An algorithm for fully automatic detection of calcium in chest CT imaging

Hui Tang, Mehdi Moradi, Prasanth Prasanna, Hongzhi Wang, T. Syeda-Mahmood
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引用次数: 1

Abstract

Detection of calcified plaques in coronary arteries is helpful in cardiovascular disease risk assessment. This is often performed by radiologists on computed tomography (CT) images. We work towards an automatic solution for calcium detection in CT images. Most of previous work in this area combines CT and CTA for this purpose to facilitate the localization of the coronary arteries. Given the cost and dose advantages of using only CT scan compared to using both CT and CTA, we propose a solution for automatic calcium assessment in CT. We model the whole chest including all heart chambers and main arteries. Instead of localizing calcium candidates with respect to the coronary artery alone, we assess their position with respect to eight other anatomies, segmented from CT images using joint atlas label fusion methodology. This comprehensive spatial information together with other types of features such as shape, size and texture of each calcium candidate is used with a random forest classifier trained on 104 patients to detect coronary calcification. The results show that our method has a precision of 95.1% and a recall of 89.0% in classifying calcium candidates found based on thresholding. In the patient level, using this method, all the test patients with true calcification were detected as positive, yielding a patient level sensitivity of 100%. Among the test patients without calcification, 44 out of 56 patients resulted in no calcium finding, yielding a patient level specificity of 78.6%. We quantified the whole heart Agatston score for the manual and the automatically detected calcium on the 22 diseased test cases, and found a Pearson correlation coefficient of 0.98. These results show that our proposed framework can reliably detect calcification using CT data.
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胸部CT影像中钙的全自动检测算法
冠状动脉钙化斑块的检测有助于心血管疾病的风险评估。这通常是由放射科医生在计算机断层扫描(CT)图像上进行的。我们致力于CT图像中钙检测的自动解决方案。在这方面,以往的工作大多是结合CT和CTA来实现冠状动脉的定位。考虑到仅使用CT扫描与同时使用CT和CTA相比在成本和剂量上的优势,我们提出了一种CT自动钙评估的解决方案。我们做了整个胸腔的模型包括所有的心室和主动脉。我们没有单独定位冠状动脉的候选钙,而是评估了其他八个解剖结构的位置,使用关节寰椎标签融合方法从CT图像中分割。这些综合的空间信息以及其他类型的特征,如每种候选钙的形状、大小和纹理,被用于对104例患者进行训练的随机森林分类器来检测冠状动脉钙化。结果表明,该方法对基于阈值的候选钙进行分类,准确率为95.1%,召回率为89.0%。在患者水平上,使用该方法,所有真钙化患者的检测结果均为阳性,患者水平的灵敏度为100%。在没有钙化的测试患者中,56例患者中有44例未发现钙,患者水平特异性为78.6%。我们量化了22例患病试验病例的人工钙和自动钙检测的全心Agatston评分,Pearson相关系数为0.98。这些结果表明,我们提出的框架可以可靠地检测钙化利用CT数据。
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