Department of Industrial Engineering & Operations Research, University of California, Berkeley, CA 94720-2284.
Department of Computer Science, Universidad de Concepción, Concepción, Chile.
eNeuro. 2019 Apr 15;6(2). doi: 10.1523/ENEURO.0304-18.2019. eCollection 2019 Mar-Apr.
Calcium imaging is a key method in neuroscience for investigating patterns of neuronal activity . Still, existing algorithms to detect and extract activity signals from calcium-imaging movies have major shortcomings. We introduce the HNCcorr algorithm for cell identification in calcium-imaging datasets that addresses these shortcomings. HNCcorr relies on the combinatorial clustering problem HNC (Hochbaum's Normalized Cut), which is similar to the Normalized Cut problem of Shi and Malik, a well known problem in image segmentation. HNC identifies cells as coherent clusters of pixels that are highly distinct from the remaining pixels. HNCcorr guarantees a globally optimal solution to the underlying optimization problem as well as minimal dependence on initialization techniques. HNCcorr also uses a new method, called "similarity squared", for measuring similarity between pixels in calcium-imaging movies. The effectiveness of HNCcorr is demonstrated by its top performance on the Neurofinder cell identification benchmark. We believe HNCcorr is an important addition to the toolbox for analysis of calcium-imaging movies.
钙成像技术是神经科学中用于研究神经元活动模式的一种关键方法。然而,现有的用于从钙成像电影中检测和提取活动信号的算法存在重大缺陷。我们引入了 HNCcorr 算法,用于钙成像数据集的细胞识别,该算法解决了这些缺陷。HNCcorr 依赖于组合聚类问题 HNC(Hochbaum 的归一化切割),它类似于 Shi 和 Malik 的归一化切割问题,这是图像分割中的一个著名问题。HNC 将细胞识别为与剩余像素高度不同的像素的连贯聚类。HNCcorr 保证了底层优化问题的全局最优解,并且对初始化技术的依赖性最小。HNCcorr 还使用了一种称为“相似性平方”的新方法来测量钙成像电影中像素之间的相似性。HNCcorr 在 Neurofinder 细胞识别基准测试中表现出最佳性能,证明了其有效性。我们相信 HNCcorr 是钙成像电影分析工具箱的重要补充。