Sahba Farhang, Tizhoosh Hamid R, Salama Magdy M
Medical Instrument Analysis and Machine Intelligence Group, University of Waterloo, Waterloo, Canada.
Biomed Eng Online. 2005 Oct 11;4:58. doi: 10.1186/1475-925X-4-58.
In this paper a novel method for prostate segmentation in transrectal ultrasound images is presented.
A segmentation procedure consisting of four main stages is proposed. In the first stage, a locally adaptive contrast enhancement method is used to generate a well-contrasted image. In the second stage, this enhanced image is thresholded to extract an area containing the prostate (or large portions of it). Morphological operators are then applied to obtain a point inside of this area. Afterwards, a Kalman estimator is employed to distinguish the boundary from irrelevant parts (usually caused by shadow) and generate a coarsely segmented version of the prostate. In the third stage, dilation and erosion operators are applied to extract outer and inner boundaries from the coarsely estimated version. Consequently, fuzzy membership functions describing regional and gray-level information are employed to selectively enhance the contrast within the prostate region. In the last stage, the prostate boundary is extracted using strong edges obtained from selectively enhanced image and information from the vicinity of the coarse estimation.
A total average similarity of 98.76%(+/- 0.68) with gold standards was achieved.
The proposed approach represents a robust and accurate approach to prostate segmentation.
本文提出了一种用于经直肠超声图像中前列腺分割的新方法。
提出了一种由四个主要阶段组成的分割程序。在第一阶段,使用局部自适应对比度增强方法生成对比度良好的图像。在第二阶段,对该增强图像进行阈值处理以提取包含前列腺(或其大部分)的区域。然后应用形态学算子在该区域内获得一个点。之后,使用卡尔曼估计器将边界与无关部分(通常由阴影引起)区分开来,并生成前列腺的粗略分割版本。在第三阶段,应用膨胀和腐蚀算子从粗略估计版本中提取外边界和内边界。因此,使用描述区域和灰度级信息的模糊隶属函数来选择性地增强前列腺区域内的对比度。在最后阶段,使用从选择性增强图像获得的强边缘和粗略估计附近的信息来提取前列腺边界。
与金标准的总平均相似度达到98.76%(±0.68)。
所提出的方法是一种稳健且准确的前列腺分割方法。