Pattern Recognition Lab (DCIS), PIEAS, P.O. Nilore 45650, Islamabad, Pakistan.
NDTG, PINSTECH, P.O. Nilore 45650, Islamabad, Pakistan.
Comput Methods Programs Biomed. 2014 Feb;113(2):593-609. doi: 10.1016/j.cmpb.2013.10.012. Epub 2013 Oct 24.
In this paper, a robust method is proposed for segmentation of medical images by exploiting the concept of information gain. Medical images contain inherent noise due to imaging equipment, operating environment and patient movement during image acquisition. A robust medical image segmentation technique is thus inevitable for accurate results in subsequent stages. The clustering technique proposed in this work updates fuzzy membership values and cluster centroids based on information gain computed from the local neighborhood of a pixel. The proposed approach is less sensitive to noise and produces homogeneous clustering. Experiments are performed on medical and non-medical images and results are compared with state of the art segmentation approaches. Analysis of visual and quantitative results verifies that the proposed approach outperforms other techniques both on noisy and noise free images. Furthermore, the proposed technique is used to segment a dataset of 300 real carotid artery ultrasound images. A decision system for plaque detection in the carotid artery is then proposed. Intima media thickness (IMT) is measured from the segmented images produced by the proposed approach. A feature vector based on IMT values is constructed for making decision about the presence of plaque in carotid artery using probabilistic neural network (PNN). The proposed decision system detects plaque in carotid artery images with high accuracy. Finally, effect of the proposed segmentation technique has also been investigated on classification of carotid artery ultrasound images.
本文提出了一种利用信息增益概念进行医学图像分割的鲁棒方法。医学图像由于成像设备、操作环境和患者在图像采集过程中的运动而存在固有噪声。因此,为了在后续阶段获得准确的结果,需要一种稳健的医学图像分割技术。本文提出的聚类技术根据从像素的局部邻域计算的信息增益更新模糊隶属度值和聚类中心。所提出的方法对噪声的敏感性较低,并且产生均匀的聚类。在医学和非医学图像上进行了实验,并将结果与最先进的分割方法进行了比较。视觉和定量结果的分析验证了所提出的方法在噪声和无噪声图像上均优于其他技术。此外,还使用该技术对 300 张真实颈动脉超声图像数据集进行分割。然后提出了一种用于颈动脉斑块检测的决策系统。从所提出的方法生成的分割图像中测量内膜中层厚度(IMT)。基于 IMT 值构建特征向量,使用概率神经网络(PNN)对颈动脉中斑块的存在做出决策。所提出的决策系统以高精度检测颈动脉图像中的斑块。最后,还研究了所提出的分割技术对颈动脉超声图像分类的影响。