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MACS - 一个用于模型评估、比较和选择的新 SPM 工具箱。

MACS - a new SPM toolbox for model assessment, comparison and selection.

机构信息

Bernstein Center for Computational Neuroscience, Berlin, Germany; Department of Psychology, Humboldt-Universität zu Berlin, Germany.

Bernstein Center for Computational Neuroscience, Berlin, Germany; Berlin Center for Advanced Neuroimaging, Berlin, Germany.

出版信息

J Neurosci Methods. 2018 Aug 1;306:19-31. doi: 10.1016/j.jneumeth.2018.05.017. Epub 2018 May 26.

Abstract

BACKGROUND

In cognitive neuroscience, functional magnetic resonance imaging (fMRI) data are widely analyzed using general linear models (GLMs). However, model quality of GLMs for fMRI is rarely assessed, in part due to the lack of formal measures for statistical model inference.

NEW METHOD

We introduce a new SPM toolbox for model assessment, comparison and selection (MACS) of GLMs applied to fMRI data. MACS includes classical, information-theoretic and Bayesian methods of model assessment previously applied to GLMs for fMRI as well as recent methodological developments of model selection and model averaging in fMRI data analysis.

RESULTS

The toolbox - which is freely available from GitHub - directly builds on the Statistical Parametric Mapping (SPM) software package and is easy-to-use, general-purpose, modular, readable and extendable. We validate the toolbox by reproducing model selection and model averaging results from earlier publications.

COMPARISON WITH EXISTING METHODS

A previous toolbox for model diagnosis in fMRI has been discontinued and other approaches to model comparison between GLMs have not been translated into reusable computational resources in the past.

CONCLUSIONS

Increased attention on model quality will lead to lower false-positive rates in cognitive neuroscience and increased application of the MACS toolbox will increase the reproducibility of GLM analyses and is likely to increase the replicability of fMRI studies.

摘要

背景

在认知神经科学中,功能磁共振成像 (fMRI) 数据广泛使用广义线性模型 (GLM) 进行分析。然而,由于缺乏统计模型推断的正式度量标准,GLM 对 fMRI 的模型质量很少进行评估。

新方法

我们引入了一个新的 SPM 工具包,用于评估、比较和选择应用于 fMRI 数据的 GLM(MACS)。MACS 包括以前应用于 fMRI 的 GLM 的经典、信息论和贝叶斯模型评估方法,以及 fMRI 数据分析中模型选择和模型平均的最新方法发展。

结果

该工具包——可从 GitHub 上免费获得——直接建立在统计参数映射 (SPM) 软件包之上,易于使用、通用、模块化、可读性强且可扩展。我们通过复制早期出版物中的模型选择和模型平均结果来验证该工具包。

与现有方法的比较

以前用于 fMRI 模型诊断的工具包已停产,而过去其他用于 GLM 之间模型比较的方法也没有转化为可重复使用的计算资源。

结论

对模型质量的关注增加将导致认知神经科学中的假阳性率降低,而 MACS 工具包的广泛应用将增加 GLM 分析的可重复性,并可能增加 fMRI 研究的可重复性。

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