Zhang Kangning, Tang Sean, Zhu Vivian, Barchini Majd, Yang Weijian
Department of Electrical and Computer Engineering, University of California, Davis, CA 95616, USA.
Foothill High School, Pleasanton, CA 94588, USA.
Nat Mach Intell. 2024 Sep;6(9):1106-1118. doi: 10.1038/s42256-024-00892-w. Epub 2024 Sep 19.
Two-photon calcium imaging provides large-scale recordings of neuronal activities at cellular resolution. A robust, automated and high-speed pipeline to simultaneously segment the spatial footprints of neurons and extract their temporal activity traces while decontaminating them from background, noise and overlapping neurons is highly desirable to analyze calcium imaging data. In this paper, we demonstrate DeepCaImX, an end-to-end deep learning method based on an iterative shrinkage-thresholding algorithm and a long-short-term-memory neural network to achieve the above goals altogether at a very high speed and without any manually tuned hyper-parameter. DeepCaImX is a multi-task, multi-class and multi-label segmentation method composed of a compressed-sensing-inspired neural network with a recurrent layer and fully connected layers. It represents the first neural network that can simultaneously generate accurate neuronal footprints and extract clean neuronal activity traces from calcium imaging data. We trained the neural network with simulated datasets and benchmarked it against existing state-of-the-art methods with in vivo experimental data. DeepCaImX outperforms existing methods in the quality of segmentation and temporal trace extraction as well as processing speed. DeepCaImX is highly scalable and will benefit the analysis of mesoscale calcium imaging.
双光子钙成像能够在细胞分辨率下对神经元活动进行大规模记录。为了分析钙成像数据,迫切需要一种强大、自动化且高速的流程,能够同时分割神经元的空间足迹、提取其时间活动轨迹,并去除背景、噪声和重叠神经元的干扰。在本文中,我们展示了DeepCaImX,这是一种基于迭代收缩阈值算法和长短期记忆神经网络的端到端深度学习方法,能够以非常高的速度且无需任何手动调整的超参数来实现上述目标。DeepCaImX是一种多任务、多类别和多标签分割方法,由一个具有循环层和全连接层的受压缩感知启发的神经网络组成。它是首个能够同时从钙成像数据中生成准确的神经元足迹并提取干净的神经元活动轨迹的神经网络。我们使用模拟数据集对该神经网络进行了训练,并将其与现有最先进方法进行体内实验数据的基准测试。在分割质量、时间轨迹提取以及处理速度方面,DeepCaImX均优于现有方法。DeepCaImX具有高度可扩展性,将有助于中尺度钙成像的分析。