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用于在短轴心脏磁共振图像中同时确定心内膜和心外膜边界的自动边缘检测方法的实验验证:在正常志愿者中的应用

Experimental validation of an automated edge-detection method for a simultaneous determination of the endocardial and epicardial borders in short-axis cardiac MR images: application in normal volunteers.

作者信息

Furber A, Balzer P, Cavaro-Ménard C, Croué A, Da Costa E, Lethimonnier F, Geslin P, Tadéi A, Jallet P, Le Jeune J J

机构信息

Department of Cardiology, The University Hospital of Angers, France.

出版信息

J Magn Reson Imaging. 1998 Sep-Oct;8(5):1006-14. doi: 10.1002/jmri.1880080503.

Abstract

The goal of this study was to put together several techniques of image segmentation to provide a reliable assessment of the left ventricular mass with short-axis cardiac MR images. No initial manual input was required for this process based on region growing, gradient detection, and adaptive thresholding. A comparison between actual mass and automatic assessment was implemented with 9 minipigs that underwent spin-echo MR imaging. Fifteen normal volunteers were studied with a fast-gradient-echo sequence. The automatic segmentation was then controlled by three trained observers. Actual mass and automatic segmentation were strongly correlated (r = .97 with P < .01). For normal volunteers, the standard error of estimation of the automatic assessment (12 g) compared well with the average myocardial mass (120 +/- 30 g) and the interobserver reproducibility of the manual assessment (9 g). These results allow the application of this method to the quantification of the left ventricular function and mass in clinical practice.

摘要

本研究的目的是整合多种图像分割技术,以便通过短轴心脏磁共振成像对左心室质量进行可靠评估。基于区域生长、梯度检测和自适应阈值处理,该过程无需初始手动输入。对9只接受自旋回波磁共振成像的小型猪进行了实际质量与自动评估之间的比较。对15名正常志愿者采用快速梯度回波序列进行研究。然后由三名经过培训的观察者对自动分割进行控制。实际质量与自动分割高度相关(r = 0.97,P < 0.01)。对于正常志愿者,自动评估的估计标准误差(12 g)与平均心肌质量(120±30 g)以及手动评估的观察者间再现性(9 g)相比良好。这些结果使得该方法能够应用于临床实践中左心室功能和质量的量化。

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