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Learning Spatially-correlated Temporal Dictionaries for Calcium Imaging

机译:学习用于钙成像的空间相关的时间词典

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Calcium imaging has become a fundamental neural imaging technique, aiming to recover the individual activity of hundreds of neurons in a cortical region. Current methods (mostly matrix factorization) are aimed at detecting neurons in the field-of-view and then inferring the corresponding time-traces. In this paper, we reverse the modeling and instead aim to minimize the spatial inference, while focusing on finding the set of temporal traces present in the data. We reframe the problem in a dictionary learning setting, where the dictionary contains the time-traces and the sparse coefficient are spatial maps. We adapt dictionary learning to calcium imaging by introducing constraints on the norms and correlations of the time-traces, and incorporating a hierarchical spatial filtering model that correlates the time-trace usage over the field-of-view. We demonstrate on synthetic and real data that our solution has advantages regarding initialization, implicitly inferring number of neurons and simultaneously detecting different neuronal types.
机译:钙成像已成为神经成像技术的基本神经成像技术,旨在恢复皮质区域中数百神经元的个体活性。目前的方法(大多数矩阵分解)旨在检测视野中的神经元,然后推断相应的时间迹线。在本文中,我们反转建模,而是旨在最小化空间推断,同时重点关注找到数据中存在的时间迹线。我们在字典学习设置中重新提出问题,其中字典包含时间迹线,稀疏系数是空间地图。通过引入关于时间迹量点的规范和相关性的限制,并结合分层空间滤波模型来调整字典来钙成像,该分层空间过滤模型将时间跟踪使用与视野进行相关联。我们展示了我们的解决方案对初始化具有优势的合成和实际数据,隐含地推断出神经元数并同时检测不同的神经元类型。

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