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Automatic Basal Slice Detection for Cardiac Analysis

机译:心脏分析的自动基底切片检测

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Identification of the basal slice in cardiac imaging is a key step to measuring the ejection fraction (EF) of the left ventricle (LV). Despite research on cardiac segmentation, basal slice identification is routinely performed manually. Manual identification, however, has been shown to have high inter-observer variability, with a variation of the EF by up to 8%. Therefore, an automatic way of identifying the basal slice is still required. Prior published methods operate by automatically tracking the mitral valve points from the long-axis view of the LV. These approaches assumed that the basal slice is the first short-axis slice below the mitral valve. However, guidelines published in 2013 by the society for cardiovascular magnetic resonance indicate that the basal slice is the uppermost short-axis slice with more than 50% myocardium surrounding the blood cavity. Consequently, these existing methods are at times identifying the incorrect short-axis slice. Correct identification of the basal slice under these guidelines is challenging due to the poor image quality and blood movement during image acquisition. This paper proposes an automatic tool that focuses on the two-chamber slice to find the basal slice. To this end, an active shape model is trained to automatically segment the two-chamber view for 51 samples using the leave-one-out strategy. The basal slice was detected using temporal binary profiles created for each short-axis slice from the segmented two-chamber slice. From the 51 successfully tested samples, 92% and 84% of detection results were accurate at the end-systolic and the end-diastolic phases of the cardiac cycle, respectively.
机译:心脏成像中基底切片的识别是测量左心室(LV)的喷射分数(EF)的关键步骤。尽管对心脏分割进行了研究,但是通常手动进行基础切片识别。然而,已经显示了手动识别具有高观察室间变异性,效率最高可达8%。因此,仍然需要自动识别基底切片的方法。先前已发布的方法通过自动跟踪来自LV的长轴视图的二尖瓣点来操作。这些方法假设基底切片是二尖瓣下方的第一短轴切片。然而,2013年通过心血管磁共振公布的指南表明基底切片是最上面的短轴切片,血型周围有超过50%的心肌。因此,这些现有方法有时识别不正确的短轴切片。在这些准则下正确识别基底切片是挑战,由于图像采集期间的图像质量差和血液运动差。本文提出了一种自动工具,专注于两个腔切片以找到基底切片。为此,培训有效的形状模型以使用休假次策略自动培训以自动段为51个样本进行两腔视图。使用从分段的双腔切片为每个短轴切片产生的时间二进制曲线检测基础切片。从51成功测试的样品,92%和84%的检测结果分别在心脏周期的末端和末端舒张阶段进行准确。

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