首页> 外文期刊>Medical and Biological Engineering and Computing: Journal of the International Federation for Medical and Biological Engineering >Toward an automatic tool for oligoclonal band detection in cerebrospinal fluid and tears for multiple sclerosis diagnosis: lane segmentation based on a ribbon univariate open active contour
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Toward an automatic tool for oligoclonal band detection in cerebrospinal fluid and tears for multiple sclerosis diagnosis: lane segmentation based on a ribbon univariate open active contour

机译:朝向脑脊髓液中的寡晶频带检测的自动工具及多发性硬化诊断的泪水:基于带非变动开放活性轮廓的车道分割

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The latest revision of multiple sclerosis diagnosis guidelines emphasizes the role of oligoclonal band detection in isoelectric focusing images of cerebrospinal fluid. Recent studies suggest tears as a promising noninvasive alternative to cerebrospinal fluid. We are developing the first automatic method for isoelectric focusing image analysis and oligoclonal band detection in cerebrospinal fluid and tear samples. The automatic analysis would provide an accurate, fast analysis and would reduce the expert-dependent variability and errors of the current visual analysis. In this paper, we describe a new effective model for the fully automated segmentation of highly distorted lanes in isoelectric focusing images. This approach is a new formulation of the classic parametric active contour problem, in which an open active contour is constrained to move from the top to the bottom of the image, and the x-axis coordinate is expressed as a function of the y-axis coordinate. The left and right edges of the lane evolved together in a ribbon-like shape so that the full width of the lane was captured reliably. The segmentation algorithm was implemented using a multiresolution approach in which the scale factor and the active contour control points were progressively increased. The lane segmentation algorithm was tested on a database of 51 isoelectric focusing images containing 419 analyzable lanes. The new model gave robust results for highly curved lanes, weak edges, and low-contrast lanes. A total of 98.8% of the lanes were perfectly segmented, and the remaining 1.2% had only minor errors. The computation time (1 s per membrane) is negligible. This method precisely defines the region of interest in each lane and thus is a major step toward the first fully automatic tool for oligoclonal band detection in isoelectric focusing images.
机译:多发性硬化诊断指南的最新修订强调了寡核苷酸带检测在脑脊液的等电聚焦图像中的作用。最近的研究表明泪水作为脑脊液的有希望的非侵入性替代品。我们正在脑脊液和撕样中的等电聚焦图像分析和寡核频带检测的第一方法。自动分析将提供准确,快速的分析,并会降低专家依赖性可变性和当前视觉分析的误差。在本文中,我们描述了一种新的有效模型,用于在等电聚焦图像中高度扭曲通道的全自动分割。该方法是经典参数的新配方,其中打开的活动轮廓被约束以从图像的顶部移动以移动,并且X轴坐标表示为Y轴的函数协调。车道的左和右边缘以带状形状一起演变在一起,使得通道的全宽可靠地捕获。使用多分辨率方法实现分割算法,其中逐渐增加了比例因子和有源轮廓控制点。在包含419个可分析的车道的51个等电聚焦图像的数据库上测试了车道分割算法。新模型对高弯曲的车道,弱边缘和低对比度通道提供了强大的结果。总共98.8%的车道完全分割,其余的1.2%只有轻微的错误。计算时间(每个膜)可忽略不计。该方法精确地定义了每个车道的感兴趣区域,因此是朝着等电聚焦图像中的寡核频带检测的第一全自动工具的主要步骤。

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