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首页> 外文期刊>Journal of Neuroscience Methods >A multivariate, multitaper approach to detecting and estimating harmonic response in cortical optical imaging data.
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A multivariate, multitaper approach to detecting and estimating harmonic response in cortical optical imaging data.

机译:一种用于检测和估计皮质光学成像数据中谐波响应的多元,多锥度方法。

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The efficiency and accuracy of cortical maps from optical imaging experiments have been improved using periodic stimulation protocols. The resulting data analysis requires the detection and estimation of periodic information in a multivariate dataset. To date, these analyses have relied on discrete Fourier transform (DFT) sinusoid estimates. Multitaper methods have become common statistical tools in the analysis of univariate time series that can give improved estimates. Here, we extend univariate multitaper harmonic analysis methods to the multivariate, imaging context. Given the hypothesis that a coherent oscillation across many pixels exists within a specified bandwidth, we investigate the problem of its detection and estimation in noisy data by constructing Hotelling's generalized T(2)-test. We then extend the investigation of this problem in two contexts, that of standard canonical variate analysis (CVA) and that of generalized indicator function analysis (GIFA) which is often more robust in extracting a signal in spatially correlated noise. We provide detailed information on the fidelities of the mean estimates found with our methods and comparison with DFT estimates. Our results indicate that GIFA provides particularly good estimates of harmonic signals in spatially correlated noise and is useful for detecting small amplitude harmonic signals in applications such as biological imaging measurements where spatially correlated noise is common. We demonstrate the power of our methods with an optical imaging dataset of the periodic response to a periodically rotating oriented drifting grating stimulus experiment in cat visual cortex.
机译:光学成像实验的皮质图谱的效率和准确性已使用周期性刺激方案得到了改善。结果数据分析需要检测和估计多元数据集中的周期性信息。迄今为止,这些分析都依赖于离散傅里叶变换(DFT)正弦估计。多变量方法已成为分析单变量时间序列的常用统计工具,可以提供更好的估计。在这里,我们将单变量多锥谐波分析方法扩展到多变量成像环境。给定一个假设,即在指定带宽内存在许多像素上的相干振荡,我们通过构造Hotelling的广义T(2)检验来研究其在噪声数据中的检测和估计问题。然后,我们在两个背景下扩展了对这个问题的研究,即标准规范变量分析(CVA)和广义指标函数分析(GIFA)的研究,后者通常在提取空间相关噪声中的信号时更强大。我们提供有关使用我们的方法发现的平均估计值的保真度以及与DFT估计值比较的详细信息。我们的结果表明,GIFA可对空间相关噪声中的谐波信号提供特别好的估计,并且对于在空间相关噪声很常见的生物成像测量等应用中检测小幅度谐波信号很有用。我们用光学成像数据集展示了我们的方法的功能,该数据集是对猫视觉皮层中周期性旋转的定向漂移光栅刺激实验的周期性响应的。

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