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Automatic acquisition of immune cells location using deep learning for automated analysis

机译:使用深度学习自动采集免疫细胞的位置自动分析

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Immune cells are analyzed for the elucidation of the human immune system by researchers. They take a cells' movie and track manually the cells to analyze. But the manual process is hard for them. The aim of this study was reducing the load of theirs with automated cells' picking up. To pick up cells, “Recognition Frequency Space” was generated using immune cells' classifier that was made by CNN that a method of deep learning. The classifier was trained while comparing several conditions to decide the best performance classifier. Recognition Frequency Space was indicated the number of times cells are recognized from the frame image of the movie. Then, it was checked if cells were picked up from high recognized points of the space. As the result, 9 immune cells were picked up from the first frame image. The result indicates that multiple immune cells can be picked up automatically if it is used the space, and the method can reduce the load of the cell's analyst.
机译:分析免疫细胞以阐明研究人员阐明人类免疫系统。他们采用细胞的电影并手动追踪细胞分析。但是手动过程对他们来说很难。本研究的目的正在减少自动化细胞的自动化细胞的负荷。为了拾取细胞,使用由CNN制造的免疫细胞的分类器产生“识别频率空间”,该分类是一种深度学习方法。在比较若干条件来确定最佳性能分类器的同时培训分类器。识别频率空间表示从电影的帧图像识别细胞的次数。然后,检查电池是否从空间的高识别点拾取。结果,从第一帧图像拾取9个免疫细胞。结果表明,如果使用空间,可以自动拾取多个免疫细胞,并且该方法可以减少电池分析师的负载。

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