Waveform-based classification of dentate spikes

Synchronous excitatory discharges from the entorhinal cortex (EC) to the dentate gyrus (DG) generate fast and prominent patterns in the hilar local field potential (LFP), called dentate spikes (DSs). As sharp-wave ripples in CA1, DSs are more likely to occur in quiet behavioral states, when memory c...

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Main Authors: Santiago, RMM, Lopes Dos Santos, V, Aery Jones, EA, Huang, Y, Dupret, D, Tort, ABL
Format: Journal article
Language:English
Published: Springer Nature 2024
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author Santiago, RMM
Lopes Dos Santos, V
Aery Jones, EA
Huang, Y
Dupret, D
Tort, ABL
author_facet Santiago, RMM
Lopes Dos Santos, V
Aery Jones, EA
Huang, Y
Dupret, D
Tort, ABL
author_sort Santiago, RMM
collection OXFORD
description Synchronous excitatory discharges from the entorhinal cortex (EC) to the dentate gyrus (DG) generate fast and prominent patterns in the hilar local field potential (LFP), called dentate spikes (DSs). As sharp-wave ripples in CA1, DSs are more likely to occur in quiet behavioral states, when memory consolidation is thought to take place. However, their functions in mnemonic processes are yet to be elucidated. The classification of DSs into types 1 or 2 is determined by their origin in the lateral or medial EC, as revealed by current source density (CSD) analysis, which requires recordings from linear probes with multiple electrodes spanning the DG layers. To allow the investigation of the functional role of each DS type in recordings obtained from single electrodes and tetrodes, which are abundant in the field, we developed an unsupervised method using Gaussian mixture models to classify such events based on their waveforms. Our classification approach achieved high accuracies (> 80%) when validated in 8 mice with DG laminar profiles. The average CSDs, waveforms, rates, and widths of the DS types obtained through our method closely resembled those derived from the CSD-based classification. As an example of application, we used the technique to analyze single-electrode LFPs from apolipoprotein (apo) E3 and apoE4 knock-in mice. We observed that the latter group, which is a model for Alzheimer’s disease, exhibited wider DSs of both types from a young age, with a larger effect size for DS type 2, likely reflecting early pathophysiological alterations in the EC-DG network, such as hyperactivity. In addition to the applicability of the method in expanding the study of DS types, our results show that their waveforms carry information about their origins, suggesting different underlying network dynamics and roles in memory processing.
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spelling oxford-uuid:cfe7851d-7618-40d3-85f9-343088d326442024-05-21T11:15:02ZWaveform-based classification of dentate spikesJournal articlehttp://purl.org/coar/resource_type/c_dcae04bcuuid:cfe7851d-7618-40d3-85f9-343088d32644EnglishSymplectic ElementsSpringer Nature2024Santiago, RMMLopes Dos Santos, VAery Jones, EAHuang, YDupret, DTort, ABLSynchronous excitatory discharges from the entorhinal cortex (EC) to the dentate gyrus (DG) generate fast and prominent patterns in the hilar local field potential (LFP), called dentate spikes (DSs). As sharp-wave ripples in CA1, DSs are more likely to occur in quiet behavioral states, when memory consolidation is thought to take place. However, their functions in mnemonic processes are yet to be elucidated. The classification of DSs into types 1 or 2 is determined by their origin in the lateral or medial EC, as revealed by current source density (CSD) analysis, which requires recordings from linear probes with multiple electrodes spanning the DG layers. To allow the investigation of the functional role of each DS type in recordings obtained from single electrodes and tetrodes, which are abundant in the field, we developed an unsupervised method using Gaussian mixture models to classify such events based on their waveforms. Our classification approach achieved high accuracies (> 80%) when validated in 8 mice with DG laminar profiles. The average CSDs, waveforms, rates, and widths of the DS types obtained through our method closely resembled those derived from the CSD-based classification. As an example of application, we used the technique to analyze single-electrode LFPs from apolipoprotein (apo) E3 and apoE4 knock-in mice. We observed that the latter group, which is a model for Alzheimer’s disease, exhibited wider DSs of both types from a young age, with a larger effect size for DS type 2, likely reflecting early pathophysiological alterations in the EC-DG network, such as hyperactivity. In addition to the applicability of the method in expanding the study of DS types, our results show that their waveforms carry information about their origins, suggesting different underlying network dynamics and roles in memory processing.
spellingShingle Santiago, RMM
Lopes Dos Santos, V
Aery Jones, EA
Huang, Y
Dupret, D
Tort, ABL
Waveform-based classification of dentate spikes
title Waveform-based classification of dentate spikes
title_full Waveform-based classification of dentate spikes
title_fullStr Waveform-based classification of dentate spikes
title_full_unstemmed Waveform-based classification of dentate spikes
title_short Waveform-based classification of dentate spikes
title_sort waveform based classification of dentate spikes
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AT lopesdossantosv waveformbasedclassificationofdentatespikes
AT aeryjonesea waveformbasedclassificationofdentatespikes
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AT dupretd waveformbasedclassificationofdentatespikes
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