Department of Pediatrics, Radboud University Nijmegen Medical Centre, Nijmegen, The Netherlands.
Ultrasound Med Biol. 2011 Sep;37(9):1409-20. doi: 10.1016/j.ultrasmedbio.2011.05.005. Epub 2011 Jun 16.
Clinical diagnosis of heart disease might be substantially supported by automated segmentation of the endocardial surface in three-dimensional (3-D) echographic images. Because of the poor echogenicity contrast between blood and myocardial tissue in some regions and the inherent speckle noise, automated analysis of these images is challenging. A priori knowledge on the shape of the heart cannot always be relied on, e.g., in children with congenital heart disease, segmentation should be based on the echo features solely. The objective of this study was to investigate the merit of using temporal cross-correlation of radio-frequency (RF) data for automated segmentation of 3-D echocardiographic images. Maximum temporal cross-correlation (MCC) values were determined locally from the RF-data using an iterative 3-D technique. MCC values as well as a combination of MCC values and adaptive filtered, demodulated RF-data were used as an additional, external force in a deformable model approach to segment the endocardial surface and were tested against manually segmented surfaces. Results on 3-D full volume images (Philips, iE33) of 10 healthy children demonstrate that MCC values derived from the RF signal yield a useful parameter to distinguish between blood and myocardium in regions with low echogenicity contrast and incorporation of MCC improves the segmentation results significantly. Further investigation of the MCC over the whole cardiac cycle is required to exploit the full benefit of it for automated segmentation.
临床诊断心脏病可以通过在三维(3-D)超声图像中自动分割心内膜表面得到实质性的支持。由于在某些区域血液和心肌组织之间的回声对比度差以及固有斑点噪声,这些图像的自动分析具有挑战性。心脏的先验形状知识并不总是可靠的,例如,在患有先天性心脏病的儿童中,分割应该仅基于回声特征。本研究的目的是研究使用射频(RF)数据的时间互相关来自动分割 3-D 超声心动图图像的优点。使用迭代 3-D 技术从 RF 数据本地确定最大时间互相关(MCC)值。MCC 值以及 MCC 值和自适应滤波、解调 RF 数据的组合被用作变形模型方法的附加外部力,以分割心内膜表面,并与手动分割的表面进行了比较。对 10 名健康儿童的 3-D 全容积图像(飞利浦,iE33)的结果表明,从 RF 信号中得出的 MCC 值可以在回声对比度低的区域中区分血液和心肌,是一种有用的参数,并且 MCC 的加入可以显著提高分割结果。需要进一步研究整个心动周期的 MCC,以充分利用其自动分割的全部优势。