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Automated quantification of morphodynamics for high-throughput live cell time-lapse datasets

机译:高吞吐量实时间隔数据集自动化形态学性的量化

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We present a fully automatic method to track and quantify the morphodynamics of differentiating neurons in fluorescence time-lapse datasets. Previous high-throughput studies have been limited to static analysis or simple behavior. Our approach opens the door to rich dynamic analysis of complex cellular behavior in high-throughput time-lapse data. It is capable of robustly detecting, tracking, and segmenting all the components of the neuron including the nucleus, soma, neurites, and filopodia. It was designed to be efficient enough to handle the massive amount of data from a high-throughput screen. Each image is processed in approximately two seconds on a notebook computer. To validate the approach, we applied our method to over 500 neuronal differentiation videos from a small-scale RNAi screen. Our fully automated analysis of over 7,000 neurons quantifies and confirms with strong statistical significance static and dynamic behaviors that had been previously observed by biologists, but never measured.
机译:我们提出了一种全自动方法来跟踪和量化荧光时间流逝数据集中分化神经元的形态学性。以前的高吞吐量研究仅限于静态分析或简单行为。我们的方法为高吞吐期时间流逝数据中的复杂蜂窝行为进行了丰富的动态分析。它能够鲁棒地检测,跟踪和分割神经元的所有组分,包括细胞核,躯体,神经胶质和氟菊酯。它旨在有效地处理来自高吞吐量屏幕的大量数据。在笔记本计算机上大约两秒钟处理每个图像。为了验证方法,我们将我们的方法应用于来自小规模的RNAi屏幕超过500个神经元分化视频。我们对7,000多个神经元的全自动分析量化并确认了生物学家以前观察到的强大统计显着性静态和动态行为,但从未测量过。

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