Dhupia Abhijeet, Harish Kumar J R, Andrade Jasbon, Rajagopal K V
Annu Int Conf IEEE Eng Med Biol Soc. 2020 Jul;2020:2125-2128. doi: 10.1109/EMBC44109.2020.9175831.
We propose an automated method for the segmentation of lumen intima layer of the common carotid artery in longitudinal mode ultrasound images. The method is hybrid, in the sense that a coarse segmentation is first achieved by optimizing a locally defined contrast function of an active oblong considering its five degrees-of-freedom, and subsequently the fine segmentation and delineation of the carotid artery are achieved by post-processing the portion of the ultrasound image spanned by the annulus region of the optimally fitted active oblong. The post-processing includes median filtering and Canny edge detection to retain the lumen intima representative points followed by a smooth curve fitting technique to delineate the lumen intima boundary. The algorithm has been validated on 84 longitudinal mode carotid artery ultrasound images provided by the Signal Processing laboratory, Brno university. The proposed technique results in an average accuracy and Dice similarity index of 98.9% and 95.2%, respectively.
我们提出了一种用于在纵向模式超声图像中分割颈总动脉管腔内膜层的自动化方法。该方法是混合式的,首先通过考虑其五个自由度来优化活动长方形的局部定义对比度函数,从而实现粗略分割,随后通过对最佳拟合活动长方形的环形区域所跨越的超声图像部分进行后处理,来实现颈动脉的精细分割和轮廓描绘。后处理包括中值滤波和Canny边缘检测,以保留管腔内膜代表性点,然后采用平滑曲线拟合技术来描绘管腔内膜边界。该算法已在布尔诺大学信号处理实验室提供的84幅纵向模式颈动脉超声图像上得到验证。所提出的技术分别产生了98.9%的平均准确率和95.2%的骰子相似性指数。