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3D Epicardial fat registration optimization based on structural prior knowledge and subjective-objective correspondence

机译:基于结构事先知识和主观客观对应的3D外膜脂肪登记优化

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3D heart registration has become an important issue in cardio-vascular diagnosis and treatment. This is mainly due to more accessible medical imaging technologies that can nowadays provide high precision imaging data at relatively lower cost. One of the important features of the heart that has recently drawn attention is epicardial fat (surrounds the heart), which according to some preliminary studies can indicate risk level of various cardiovascular diseases. As such, 2D/3D registration of epicardial fat, through automatic or semi-automatic detection/segmentation, is considered as valuable task for medical doctors (MDs) to include as additional feature within the already existing software for medical imaging and visualization. Although MDs can visually detect regions of epicardial fat from the image slices manually, i.e., subjectively, it is usually time consuming and error prone task. Moreover, due to considerable amount of parameters used for image pre-processing, which can strongly influence visibility of certain features in the image by MD, it often happens that some important features are missed. Consequently, the most preferable solution is the one that combines objective and subjective (by MD) description of particular image feature (in this example epicardial fat) and then subsequently employs semi-automatic segmentation approach, where in execution stage MD would only roughly indicate particular region of interest (ROI), based on which designed algorithm would process the whole heart volume and compute the 3D volume of the heart and epicardial fat. In this paper, we aim at optimizing and enhancing previously developed algorithm for 2D fat segmentation based on (i) pre-knowledge about epicardial structure (provided by the MDs) and (ii) subjective and objective metric correspondence. Based on the 2D segmentation method we compute the 3D volume in order to perform 3D registration. This new optimized approach is shown to considerably improve the accuracy of the epicardial fat registration using CT images.
机译:3D心脏注册已成为心动血管诊断和治疗的重要问题。这主要是由于更可访问的医学成像技术,现在可以以相对较低的成本提供高精度成像数据。最近引起注意的心脏的重要特征之一是心外膜脂肪(围绕心脏),根据一些初步研究可以表明各种心血管疾病的风险水平。因此,通过自动或半自动检测/分割的表皮脂肪的2D / 3D注册被认为是医生(MDS)的有价值的任务,以包括在现有的医学成像和可视化软件中作为其他功能。尽管MDS可以在手动上从图像切片视觉检测心外膜脂肪区域,即,主观上,通常是耗时和易于易于任务。此外,由于用于图像预处理的大量参数,这可能强烈影响MD图像中某些特征的可见性,经常发生一些重要的功能。因此,最优选的解决方案是特定图像特征(在该示例性外膜脂肪中的MD)的描述,然后采用半自动分割方法,其中在执行阶段MD中只能粗略地指示特定的位置利息地区(ROI),基于哪种设计的算法将处理全心脏体积并计算心脏和心外膜脂肪的3D体积。在本文中,我们的目的是基于(i)关于外膜结构(由MDS提供)的预知(I)主观和客观度量对应的预先了解优化和增强先前发达的2D脂肪分段算法。基于2D分段方法,我们计算3D音量以执行3D注册。显示这种新的优化方法,可以使用CT图像显着提高心外膜脂肪登记的准确性。

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