Neural Regeneration Research ›› 2019, Vol. 14 ›› Issue (10): 1805-1813.doi: 10.4103/1673-5374.257538

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Brain networks modeling for studying the mechanism underlying the development of Alzheimer’s disease

Shuai-Zong Si, Xiao Liu, Jin-Fa Wang, Bin Wang, Hai Zhao   

  1. School of Computer Science and Engineering, Northeastern University, Shenyang, China
  • Online:2019-10-15 Published:2019-10-15
  • Contact: Xiao Liu, Doctoral candidate, liu.xiao.xiao.1881@gmail.com; Bin Wang, Doctoral candidate, bin.wang.brilliant@gmail.com.
  • Supported by:

    This study was supported in part by Fundamental Research Funds for the Central Universities in China, No. N161608001 and No. N171903002.

Abstract:

Alzheimer’s disease is a primary age-related neurodegenerative disorder that can result in impaired cognitive and memory functions. Al¬though connections between changes in brain networks of Alzheimer’s disease patients have been established, the mechanisms that drive these alterations remain incompletely understood. This study, which was conducted in 2018 at Northeastern University in China, included data from 97 participants of the Alzheimer’s Disease Neuroimaging Initiative dataset covering genetics, imaging, and clinical data. All participants were divided into two groups: normal control (n = 52; 20 males and 32 females; mean age 73.90 ± 4.72 years) and Alzheimer’s disease (n = 45, 23 males and 22 females; mean age 74.85 ± 5.66). To uncover the wiring mechanisms that shaped changes in the topology of human brain networks of Alzheimer’s disease patients, we proposed a local naïve Bayes brain network model based on graph theory. Our results showed that the proposed model provided an excellent fit to observe networks in all properties examined, including cluster¬ing coefficient, modularity, characteristic path length, network efficiency, betweenness, and degree distribution compared with empirical methods. This proposed model simulated the wiring changes in human brain networks between controls and Alzheimer’s disease patients. Our results demonstrate its utility in understanding relationships between brain tissue structure and cognitive or behavioral functions.

Key words: nerve regeneration, Alzheimer’s disease, graph theory, functional magnetic resonance imaging, network model, link prediction, naïve Bayes, topological structures, anatomical distance, global efficiency, local efficiency, neural regeneration