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ABLE: An Activity-Based Level Set Segmentation Algorithm for Two-Photon Calcium Imaging Data

机译:ABLE:双光子钙成像数据的基于活动的水平集分割算法

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摘要

We present an algorithm for detecting the location of cells from two-photon calcium imaging data. In our framework, multiple coupled active contours evolve, guided by a model-based cost function, to identify cell boundaries. An active contour seeks to partition a local region into two subregions, a cell interior and exterior, in which all pixels have maximally “similar” time courses. This simple, local model allows contours to be evolved predominantly independently. When contours are sufficiently close, their evolution is coupled, in a manner that permits overlap. We illustrate the ability of the proposed method to demix overlapping cells on real data. The proposed framework is flexible, incorporating no prior information regarding a cell’s morphology or stereotypical temporal activity, which enables the detection of cells with diverse properties. We demonstrate algorithm performance on a challenging mouse in vitro dataset, containing synchronously spiking cells, and a manually labelled mouse in vivo dataset, on which ABLE (the proposed method) achieves a 67.5% success rate.
机译:我们提出了一种从双光子钙成像数据检测细胞位置的算法。在我们的框架中,在基于模型的成本函数的指导下,多个耦合的活动轮廓不断发展,以识别单元边界。主动轮廓线试图将局部区域划分为两个子区域,即单元内部和外部,其中所有像素具有最大的“相似”时程。这种简单的局部模型可以使轮廓主要独立地演化。当轮廓足够接近时,它们的演化以允许重叠的方式耦合。我们说明了所提出的方法对真实数据上的重叠单元进行混合的能力。拟议的框架具有灵活性,不包含有关细胞形态或定型时间活动的先前信息,从而可以检测具有多种特性的细胞。我们展示了在具有挑战性的小鼠体外数据集上的算法性能,该数据集包含同步加标细胞,以及手动标记的小鼠体内数据集,在该数据集上ABLE(提出的方法)成功率为67.5%。

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