Lee Dongha, Yun Sungjae, Jang Changwon, Park Hae-Jeong
Faculty of Psychology and Education Sciences, University of Coimbra, Coimbra, Portugal.
Center for Systems and Translational Brain Sciences, Institute of Human Complexity and Systems Science, Yonsei University, Seoul, Republic of Korea.
PLoS One. 2017 Aug 4;12(8):e0182657. doi: 10.1371/journal.pone.0182657. eCollection 2017.
This study proposes a method for classifying event-related fMRI responses in a specialized setting of many known but few unknown stimuli presented in a rapid event-related design. Compared to block design fMRI signals, classification of the response to a single or a few stimulus trial(s) is not a trivial problem due to contamination by preceding events as well as the low signal-to-noise ratio. To overcome such problems, we proposed a single trial-based classification method of rapid event-related fMRI signals utilizing sparse multivariate Bayesian decoding of spatio-temporal fMRI responses. We applied the proposed method to classification of memory retrieval processes for two different classes of episodic memories: a voluntarily conducted experience and a passive experience induced by watching a video of others' actions. A cross-validation showed higher classification performance of the proposed method compared to that of a support vector machine or of a classifier based on the general linear model. Evaluation of classification performances for one, two, and three stimuli from the same class and a correlation analysis between classification accuracy and target stimulus positions among trials suggest that presenting two target stimuli at longer inter-stimulus intervals is optimal in the design of classification experiments to identify the target stimuli. The proposed method for decoding subject-specific memory retrieval of voluntary behavior using fMRI would be useful in forensic applications in a natural environment, where many known trials can be extracted from a simulation of everyday tasks and few target stimuli from a crime scene.
本研究提出了一种方法,用于在快速事件相关设计中呈现许多已知但少数未知刺激的特定环境下,对事件相关功能磁共振成像(fMRI)反应进行分类。与组块设计fMRI信号相比,由于先前事件的干扰以及低信噪比,对单个或少数刺激试验的反应进行分类并非易事。为克服此类问题,我们提出了一种基于单次试验的快速事件相关fMRI信号分类方法,该方法利用时空fMRI反应的稀疏多变量贝叶斯解码。我们将所提出的方法应用于对两类不同情景记忆的记忆检索过程进行分类:一种是自愿进行的经历,另一种是通过观看他人行动视频诱发的被动经历。交叉验证表明,与支持向量机或基于一般线性模型的分类器相比,所提出的方法具有更高的分类性能。对同一类别的一个、两个和三个刺激的分类性能评估以及试验之间分类准确性与目标刺激位置的相关性分析表明,在分类实验设计中,以较长的刺激间隔呈现两个目标刺激对于识别目标刺激是最优的。所提出的使用fMRI解码特定个体自愿行为记忆检索的方法,在自然环境中的法医应用中可能会很有用,在这种环境中,可以从日常任务模拟中提取许多已知试验,而从犯罪现场提取少数目标刺激。