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Multilayer Encoder-Decoder Network for 3D Nuclear Segmentation in Spheroid Models of Human Mammary Epithelial Cell Lines

机译:人乳腺上皮细胞系球体模型中用于3D核分割的多层编码器/解码器网络

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摘要

Nuclear segmentation is an important step in quantitative profiling of colony organization in 3D cell culture models. However, complexities arise from technical variations and biological heterogeneities. We proposed a new 3D segmentation model based on convolutional neural networks for 3D nuclear segmentation, which overcomes the complexities associated with non-uniform staining, aberrations in cellular morphologies, and cells being in different states. The uniqueness of the method originates from (i) volumetric operations to capture all the three-dimensional features, and (ii) the encoder-decoder architecture, which enables segmentation of the spheroid models in one forward pass. The method is validated with four human mammary epithelial cell (HMEC) lines-each with unique genetic makeup. The performance of the proposed method is compared with the previous methods and is shown that the deep learning model has a superior pixel-based segmentation, and an F1-score of 0.95 is reported.
机译:核分割是3D细胞培养模型中菌落组织定量分析的重要步骤。但是,复杂性来自技术差异和生物学异质性。我们提出了一种基于卷积神经网络的3D分割模型,用于3D核分割,它克服了与非均匀染色,细胞形态畸变以及细胞处于不同状态有关的复杂性。该方法的独特性源于(i)捕获所有三维特征的体积运算,以及(ii)编码器-解码器体系结构,该体系结构使球体模型可以在一个前向通过中进行分段。该方法已通过四种具有独特遗传组成的人乳腺上皮细胞(HMEC)品系进行了验证。将该方法的性能与以前的方法进行比较,结果表明深度学习模型具有基于像素的出色分割,并且报告的F1得分为0.95。

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