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  1. Home
  2. Indian Institute of Technology Madras
  3. Publication1
  4. A deep network-based model of hippocampal memory functions under normal and Alzheimer’s disease conditions
 
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A deep network-based model of hippocampal memory functions under normal and Alzheimer’s disease conditions

Date Issued
01-01-2023
Author(s)
Kanagamani, Tamizharasan
V Srinivasa Chakravarthy 
Indian Institute of Technology, Madras
Ravindran, Balaraman
Menon, Ramshekhar N.
DOI
10.3389/fncir.2023.1092933
Abstract
We present a deep network-based model of the associative memory functions of the hippocampus. The proposed network architecture has two key modules: (1) an autoencoder module which represents the forward and backward projections of the cortico-hippocampal projections and (2) a module that computes familiarity of the stimulus and implements hill-climbing over the familiarity which represents the dynamics of the loops within the hippocampus. The proposed network is used in two simulation studies. In the first part of the study, the network is used to simulate image pattern completion by autoassociation under normal conditions. In the second part of the study, the proposed network is extended to a heteroassociative memory and is used to simulate picture naming task in normal and Alzheimer’s disease (AD) conditions. The network is trained on pictures and names of digits from 0 to 9. The encoder layer of the network is partly damaged to simulate AD conditions. As in case of AD patients, under moderate damage condition, the network recalls superordinate words (“odd” instead of “nine”). Under severe damage conditions, the network shows a null response (“I don’t know”). Neurobiological plausibility of the model is extensively discussed.
Volume
17
Subjects
  • Alzheimer’s disease

  • associative memory re...

  • autoencoder

  • dopamine

  • familiarity

  • hippocampus

  • pattern completion

  • picture-naming task

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