School of Computer Science, Wuhan University, Wuhan 430072, PR China; School of Computer Science, HuBei PolyTechnic University, HuangShi 435003, PR China.
School of Computer Science, Wuhan University, Wuhan 430072, PR China.
Comput Med Imaging Graph. 2015 Dec;46 Pt 3:302-14. doi: 10.1016/j.compmedimag.2015.07.004. Epub 2015 Aug 6.
Segmenting the lesion areas from ultrasound (US) images is an important step in the intra-operative planning of high-intensity focused ultrasound (HIFU). However, accurate segmentation remains a challenge due to intensity inhomogeneity, blurry boundaries in HIFU US images and the deformation of uterine fibroids caused by patient's breathing or external force. This paper presents a novel dynamic statistical shape model (SSM)-based segmentation method to accurately and efficiently segment the target region in HIFU US images of uterine fibroids. For accurately learning the prior shape information of lesion boundary fluctuations in the training set, the dynamic properties of stochastic differential equation and Fokker-Planck equation are incorporated into SSM (referred to as SF-SSM). Then, a new observation model of lesion areas (named to RPFM) in HIFU US images is developed to describe the features of the lesion areas and provide a likelihood probability to the prior shape given by SF-SSM. SF-SSM and RPFM are integrated into active contour model to improve the accuracy and robustness of segmentation in HIFU US images. We compare the proposed method with four well-known US segmentation methods to demonstrate its superiority. The experimental results in clinical HIFU US images validate the high accuracy and robustness of our approach, even when the quality of the images is unsatisfactory, indicating its potential for practical application in HIFU therapy.
从超声 (US) 图像中分割病变区域是高强度聚焦超声 (HIFU) 术中规划的重要步骤。然而,由于强度不均匀、HIFU US 图像边界模糊以及患者呼吸或外力引起的子宫肌瘤变形,准确的分割仍然是一个挑战。本文提出了一种新的基于动态统计形状模型 (SSM) 的分割方法,用于准确高效地分割 HIFU 子宫肌瘤 US 图像中的目标区域。为了在训练集中准确学习病变边界波动的先验形状信息,将随机微分方程和福克-普朗克方程的动态特性纳入 SSM(称为 SF-SSM)。然后,开发了一种新的 HIFU US 图像中病变区域的观察模型(称为 RPFM),用于描述病变区域的特征,并为 SF-SSM 提供先验形状的似然概率。SF-SSM 和 RPFM 被集成到主动轮廓模型中,以提高 HIFU US 图像中分割的准确性和鲁棒性。我们将提出的方法与四种著名的 US 分割方法进行比较,以证明其优越性。临床 HIFU US 图像的实验结果验证了我们方法的高精度和鲁棒性,即使图像质量不理想,表明其在 HIFU 治疗中的实际应用潜力。