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Synthetic Patches, Real Images: Screening for Centrosome Aberrations in EM Images of Human Cancer Cells

机译:合成补丁,真实图像:筛选人类癌细胞EM图像中的中心体畸变

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Recent advances in high-throughput electron microscopy imaging enable detailed study of centrosome aberrations in cancer cells. While the image acquisition in such pipelines is automated, manual detection of centrioles is still necessary to select cells for re-imaging at higher magnification. In this contribution we propose an algorithm which performs this step automatically and with high accuracy. From the image labels produced by human experts and a 3D model of a cen-triole we construct an additional training set with patch-level labels. A two-level DenseNet is trained on the hybrid training data with synthetic patches and real images, achieving much better results on real patient data than training only at the image-level. The code can be found at https://github.com/kreshuklab/centriole_detection.
机译:高通量电子显微镜成像的最新进展使得能够详细研究癌细胞中的中心体畸变。尽管在这样的管道中进行图像采集是自动的,但是仍然需要手动检测中心粒来选择要在更高放大倍率下进行重新成像的细胞。在本文中,我们提出了一种算法,该算法可以自动且高精度地执行此步骤。根据人类专家制作的图像标签和中三叉戟的3D模型,我们构建了带有补丁级别标签的附加训练集。两级DenseNet在具有合成补丁和真实图像的混合训练数据上进行了训练,与仅在图像级别上进行训练相比,在真实患者数据上获得了更好的结果。可以在https://github.com/kreshuklab/centriole_detection中找到该代码。

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