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Smoothness without Smoothing: Why Gaussian Naive Bayes Is Not Naive for Multi-Subject Searchlight Studies

机译:平滑而不平滑:为什么高斯朴素贝叶斯对于多主题探照灯研究不是那么幼稚

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摘要

Spatial smoothness is helpful when averaging fMRI signals across multiple subjects, as it allows different subjects' corresponding brain areas to be pooled together even if they are slightly misaligned. However, smoothing is usually not applied when performing multivoxel pattern-based analyses (MVPA), as it runs the risk of blurring away the information that fine-grained spatial patterns contain. It would therefore be desirable, if possible, to carry out pattern-based analyses which take unsmoothed data as their input but which produce smooth images as output. We show here that the Gaussian Naive Bayes (GNB) classifier does precisely this, when it is used in “searchlight” pattern-based analyses. We explain why this occurs, and illustrate the effect in real fMRI data. Moreover, we show that analyses using GNBs produce results at the multi-subject level which are statistically robust, neurally plausible, and which replicate across two independent data sets. By contrast, SVM classifiers applied to the same data do not generate a replication, even if the SVM-derived searchlight maps have smoothing applied to them. An additional advantage of GNB classifiers for searchlight analyses is that they are orders of magnitude faster to compute than more complex alternatives such as SVMs. Collectively, these results suggest that Gaussian Naive Bayes classifiers may be a highly non-naive choice for multi-subject pattern-based fMRI studies.
机译:在对多个对象的fMRI信号进行平均时,空间平滑度很有帮助,因为它可以将不同对象的相应大脑区域集中在一起,即使它们稍微错位了。但是,在执行基于多体素模式的分析(MVPA)时,通常不应用平滑处理,因为这样可能会模糊掉细粒度空间模式所包含的信息。因此,如果可能的话,希望进行基于模式的分析,以不平滑的数据作为输入,但产生平滑的图像作为输出。当在基于“探照灯”模式的分析中使用高斯朴素贝叶斯(GNB)分类器时,我们可以做到这一点。我们解释了为什么会发生这种情况,并说明了在实际功能磁共振成像数据中的作用。此外,我们表明,使用GNB进行的分析会在多主题级别产生结果,这些结果在统计上是可靠的,在神经上是合理的,并且可以在两个独立的数据集之间进行复制。相比之下,即使将SVM派生的探照灯贴图应用了平滑处理,应用于相同数据的SVM分类器也不会生成复制。 GNB分类器用于探照灯分析的另一个优点是,与SVM等更复杂的替代方法相比,它们的计算速度要快几个数量级。总的来说,这些结果表明,高斯朴素贝叶斯分类器可能是基于多主体模式的功能磁共振成像研究的高度非朴素的选择。

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  • 期刊名称 other
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  • 年(卷),期 -1(8),7
  • 年度 -1
  • 页码 e69566
  • 总页数 10
  • 原文格式 PDF
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  • 入库时间 2022-08-21 11:21:25

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