基于鲁棒估计和灵活轮廓模型的高背景变化重叠核自动分割

W. Clocksin
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引用次数: 37

摘要

我们提出了一种分割方法,适用于背景强度变化较大的噪声图像中重叠和紧密堆积的核。该方法已在白细胞间期细胞核的荧光原位杂交图像上进行了测试。准确的分割是需要的,以支持在每个区域每个核的基础上分析端粒含量的自动程序。该方法首先为每个核找到一个唯一标识该核的种子点。采用基于鲁棒非参数密度估计的高效迭代寻模算法定位种子点。同时作用于图像中的所有核,并以种子点为原点,扩展灵活的封闭轮廓,直到每个核都被限定。与以前的方法不同,轮廓方程包含一个排斥项,防止不同的轮廓相交,从而保持附近或重叠核的身份,并且轮廓自适应重新网格化以提高效率。种子点的位置对于提供准确的分割并不重要。从实现的角度来看,该方法的优点是与其他方法相比,种子点和轮廓的计算效率高,鲁棒性好。该方法是用数据从临床试点研究说明。
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Automatic segmentation of overlapping nuclei with high background variation using robust estimation and flexible contour models
We present a segmentation method that works for overlapping and closely packed nuclei in noisy images that have high variation in background intensity. The method has been tested on fluorescence in-situ hybridisation images of interphase leucocyte nuclei. Accurate segmentation is required in support of an automatic procedure for assaying telomere content on a per area per nucleus basis. The method first finds a single seed point for each nucleus that uniquely identifies that nucleus. Seed points are located by an efficient iterative mode-finding algorithm based on robust nonparametric density estimation. Acting simultaneously on all nuclei in the image, and using the seed points as origins, flexible closed contours are dilated until each nucleus is circumscribed. Unlike previous approaches, the contour equations include a repulsive term that prevents different contours from intersecting, thereby preserving the identity of nearby or overlapping nuclei, and the contour is adaptively remeshed for greater efficiency The locations of the seed points are not critical in providing an accurate segmentation. The advantage of this method from an implementation point of view is that the computation of seed points and contours is highly efficient and robust compared with alternative approaches. The method is illustrated using data from a clinical pilot study.
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