Affiliation:
1. Machine Learning Team, National Institute of Mental Health
2. Division of Biostatistics and Health Data Science, University of Minnesota
3. Laboratory for Integrative Neuroscience, National Institute on Alcohol Abuse and Alcoholism
Abstract
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
within-trial
signals into summary measures, and discard trial-level information by averaging
across-trials
. We propose a novel photometry statistical framework based on functional linear mixed modeling, which enables hypothesis testing of variable effects at
every trial time-point
, 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
joint
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. Our method identifies two dopamine components with distinct temporal dynamics that may be hard to explain under currently competing learning theories. In simulation experiments, our methodology yields improved statistical power over common analysis approaches. Finally, we provide an open-source package implementing our framework.
Publisher
eLife Sciences Publications, Ltd
Cited by
1 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献