磁共振图像上左右心室的近自动化三维分割

G. Tarroni, D. Marsili, F. Veronesi, C. Corsi, C. Lamberti, G. Sanguinetti
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引用次数: 0

摘要

从心脏磁共振(CMR)图像中量化左(LV)和右(RV)心室体积和质量对于各种心脏疾病的临床评估至关重要。尽管十多年来的研究旨在开发快速可靠的工具,用于自动识别内心包和心外膜轮廓,但问题仍然存在,特别是对于右心室,由于其更不规则的形状和更高密度的小梁。在这项研究中,提出了一种新的近自动化技术,用于分割左室心内、心外膜以及左室心内膜轮廓。该技术基于三维窄带统计水平集和二维边缘水平集算法。该技术在舒张末期和收缩末期获得的CMR图像上进行了测试。为了进行性能评估,一位经验丰富的口译员手动绘制了心室轮廓,作为参考。计算了自动识别和手动跟踪轮廓之间的一系列定量误差度量(如平均绝对距离,MAD)。结果表明,所提出的技术具有较高的准确度(MAD: LV Endo = 1.4±0.7 px;RV远距= 1.6±1.2 px;左室Epi = 1.4±0.6 px),因此有可能实现快速可靠地识别心室轮廓的工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Near-automated 3D segmentation of left and right ventricles on magnetic resonance images
Quantification of left (LV) and right (RV) ventricular volumes and masses from Cardiac Magnetic Resonance (CMR) images is of prime importance for the clinical assessment of a wide variety of cardiac diseases. Despite over a decade of research aimed at the development of fast and reliable tools for automated endo- and epicardial contours identification, the problem is still open, particularly for the RV as a consequence of its more irregular shape and its higher density of trabeculations. In this study, a novel near-automated technique for the segmentation of LV endo- and epicardial as well as RV endocardial contours is presented. The technique is based on a 3D narrow-band statistical level set and on 2D edge-based level set algorithms. The technique was tested on CMR images acquired at both end-diastolic and end-systolic phases. For performance evaluation, an experienced interpreter manually traced ventricular contours, which were used as reference. A series of quantitative error metrics (e.g. mean absolute distance, MAD) were computed between automatically identified and manually traced contours. The results showed the high accuracy of the proposed technique (MAD: LV Endo = 1.4±0.7 px; RV Endo = 1.6±1.2 px; LV Epi = 1.4±0.6 px), which could thus potentially lead to the implementation of a tool for fast and reliable identification of ventricular contours.
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