首页> 外文期刊>NeuroImage >Spatial-temporal modelling of fMRI data through spatially regularized mixture of hidden process models
【24h】

Spatial-temporal modelling of fMRI data through spatially regularized mixture of hidden process models

机译:通过隐藏过程模型的空间正则化混合对fMRI数据进行时空建模

获取原文
获取原文并翻译 | 示例
           

摘要

Previous work investigated a range of spatio-temporal constraints for fMRI data analysis to provide robust detection of neural activation. We present a mixture-based method for the spatio-temporal modelling of fMRI data. This approach assumes that fMRI time series are generated by a probabilistic superposition of a small set of spatio-temporal prototypes (mixture components). Each prototype comprises a temporal model that explains fMRI signals on a single voxel and the model's "region of influence" through a spatial prior over the voxel space. As the key ingredient of our temporal model, the Hidden Process Model (HPM) framework proposed in Hutchinson et al. (2009) is adopted to infer the overlapping cognitive processes triggered by stimuli. Unlike the original HPM framework, we use a parametric model of Haemodynamic Response Function (HRF) so that biological constraints are naturally incorporated in the HRF estimation. The spatial priors are defined in terms of a parameterised distribution. Thus, the total number of parameters in the model does not depend on the number of voxels. The resulting model provides a conceptually principled and computationally efficient approach to identify spatio-temporal patterns of neural activation from fMRI data, in contrast to most conventional approaches in the literature focusing on the detection of spatial patterns. We first verify the proposed model in a controlled experimental setting using synthetic data. The model is further validated on real fMRI data obtained from a rapid event-related visual recognition experiment (Mayhew et al., 2012). Our model enables us to evaluate in a principled manner the variability of neural activations within individual regions of interest (ROIs). The results strongly suggest that, compared with occipitotemporal regions, the frontal ones are less homogeneous, requiring two HPM prototypes per region. Despite the rapid event-related experimental design, the model is capable of disentangling the perceptual judgement and motor response processes that are both activated in the frontal ROIs. Spatio-temporal heterogeneity in the frontal regions seems to be associated with diverse dynamic localizations of the two hidden processes in different subregions of frontal ROIs.
机译:先前的工作对fMRI数据分析研究了一系列时空约束,以提供对神经激活的可靠检测。我们为fMRI数据的时空建模提出了一种基于混合的方法。该方法假设fMRI时间序列是由一小套时空原型(混合物成分)的概率叠加生成的。每个原型都包含一个时间模型,该模型通过单个体素空间上的空间先验来解释单个体素上的fMRI信号以及模型的“影响区域”。作为我们时间模型的关键要素,Hutchinson等人提出了“隐藏过程模型”(HPM)框架。 (2009)被用来推断由刺激触发的重叠认知过程。与原始的HPM框架不同,我们使用血液动力学响应函数(HRF)的参数模型,以便在HRF估计中自然地纳入生物学限制。空间先验是根据参数化分布定义的。因此,模型中参数的总数不取决于体素的数目。所得模型提供了从原理上和计算上有效的方法来从fMRI数据中识别神经激活的时空模式,这与文献中的大多数传统方法侧重于空间模式检测相反。我们首先使用合成数据在受控的实验环境中验证提出的模型。通过从与事件相关的快速视觉识别实验获得的真实fMRI数据进一步验证该模型(Mayhew等,2012)。我们的模型使我们能够以原则性的方式评估各个感兴趣区域(ROI)内神经激活的变异性。结果强烈表明,与枕颞区相比,额叶的均质性较差,每个区域需要两个HPM原型。尽管进行了与事件相关的快速事件实验设计,该模型仍能够解开在正面ROI中都激活的知觉判断和运动反应过程。额叶区域的时空异质性似乎与额叶ROI的不同子区域中两个隐藏过程的不同动态定位有关。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号