2011
DOI: 10.1016/j.neuroimage.2010.10.066
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Prediction of subsequent recognition performance using brain activity in the medial temporal lobe

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Cited by 26 publications
(38 citation statements)
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References 63 publications
(130 reference statements)
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“…Is it necessary to consider attentional states to predict memory from the hippocampus during encoding? To assess the selectivity of our findings to the state-template match variable, we examined two additional variables that have been linked to encoding in prior subsequent memory studies: (i) patterns of activity without respect to attentional state (37)(38)(39), and (ii) the overall level of univariate activity (5,23,40).…”
Section: Predicting Memory From the Attentional State Of The Hippocampusmentioning
confidence: 99%
“…Is it necessary to consider attentional states to predict memory from the hippocampus during encoding? To assess the selectivity of our findings to the state-template match variable, we examined two additional variables that have been linked to encoding in prior subsequent memory studies: (i) patterns of activity without respect to attentional state (37)(38)(39), and (ii) the overall level of univariate activity (5,23,40).…”
Section: Predicting Memory From the Attentional State Of The Hippocampusmentioning
confidence: 99%
“…Methods from pattern recognition have been used for this prediction problem [1921]. In a recent fMRI study, MVPA has been used to predict subsequent memory performance for 19 participants according to the period of encoding phonogram stimuli [19]. The analysis consisted of 3 stages.…”
Section: Related Workmentioning
confidence: 99%
“…This approach predicted SWMT trial performance with 84% accuracy in healthy adults and 74% accuracy in schizophrenia adults. Overall, the related work mentioned in [1921] all used methods from pattern recognition to extract information from data and predict memory performance for each stimulus.…”
Section: Related Workmentioning
confidence: 99%
“…For example, following in the tradition of numerous fMRI studies that have used univariate analyses to examine the relationship between encoding activity in frontoparietal and MTL regions and later memory behavior (for recent meta-analyses of such studies, see Kim 2011; Uncapher & Wagner 2009), Watanabe and colleagues (2011) demonstrated that multi-voxel patterns within MTL are predictive of whether visually presented pseudowords will be subsequently recognized or forgotten. From these data alone, it is unclear whether the predictive value of the classifier was driven by diagnostic information contained within distributed activity patterns per se, or whether it capitalized on the fact that many MTL voxels tended to show greater BOLD signal on trials associated with later recognition.…”
Section: Distributed Representations In Episodic Memorymentioning
confidence: 99%