Iftikhar Saadia, Bond Andrew R, Wagan Asim I, Weinberg Peter D, Bharath Anil A
Department of Bioengineering, Imperial College London, London SW7 2AZ, UK.
Int J Biomed Imaging. 2011;2011:270247. doi: 10.1155/2011/270247. Epub 2011 Jun 28.
This paper presents an automatic detection method for thin boundaries of silver-stained endothelial cells (ECs) imaged using light microscopy of endothelium mono-layers from rabbit aortas. To achieve this, a segmentation technique was developed, which relies on a rich feature space to describe the spatial neighbourhood of each pixel and employs a Support Vector Machine (SVM) as a classifier. This segmentation approach is compared, using hand-labelled data, to a number of standard segmentation/thresholding methods commonly applied in microscopy. The importance of different features is also assessed using the method of minimum Redundancy, Maximum Relevance (mRMR), and the effect of different SVM kernels is also considered. The results show that the approach suggested in this paper attains much greater accuracy than standard techniques; in our comparisons with manually labelled data, our proposed technique is able to identify boundary pixels to an accuracy of 93%. More significantly, out of a set of 56 regions of image data, 43 regions were binarised to a useful level of accuracy. The results obtained from the image segmentation technique developed here may be used for the study of shape and alignment of ECs, and hence patterns of blood flow, around arterial branches.
本文提出了一种自动检测方法,用于检测兔主动脉内皮单层光镜成像中银染内皮细胞(ECs)的细边界。为此,开发了一种分割技术,该技术依赖丰富的特征空间来描述每个像素的空间邻域,并采用支持向量机(SVM)作为分类器。使用手工标记的数据,将这种分割方法与显微镜中常用的一些标准分割/阈值方法进行比较。还使用最小冗余最大相关性(mRMR)方法评估不同特征的重要性,并考虑不同SVM核的效果。结果表明,本文提出的方法比标准技术具有更高的准确性;在与手工标记数据的比较中,我们提出的技术能够以93%的准确率识别边界像素。更重要的是,在一组56个图像数据区域中,43个区域被二值化到有用的准确水平。此处开发的图像分割技术所获得的结果可用于研究动脉分支周围ECs的形状和排列,进而研究血流模式。