IEEE J Biomed Health Inform. 2023 Sep;27(9):4305-4316. doi: 10.1109/JBHI.2023.3286869. Epub 2023 Sep 6.
Paracentesis is a high-demanding and routine operation, which has great potentials and benefits if semi-autonomous procedures can be developed. One of the most important techniques that facilitate semi-autonomous paracentesis is to segment the ascites from ultrasound images accurately and efficiently. The ascites, however, is usually with significantly different shapes and noise among different patients, and its shape/size changes dynamically during the paracentesis. This makes most of existing image segmentation methods either time consuming or inaccurate for segmenting ascites from its background. In this article, we propose a two-stage active contour method to facilitate accurate and efficient segmentation of ascites. First, a morphological-driven thresholding method is developed to locate the initial contour of the ascites automatically. Then, the identified initial contour is fed into a novel sequential active contour algorithm to segment the ascites from background accurately. The proposed method is tested and compared with state-of-the-art active contour methods on over 100 real ultrasound images of ascites, and the results show the superiority of our method in both accuracy and time efficiency.
腹腔穿刺术是一项高要求的常规操作,如果能够开发半自动程序,将会有很大的潜力和益处。促进半自动腹腔穿刺术的最重要技术之一是准确有效地从超声图像中分割腹水。然而,腹水在不同患者之间通常具有明显不同的形状和噪声,并且在穿刺过程中其形状/大小会动态变化。这使得大多数现有的图像分割方法要么耗时,要么不准确,无法从背景中分割腹水。在本文中,我们提出了一种两阶段主动轮廓方法,以促进腹水的准确和高效分割。首先,开发了一种形态学驱动的阈值方法来自动定位腹水的初始轮廓。然后,将识别出的初始轮廓输入到一种新颖的顺序主动轮廓算法中,以准确地从背景中分割腹水。该方法在 100 多份腹水的真实超声图像上进行了测试和比较,结果表明该方法在准确性和时间效率方面都具有优势。