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Left atrial appendage automatic segmentation, in computed tomography images

机译:左心房阑尾自动分割,在计算机断层扫描图像中

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The left atrial appendage is one of the anatomical places where most frequently blood thrombi occur. When migrating from the appendage, these thrombi, become blood emboli that, potentially, can compromise the physiology and/or anatomy of cardiac or cerebral blood vessels, being able to generate cerebrovascular events. The left atrial appendage segmentation is very difficult due, mainly, to its location and the identical densitometric information presents into of this appendage and around of the left atrium. In this paper, an automatic technique is proposed to segment this appendage with the purpose of generating important information to the procedure called left atrial appendage surgical closure. This information is linked to the volume and the diameters of the left atrial appendage. The technique consists of a digital pre-processing stage, based on filtering processes and definition of a region of interest and, of one segmentation stage that considers a clustering method. The results are promising and they allow us to calculate useful quantitative variables when characterizing the most lethal appendix of the human body represented by the mentioned appendage. These results are very important in clinical processes where both the shape and volume of this appendage are vital for detecting and monitoring some vascular diseases such as cardiac embolism, arterial hypertension and stroke, among others.
机译:左心房附属物是最常见的血液血栓发生的解剖学位置之一。当从附属物迁移时,这些血栓成为血液栓子,可能会损害心脏或脑血管的生理学和/或解剖学,能够产生脑血管事件。左心房阑尾分割非常困难,主要是其位置和相同的密度计量信息存在于左心房的这一附属物中。在本文中,提出了一种自动技术,以分割此附件,目的是为所谓的左心房附属外科手术闭合的程序产生重要信息。此信息与左心房附件的音量和直径相关联。该技术基于过滤过程和感兴趣区域的定义,并且具有考虑聚类方法的一个分割阶段的数字预处理阶段。结果是有前途的,它们允许我们在表征上述附属物所代表的人体最致命的附录时计算有用的定量变量。这些结果在临床过程中非常重要,其中该附属的形状和体积对于检测和监测一些血管疾病,例如心脏栓塞,动脉高血压和中风等至关重要。

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