P1C-4超声弹性成像在体猪肝脏射频消融病灶的实时半自动分割

B. Castañeda, M. Zhang, K. Hoyt, K. Bylund, J. Christensen, W. Saad, J. Strang, D. Rubens, K. Parker
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引用次数: 3

摘要

射频消融(RFA)是一种微创热疗法,正在研究作为手术治疗肝脏肿瘤的替代方法。目前,有必要监测病变形成的过程,以保证病变组织的完全治疗。在先前的研究中,超声弹性成像被用于检测和测量猪模型体内暴露肝脏中的RFA病变。由于缺乏边界定义和呼吸运动和灌注形成的伪影,在超声弹性图像中手动勾画这些病变是具有挑战性的。因此,测量病变成为一个耗时的过程,具有很高的可变性。介绍了一种基于水平集方法的超声弹性数据半自动分割算法。该算法旨在减少人工分割的可变性和处理时间,同时保持结果的可比性。为此,通过中线切口在5个猪肝上形成11个RFA病变。三个独立的观察员执行手动和半自动测量在体内超声弹性图像。将这些结果与大体病理测量结果进行比较。此外,我们评估可行性进行声弹性测量经皮。在不暴露肝脏的情况下,重复先前描述的过程,再进行三个病变。总体而言,半自动算法在准确性、速度和可重复性方面优于手动分割。这些结果表明,超声弹性成像结合分割算法有可能作为传统超声的补充技术用于热消融监测和随访成像。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
P1C-4 Real-Time Semi-Automatic Segmentation of Hepatic Radiofrequency Ablated Lesions in an In Vivo Porcine Model Using Sonoelastography
Radiofrequency ablation (RFA) is a minimally invasive thermal therapy that is under investigation as an alternative to surgery for treating liver tumors. Currently, there is a need to monitor the process of lesion creation to guarantee complete treatment of the diseased tissue. In a previous study, sonoelastography was used to detect and measure RFA lesions during exposed liver experiments in a porcine model in vivo. Manual outlining of these lesions in the sonoelastographic images is challenging due to a lack of boundary definition and artifacts formed by respiratory motion and perfusion. As a result, measuring the lesions becomes a time-consuming process with high variability. This work introduces a semi-automatic segmentation algorithm for sonoelastographic data based on level set methods. This algorithm aims to reduce the variability and processing time involved in manual segmentation while maintaining comparable results. For this purpose, eleven RFA lesions are created in five porcine livers exposed through a midline incision. Three independent observers perform manual and semi-automatic measurements on the in vivo sonoelastographic images. These results are compared to measurements from gross pathology. In addition, we assess the feasibility of performing sonoelastograhic measurements transcutaneously. The procedure previously described is repeated with three more lesions without exposing the liver. Overall, the semi-automatic algorithm outperforms manual segmentation in accuracy, speed, and repeatability. These results suggest that sonoelastography in combination with the segmentation algorithm has the potential to be used as a complementary technique to conventional ultrasound for thermal ablation monitoring and follow-up imaging.
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