Models and simulation of 3D neuronal dendritic trees using Bayesian networks

López-Cruz, Pedro L. and Bielza Lozoya, María Concepción and Larrañaga Múgica, Pedro María and Benavides-Piccione, Ruth and DeFelipe, Javier (2011). Models and simulation of 3D neuronal dendritic trees using Bayesian networks. "Neuroinformatics", v. 9 (n. 4); pp. 347-369. ISSN 1559-0089. https://doi.org/10.1007/s12021-011-9103-4.

Description

Title: Models and simulation of 3D neuronal dendritic trees using Bayesian networks
Author/s:
  • López-Cruz, Pedro L.
  • Bielza Lozoya, María Concepción
  • Larrañaga Múgica, Pedro María
  • Benavides-Piccione, Ruth
  • DeFelipe, Javier
Item Type: Article
Título de Revista/Publicación: Neuroinformatics
Date: December 2011
ISSN: 1559-0089
Volume: 9
Subjects:
Freetext Keywords: Pyramidal cells, Virtual dendrites, Morphology simulation, Dendritic structure, Bayesian networks
Faculty: Facultad de Informática (UPM)
Department: Inteligencia Artificial
Creative Commons Licenses: Recognition - No derivative works - Non commercial

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Abstract

Neuron morphology is crucial for neuronal connectivity and brain information processing. Computational models are important tools for studying dendritic morphology and its role in brain function. We applied a class of probabilistic graphical models called Bayesian networks to generate virtual dendrites from layer III pyramidal neurons from three different regions of the neocortex of the mouse. A set of 41 morphological variables were measured from the 3D reconstructions of real dendrites and their probability distributions used in a machine learning algorithm to induce the model from the data. A simulation algorithm is also proposed to obtain new dendrites by sampling values from Bayesian networks. The main advantage of this approach is that it takes in to account and automatically locates the relationships between variables in the data instead of using predefined dependencies. Therefore, the methodology can be applied to any neuronal class while at the same time exploiting class-specific properties. Also, a Bayesian network was defined foreach part of the dendrite, allowing the relationships to change in the different sections and to model heterogeneous developmental factors or spatial influences. Several univariate statistical tests and a novel multivariate test based on Kullback–Leibler divergence estimation confirmed that virtual dendrites were similar to real ones. The analyses of the models showed relationships that conform to current neuroanatomical knowledge and support model correctness. At the same time, studying the relationships in the models can help to identify new interactions between variables related to dendritic morphology.

Funding Projects

Type
Code
Acronym
Leader
Title
Government of Spain
TIN2010-20900-C04-04
Unspecified
Unspecified
Unspecified
Government of Spain
2010-CSD2007-00018
Unspecified
Unspecified
Unspecified

More information

Item ID: 72864
DC Identifier: https://oa.upm.es/72864/
OAI Identifier: oai:oa.upm.es:72864
DOI: 10.1007/s12021-011-9103-4
Official URL: https://link.springer.com/article/10.1007/s12021-0...
Deposited by: Biblioteca Facultad de Informatica
Deposited on: 17 Mar 2023 11:43
Last Modified: 17 Mar 2023 11:43
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