Neurons identification of single-photon wide-field calcium fluorescent imaging data

Yubing Ma, Kaifeng Shang, Qionghai Dai, Jingtao Fan
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引用次数: 1

Abstract

Tracking neurons by analyzing their calcium imaging data has enabled biological scientists to better understand the structure and working principle of the nervous system. Several algorithms have been proposed for neurons identification, but most of them become less effective when processing data recorded by single-photon wide-field fluorescence microscopes due to low signal-to-noise ratio (SNR). Moreover, defocus blur, which is common in in vivo imaging, and interference of other biological structures near the neurons have brought greater challenges. In the face of these issues, we have presented an improved method based on the extended constrained nonnegative matrix factorization (CNMF-E) framework to better identify the spatial locations and temporal activities of the neurons. To obtain more appropriate spatial components, we have introduced regularizations into the optimization problem and applied more morphological processing. For more precise temporal components, we have performed a piecewise baseline adjustment on the neurons’ fluorescence traces and suppressed the overestimated signals caused by the estimation error of background fluctuations. Our approach has been tested on the mouse brain cortex recorded by the Real-time, Ultra-large-Scale imaging at High-resolution (RUSH) macroscope. Due to the lack of existing datasets similar to the current imaging conditions, we have manually labeled some neurons and compared the results qualitatively, which show that our method has identified the neurons more accurately compared with the original CNMF-E method.
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神经元识别的单光子宽场钙荧光成像数据
通过分析神经元的钙成像数据来跟踪神经元,使生物科学家能够更好地了解神经系统的结构和工作原理。目前已经提出了几种神经元识别算法,但由于信噪比低,大多数算法在处理单光子宽视场荧光显微镜记录的数据时效率较低。此外,在体内成像中常见的离焦模糊和神经元附近其他生物结构的干扰也带来了更大的挑战。针对这些问题,我们提出了一种基于扩展约束非负矩阵分解(CNMF-E)框架的改进方法,以更好地识别神经元的空间位置和时间活动。为了获得更合适的空间分量,我们在优化问题中引入了正则化,并应用了更多的形态学处理。对于更精确的时间分量,我们对神经元的荧光轨迹进行了分段基线调整,并抑制了由背景波动估计误差引起的高估信号。我们的方法已经在高分辨率实时、超大尺度成像(RUSH)宏观显微镜记录的小鼠大脑皮层上进行了测试。由于缺乏与当前成像条件相似的现有数据集,我们对一些神经元进行了手工标记,并对结果进行了定性比较,结果表明我们的方法比原始的CNMF-E方法更准确地识别了神经元。
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Neurons identification of single-photon wide-field calcium fluorescent imaging data CTISC 2020 List Reviewer Page CTISC 2020 Commentary Image data augmentation method based on maximum activation point guided erasure Sponsors and Supporters: CTISC 2020
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