Beyond t test and ANOVA: applications of mixed-effects models for more rigorous statistical analysis in neuroscience research

超越t检验和方差分析:混合效应模型在神经科学研究中更严谨的统计分析中的应用

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Abstract

In basic neuroscience research, data are often clustered or collected with repeated measures, hence correlated. The most widely used methods such as t test and ANOVA do not take data dependence into account and thus are often misused. This Primer introduces linear and generalized mixed-effects models that consider data dependence and provides clear instruction on how to recognize when they are needed and how to apply them. The appropriate use of mixed-effects models will help researchers improve their experimental design and will lead to data analyses with greater validity and higher reproducibility of the experimental findings.

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