神经科学
星形胶质细胞
钙显像
人口
动力学(音乐)
神经活动
荧光寿命成像显微镜
神经递质
荧光
计算机科学
生物
生物系统
生物物理学
化学
钙
物理
中枢神经系统
医学
环境卫生
量子力学
有机化学
声学
作者
Yizhi Wang,Nicole DelRosso,Trisha V. Vaidyanathan,Michelle K. Cahill,Michael E. Reitman,Silvia Pittolo,Xuelong Mi,Guoqiang Yu,Kira E. Poskanzer
标识
DOI:10.1038/s41593-019-0492-2
摘要
Recent work examining astrocytic physiology centers on fluorescence imaging, due to development of sensitive fluorescent indicators and observation of spatiotemporally complex calcium activity. However, the field remains hindered in characterizing these dynamics, both within single cells and at the population level, because of the insufficiency of current region-of-interest-based approaches to describe activity that is often spatially unfixed, size-varying and propagative. Here we present an analytical framework that releases astrocyte biologists from region-of-interest-based tools. The Astrocyte Quantitative Analysis (AQuA) software takes an event-based perspective to model and accurately quantify complex calcium and neurotransmitter activity in fluorescence imaging datasets. We apply AQuA to a range of ex vivo and in vivo imaging data and use physiologically relevant parameters to comprehensively describe the data. Since AQuA is data-driven and based on machine learning principles, it can be applied across model organisms, fluorescent indicators, experimental modes, and imaging resolutions and speeds, enabling researchers to elucidate fundamental neural physiology.
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