Towards the automated segmentation of epicardial and mediastinal fats: A multi-manufacturer approach using intersubject registration and random forest

É. O. Rodrigues, A. Conci, F. Morais, María G. Pérez
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引用次数: 16

Abstract

The amount of fat on the surroundings of the heart is correlated to several health risk factors such as carotid stiffness, coronary artery calcification, atrial fibrillation, atherosclerosis, cancer incidence and others. Furthermore, the cardiac fat varies unrelated to the overall fat of the subject, and, therefore, it reinforces the quantitative analysis of these adipose tissues as being essential. Clinical decision support systems are computer programs capable of evaluating information and providing a corresponding diagnosis or data to complement the physicists' analyses. The aim of this work is to propose a method capable of fully automatically segmenting two types of cardiac adipose tissues that stand apart from each other by the pericardium on CT images obtained by the standard acquisition protocol used for coronary calcium scoring. Much effort was devoted to promote minimal user intervention and ease of reproducibility. The methodology proposed in this work consists of a registration, which will roughly adjust input images to a standard, an extraction of features related to pixels and their surrounding area and a segmentation step based on data mining classification algorithms that define if an incoming pixel is of a certain type. Experimentations showed that the achieved mean accuracy for the epicardial and mediastinal fats was 98.4% with a mean true positive rate of 96.2%. In average, the Dice similarity index was equal to 96.8%.
心外膜和纵隔脂肪的自动分割:使用主体间注册和随机森林的多制造商方法
心脏周围的脂肪含量与几个健康风险因素相关,如颈动脉僵硬、冠状动脉钙化、心房颤动、动脉粥样硬化、癌症发病率等。此外,心脏脂肪的变化与受试者的整体脂肪无关,因此,它加强了对这些脂肪组织的定量分析是必不可少的。临床决策支持系统是能够评估信息并提供相应诊断或数据以补充物理学家分析的计算机程序。这项工作的目的是提出一种方法,能够完全自动分割两种类型的心脏脂肪组织,这两种类型的心脏脂肪组织是由用于冠状动脉钙评分的标准采集方案获得的CT图像上的心包分开的。在促进用户干预最小化和易于再现方面投入了大量的努力。在这项工作中提出的方法包括一个注册,它将大致调整输入图像到一个标准,一个提取与像素及其周围区域相关的特征,以及一个基于数据挖掘分类算法的分割步骤,该算法定义输入像素是否属于某种类型。实验表明,心外膜和纵隔脂肪的平均准确率为98.4%,平均真阳性率为96.2%。Dice相似度指数平均为96.8%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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