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首页> 外文期刊>Communications in Numerical Methods in Engineering >Phase contrast cell detection using multilevel classification
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Phase contrast cell detection using multilevel classification

机译:使用多级分类的相衬细胞检测

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摘要

In this paper, we propose a fully automated learning-based approach for detecting cells in time-lapse phase contrast images. The proposed system combines 2 machine learning approaches to achieve bottom-up image segmentation. We apply pixel-wise classification using random forests (RF) classifiers to determine the potential location of the cells. Each pixel is classified into 4 categories (cell, mitotic cell, halo effect, and background noise). Various image features are extracted at different scales to train the RF classifier. The resulting probability map is partitioned using the k-means algorithm to form potential cell regions. These regions are expanded into the neighboring areas to recover some missing or broken cell regions. To validate the cell regions, another machine learning method based on the bag-of-features and spatial pyramid encoding is proposed. The result of the second classifier can be a validated cell, a merged cell, or a noncell. In the case that the cell region is classified as a merged cell, it is split by using the seeded watershed method. The proposed method is demonstrated on several phase contrast image datasets, ie, U2OS, HeLa, and NIH 3T3. In comparison to state-of-the-art cell detection techniques, the proposed method shows improved performance, particularly in dealing with noise interference and drastic shape variations.
机译:在本文中,我们提出了一种基于全自动学习的方法来检测延时相衬图像中的细胞。提出的系统结合了2种机器学习方法来实现自底向上的图像分割。我们使用随机森林(RF)分类器应用逐像素分类,以确定细胞的潜在位置。每个像素分为4类(细胞,有丝分裂细胞,晕轮效应和背景噪声)。以不同的比例提取各种图像特征以训练RF分类器。使用k均值算法对所得的概率图进行分区,以形成潜在的单元区域。这些区域扩展到相邻区域以恢复一些丢失或损坏的单元区域。为了验证细胞区域,提出了另一种基于特征包和空间金字塔编码的机器学习方法。第二个分类器的结果可以是经过验证的单元格,合并的单元格或非单元格。在将细胞区域归类为合并细胞的情况下,可以使用种子分水岭方法将其拆分。在几个相衬图像数据集(即U2OS,HeLa和NIH 3T3)上证明了该方法。与最新的小区检测技术相比,该方法显示出更高的性能,尤其是在处理噪声干扰和剧烈形状变化方面。

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