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Novel cell segmentation and online SVM for cell cycle phase identification in automated microscopy

机译:新型细胞分割和在线SVM,用于自动显微镜中的细胞周期阶段鉴定

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Motivation: Automated identification of cell cycle phases captured via fluorescent microscopy is very important for understanding cell cycle and for drug discovery. In this article, we propose a novel cell detection method that utilizes both the intensity and shape information of the cell for better segmentation quality. In contrast to conventional off-line learning algorithms, an Online Support Vector Classifier (OSVC) is thus proposed, which removes support vectors from the old model and assigns new training examples weighted according to their importance to accommodate the ever-changing experimental conditions. Results: We image three cell lines using fluorescent microscopy under different experiment conditions, including one treated with taxol. Then, we segment and classify the cell types into interphase, prophase, metaphase and anaphase. Experimental results show the effectiveness of the proposed system in image segmentation and cell phase identification. Supplementary information: Supplementary data are available at Bioinformatics online.
机译:动机:通过荧光显微镜自动识别细胞周期阶段对于理解细胞周期和发现药物非常重要。在本文中,我们提出了一种新颖的细胞检测方法,该方法利用细胞的强度和形状信息来获得更好的分割质量。与传统的离线学习算法相反,因此提出了一种在线支持向量分类器(OSVC),该算法从旧模型中删除了支持向量,并根据其重要性对新的训练示例进行了加权,以适应不断变化的实验条件。结果:我们在不同的实验条件下使用荧光显微镜对三种细胞系进行成像,其中一种用紫杉醇处理。然后,我们将细胞类型细分为中期,前期,中期和后期。实验结果证明了该系统在图像分割和细胞相位识别中的有效性。补充信息:补充数据可从Bioinformatics在线获得。

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