论文标题
将结构化假设与概率图形模型合并到fMRI数据分析中
Incorporating structured assumptions with probabilistic graphical models in fMRI data analysis
论文作者
论文摘要
随着认知神经科学研究人员对功能磁共振成像(fMRI)的广泛采用,近年来已经积累了大量脑成像数据。将这些数据汇总到得出科学见解通常面临着fMRI数据高维,跨越人群异质和嘈杂的挑战。这些挑战需要开发用于神经科学问题和数据属性的计算工具。我们回顾了一些最近在fMRI研究的各个领域开发的算法:自然主义任务中的fMRI,分析全脑功能连通性,模式分类,推断代表性相似性和建模结构化残差。这些算法都同样解决了fMRI中的挑战:它们首先要清楚地陈述有关神经数据和现有领域知识的假设,将这些假设和域知识纳入概率图形模型,然后使用这些模型来估计数据中兴趣或潜在结构的属性。这种方法可以避免错误的发现,减少噪声的影响,更好地利用数据的已知特性,并在受试者组中更好地汇总数据。通过这些成功的案例,我们主张在认知神经科学中更广泛地采用明确的模型构建。尽管我们专注于fMRI,但此处说明的原理通常适用于其他方式的大脑数据。
With the wide adoption of functional magnetic resonance imaging (fMRI) by cognitive neuroscience researchers, large volumes of brain imaging data have been accumulated in recent years. Aggregating these data to derive scientific insights often faces the challenge that fMRI data are high-dimensional, heterogeneous across people, and noisy. These challenges demand the development of computational tools that are tailored both for the neuroscience questions and for the properties of the data. We review a few recently developed algorithms in various domains of fMRI research: fMRI in naturalistic tasks, analyzing full-brain functional connectivity, pattern classification, inferring representational similarity and modeling structured residuals. These algorithms all tackle the challenges in fMRI similarly: they start by making clear statements of assumptions about neural data and existing domain knowledge, incorporating those assumptions and domain knowledge into probabilistic graphical models, and using those models to estimate properties of interest or latent structures in the data. Such approaches can avoid erroneous findings, reduce the impact of noise, better utilize known properties of the data, and better aggregate data across groups of subjects. With these successful cases, we advocate wider adoption of explicit model construction in cognitive neuroscience. Although we focus on fMRI, the principle illustrated here is generally applicable to brain data of other modalities.