Janoos Firdaus, Brown Gregory, Mórocz Istvan A, Wells William M
Brigham and Women's Hospital, Boston, MA, USA,
Psychometrika. 2013 Apr;78(2):279-307. doi: 10.1007/s11336-012-9300-6. Epub 2012 Dec 29.
The neural correlates of working memory (WM) in schizophrenia (SZ) have been extensively studied using the multisite fMRI data acquired by the Functional Biomedical Informatics Research Network (fBIRN) consortium. Although univariate and multivariate analysis methods have been variously employed to localize brain responses under differing task conditions, important hypotheses regarding the representation of mental processes in the spatio-temporal patterns of neural recruitment and the differential organization of these mental processes in patients versus controls have not been addressed in this context. This paper uses a multivariate state-space model (SSM) to analyze the differential representation and organization of mental processes of controls and patients performing the Sternberg Item Recognition Paradigm (SIRP) WM task. The SSM is able to not only predict the mental state of the subject from the data, but also yield estimates of the spatial distribution and temporal ordering of neural activity, along with estimates of the hemodynamic response. The dynamical Bayesian modeling approach used in this study was able to find significant differences between the predictability and organization of the working memory processes of SZ patients versus healthy subjects. Prediction of some stimulus types from imaging data in the SZ group was significantly lower than controls, reflecting a greater level of disorganization/heterogeneity of their mental processes. Moreover, the changes in accuracy of predicting the mental state of the subject with respect to parametric modulations, such as memory load and task duration, may have important implications on the neurocognitive models for WM processes in both SZ and healthy adults. Additionally, the SSM was used to compare the spatio-temporal patterns of mental activity across subjects, in a holistic fashion and to derive a low-dimensional representation space for the SIRP task, in which subjects were found to cluster according to their diagnosis.
精神分裂症(SZ)工作记忆(WM)的神经关联已通过功能性生物医学信息学研究网络(fBIRN)联盟获取的多站点功能磁共振成像(fMRI)数据进行了广泛研究。尽管已采用单变量和多变量分析方法在不同任务条件下定位大脑反应,但关于神经募集的时空模式中心理过程的表征以及患者与对照组中这些心理过程的差异组织等重要假设,在此背景下尚未得到探讨。本文使用多变量状态空间模型(SSM)来分析执行斯特恩伯格项目识别范式(SIRP)WM任务的对照组和患者心理过程的差异表征与组织。SSM不仅能够从数据中预测受试者的心理状态,还能得出神经活动的空间分布和时间顺序估计值,以及血液动力学反应估计值。本研究中使用的动态贝叶斯建模方法能够发现SZ患者与健康受试者工作记忆过程的可预测性和组织之间的显著差异。SZ组中从成像数据对某些刺激类型的预测明显低于对照组,这反映出他们心理过程的紊乱/异质性程度更高。此外,关于参数调制(如记忆负荷和任务持续时间)对受试者心理状态预测准确性的变化,可能对SZ患者和健康成年人的WM过程神经认知模型具有重要意义。此外,SSM用于以整体方式比较受试者之间心理活动的时空模式,并为SIRP任务推导一个低维表征空间,发现受试者在该空间中根据诊断进行聚类。