van Ginneken, A. Rutten, M. Prokop
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引用次数: 4

摘要

提出了一种利用心电图触发的多层CT数据自动检测冠状动脉钙化的方法。该方法首先对心脏区域进行分割。在获得的体积中,通过阈值提取候选对象。它们包括冠状动脉钙化,位于心脏其他部位的钙化,例如瓣膜或心肌,以及其他高密度结构,主要代表噪音和骨骼。为每个候选对象计算一组57个特征。在特征空间中,使用k-NN分类器和连续三个阶段的特征选择对目标进行分类。该方法在51次心脏扫描中进行了测试。其中冠状动脉钙化320例,主动脉钙化291例,心脏钙化62例。该系统以56例假阳性为代价,正确检测出冠状动脉中177例钙化。平均而言,该方法每次扫描产生3.8个错误。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automated coronary calcification detection and scoring
An automated method for coronary calcification detection from ECG-triggered multi-slice CT data is presented. The method first segments the heart region. In the obtained volume candidate objects are extracted by thresholding. They include coronary calcification, calcium located elsewhere in the heart, for example, in the valves or the myocardium, and other high density structures mostly representing noise and bone. A set of 57 features is calculated for each candidate object. In the feature space objects are classified with a k-NN classifier and feature selection in three consecutive stages. The method is tested on 51 scans of the heart. They contain 320 calcification in the coronary arteries, 291 in the aorta and 62 calcifications in the heart. The system correctly detected 177 calcifications in the coronaries at the expense of 56 false positive objects. On average the method makes 3.8 errors per scan.
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