Loewinger Gabriel, Cui Erjia, Lovinger David M, Pereira Francisco
bioRxiv. 2024 Oct 19:2023.11.06.565896. doi: 10.1101/2023.11.06.565896.
Fiber photometry has become a popular technique to measure neural activity in vivo, but common analysis strategies can reduce detection of effects because they condense signals into summary measures, and discard trial-level information by averaging . We propose a novel photometry statistical framework based on functional linear mixed modeling, which enables hypothesis testing of variable effects at , and uses trial-level signals without averaging. This makes it possible to compare the timing and magnitude of signals across conditions while accounting for between-animal differences. Our framework produces a series of plots that illustrate covariate effect estimates and statistical significance at each trial time-point. By exploiting signal autocorrelation, our methodology yields 95% confidence intervals that account for inspecting effects across the entire trial and improve the detection of event-related signal changes over common multiple comparisons correction strategies. We reanalyze data from a recent study proposing a theory for the role of mesolimbic dopamine in reward learning, and show the capability of our framework to reveal significant effects obscured by standard analysis approaches. For example, our method identifies two dopamine components with distinct temporal dynamics in response to reward delivery. In simulation experiments, our methodology yields improved statistical power over common analysis approaches. Finally, we provide an open-source package and analysis guide for applying our framework.
光纤光度法已成为一种在体内测量神经活动的常用技术,但常见的分析策略可能会降低效应检测能力,因为它们将信号浓缩为汇总测量值,并通过平均丢弃试验水平的信息。我们提出了一种基于功能线性混合建模的新型光度统计框架,该框架能够在试验水平对可变效应进行假设检验,并且使用未经平均的试验水平信号。这使得在考虑动物个体差异的同时,能够比较不同条件下信号的时间和幅度。我们的框架生成了一系列图表,展示了每个试验时间点的协变量效应估计值和统计显著性。通过利用信号自相关性,我们的方法产生了95%的置信区间,该区间考虑了整个试验过程中的效应检查,并比常见的多重比较校正策略更能提高对事件相关信号变化的检测能力。我们重新分析了最近一项研究的数据,该研究提出了中脑边缘多巴胺在奖励学习中作用的理论,并展示了我们框架揭示标准分析方法所掩盖的显著效应的能力。例如,我们的方法识别出了两个对奖励发放具有不同时间动态的多巴胺成分。在模拟实验中,我们的方法比常见分析方法具有更高的统计功效。最后,我们提供了一个开源软件包和分析指南,用于应用我们的框架。