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首页> 外文期刊>Artificial intelligence in medicine >Tracking leukocytes in intravital time lapse images using 3D cell association learning network
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Tracking leukocytes in intravital time lapse images using 3D cell association learning network

机译:使用3D小区关联学习网络跟踪脊髓轮廓时间间隔图像中的白细胞

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摘要

Leukocytes are key cellular elements of the innate immune system in all vertebrates, which play a crucial role in defending organisms against invading pathogens. Tracking these highly migratory and amorphous cells in in vivo models such as zebrafish embryos is a challenging task in cellular immunology. As temporal and special analysis of these imaging datasets by a human operator is quite laborious, developing an automated cell tracking method is highly in demand. Despite the remarkable advances in cell detection, this field still lacks powerful algorithms to accurately associate the detected cell across time frames. The cell association challenge is mostly related to the amorphous nature of cells, and their complicated motion profile through their migratory paths. To tackle the cell association challenge, we proposed a novel deep-learning-based object linkage method. For this aim, we trained the 3D cell association learning network (3D-CALN) with enough manually labelled paired 3D images of single fluorescent zebrafish's neutrophils from two consecutive frames. Our experiment results prove that deep learning is significantly applicable in cell linkage and particularly for tracking highly mobile and amorphous leukocytes. A comparison of our tracking accuracy with other available tracking algorithms shows that our approach performs well in relation to addressing cell tracking problems.
机译:白细胞是所有脊椎动物的先天免疫系统的关键细胞元素,这在捍卫生物体对入侵病原体起着至关重要的作用。在体内模型中跟踪这些高度迁徙和无定形细胞,例如斑马鱼胚胎是细胞免疫学中的一个具有挑战性的任务。作为人类操作员对这些成像数据集的时间和特殊分析相当艰苦,开发自动电池跟踪方法是高度需求。尽管细胞检测卓越,但该字段仍然缺乏强大的算法,以便在时间框架上准确关联检测到的单元格。细胞联合攻击大多数与细胞的无定形性质相关,以及通过其迁移路径的复杂运动谱系。为了解决细胞协会挑战,我们提出了一种基于深度学习的对象链接方法。为此目的,我们培训了3D小区关联学习网络(3D-CALN),具有足够的手动标记的单个荧光斑马鱼中嗜中性粒细胞的配对3D图像,从两个连续框架中培训。我们的实验结果证明,深入学习在细胞联系中显着应用,特别是跟踪高度移动和无定形白细胞。与其他可用跟踪算法的跟踪精度进行比较,表明我们的方法符合解决小区跟踪问题。

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