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Resolving clustered worms via probabilistic shape models

机译:通过概率形状模型解决集群蠕虫

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The roundworm Caenorhabditis elegans is an effective model system for biological processes such as immunity, behavior, and metabolism. Robotic sample preparation together with automated microscopy and image analysis has recently enabled high-throughput screening experiments using C. elegans. So far, such experiments have been limited to per-image measurements due to the tendency of the worms to cluster, which prevents extracting features from individual animals. We present a novel approach for the extraction of individual C. elegans from clusters of worms in high-throughput microscopy images. The key ideas are the construction of a low-dimensional shape-descriptor space and the definition of a probability measure on it. Promising segmentation results are shown.
机译:worm虫秀丽隐杆线虫是用于免疫,行为和代谢等生物学过程的有效模型系统。机器人样品制备以及自动显微镜和图像分析功能最近使使用秀丽隐杆线虫的高通量筛选实验成为可能。到目前为止,由于蠕虫会聚簇,从而阻止了从单个动物中提取特征,因此此类实验仅限于按图像进行测量。我们提出了一种从高通量显微镜图像中的蠕虫簇中提取单个秀丽线虫的新方法。关键思想是构造低维形状描述符空间以及在其上定义概率度量。显示了有希望的细分结果。

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