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This article is part of the supplement: Nineteenth Annual Computational Neuroscience Meeting: CNS*2010

Open Access Poster Presentation

Oscillatory interference in parietal cortex: a mechanism to represent order in working memory

Nicolas W Schuck1* and Neil Burgess23

Author Affiliations

1 Department of Psychology, Humboldt University, 10099 Berlin, Germany

2 UCL Institute of Cognitive Neuroscience, University College London, WC1N 3AR, UK

3 UCL Institute of Neurology, University College London, WC1N 3BG, UK

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BMC Neuroscience 2010, 11(Suppl 1):P173  doi:10.1186/1471-2202-11-S1-P173

The electronic version of this article is the complete one and can be found online at:

Published:20 July 2010

© 2010 Schuck and Burgess; licensee BioMed Central Ltd.

Poster Presentation

Previous research has indicated that an oscillatory interference mechanism can explain the behaviour of entorhinal grid cells that encode the current location of an animal in continuous space [1]. Here, we show that a similar mechanism can explain the behaviour of rank-order cells in parietal cortex that encode the current position in continuous time. In line with recent neurophysiological [2] and computational [3] work we additionally propose the resulting time code to play a role in working memory for serial order. We developed a model of working memory that assumes an oscillatory interference mechanism encoding the order of items. Our assumptions are in line with single cell recordings from neurons coding for the cumulated number of encountered events [4]. The internal behaviour of the model is consistent with behaviour of neurons coding the rank order of items [5]. Our model corresponds to the temporal context signal posited by models of immediate serial recall such as [6], and can account for a number of detailed effects in working memory for serial order, and makes some novel, testable predictions.

Specifically, our model shows that an activation pattern resulting from interfering dendritic and somatic membrane potential oscillations (MPO) of different frequencies resembles the activation profiles of parietal rank-order sensitive cells. We modeled an increasing dendritic input that leads to a MPO frequency increase. The input is delivered by parietal ‘accumulator neurons’ whose firing rate increases with the number of presented items [4]. Hence, our model illuminates a possible relation between accumulator neurons and labeled-line rank order cells that has long been debated [7]. In this respect, we provide an alternative to other models on this topic [8]. Modeling an ensemble of neurons with random phase-shifts between dendritic and somatic MPOs leads to a continuous time-varying state of the neuron ensemble that can be used as a neuronal code for time or order. This code has a number of features in common with intraparietal rank-order cells [5]: The similarity-function changes its shape over time such that early in time two states are more distinct than later in time (with identical time-lag in both cases), and similarity to a specific time is a slightly left-skewed tuning curve. These properties are important as they can explain findings from numerical cognition [5] and working memory [3]. Moreover, we extended the model to simulate working memory tasks (compare [3]). There, our model predicts specific effects of inter-item-intervals on correct recall and intrusions.


This work was supported by a Erasmus SMP Scholarship and the Medical Research Council UK.


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