Literature DB >> 32678803

A new method to predict anomaly in brain network based on graph deep learning.

Jalal Mirakhorli1, Hamidreza Amindavar1, Mojgan Mirakhorli2.   

Abstract

Functional magnetic resonance imaging a neuroimaging technique which is used in brain disorders and dysfunction studies, has been improved in recent years by mapping the topology of the brain connections, named connectopic mapping. Based on the fact that healthy and unhealthy brain regions and functions differ slightly, studying the complex topology of the functional and structural networks in the human brain is too complicated considering the growth of evaluation measures. One of the applications of irregular graph deep learning is to analyze the human cognitive functions related to the gene expression and related distributed spatial patterns. Since a variety of brain solutions can be dynamically held in the neuronal networks of the brain with different activity patterns and functional connectivity, both node-centric and graph-centric tasks are involved in this application. In this study, we used an individual generative model and high order graph analysis for the region of interest recognition areas of the brain with abnormal connection during performing certain tasks and resting-state or decompose irregular observations. Accordingly, a high order framework of Variational Graph Autoencoder with a Gaussian distributer was proposed in the paper to analyze the functional data in brain imaging studies in which Generative Adversarial Network is employed for optimizing the latent space in the process of learning strong non-rigid graphs among large scale data. Furthermore, the possible modes of correlations were distinguished in abnormal brain connections. Our goal was to find the degree of correlation between the affected regions and their simultaneous occurrence over time. We can take advantage of this to diagnose brain diseases or show the ability of the nervous system to modify brain topology at all angles and brain plasticity according to input stimuli. In this study, we particularly focused on Alzheimer's disease.

Entities:  

Keywords:  brain function; generative model; graph theory; mild cognitive impairment (MCI); neural plasticity; posterior contraction

Year:  2020        PMID: 32678803     DOI: 10.1515/revneuro-2019-0108

Source DB:  PubMed          Journal:  Rev Neurosci        ISSN: 0334-1763            Impact factor:   4.353


  3 in total

1.  Multimodal Orbital Angular Momentum Data Model Based on Mechanically Reconfigurable Arrays and Neural Networks.

Authors:  Lijun Zhang; Shaojin Wang; Xinhua Zhu; Xiaohui Guo; Yuanbing Gu
Journal:  Comput Intell Neurosci       Date:  2022-06-23

2.  A Hierarchical Graph Learning Model for Brain Network Regression Analysis.

Authors:  Haoteng Tang; Lei Guo; Xiyao Fu; Benjamin Qu; Olusola Ajilore; Yalin Wang; Paul M Thompson; Heng Huang; Alex D Leow; Liang Zhan
Journal:  Front Neurosci       Date:  2022-07-12       Impact factor: 5.152

Review 3.  Developing Pulmonary Rehabilitation for COVID-19: Are We Linked with the Present Literature? A Lexical and Geographical Evaluation Study Based on the Graph Theory.

Authors:  Augusto Fusco; Luca Padua; Daniele Coraci; Claudia Loreti; Letizia Castelli; Cosimo Costantino; Antonio Frizziero; Elisabetta Serafini; Lorenzo Biscotti; Roberto Bernabei; Silvia Giovannini
Journal:  J Clin Med       Date:  2021-12-09       Impact factor: 4.241

  3 in total

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