The brain network hub degeneration in Alzheimer’s disease

Suhui Jin, Jinhui Wang, Yong He

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Biophysics Reports ›› 2024, Vol. 10 ›› Issue (4) : 213-229. DOI: 10.52601/bpr.2024.230025
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The brain network hub degeneration in Alzheimer’s disease

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Abstract

Alzheimer’s disease (AD) has been conceptualized as a syndrome of brain network dysfunction. Recent imaging connectomics studies have provided unprecedented opportunities to map structural and functional brain networks in AD. By reviewing molecular, imaging, and computational modeling studies, we have shown that highly connected brain hubs are primarily distributed in the medial and lateral prefrontal, parietal, and temporal regions in healthy individuals and that the hubs are selectively and severely affected in AD as manifested by increased amyloid-beta deposition and regional atrophy, hypo-metabolism, and connectivity dysfunction. Furthermore, AD-related hub degeneration depends on the imaging modality with the most notable degeneration in the medial temporal hubs for morphological covariance networks, the prefrontal hubs for structural white matter networks, and in the medial parietal hubs for functional networks. Finally, the AD-related hub degeneration shows metabolic, molecular, and genetic correlates. Collectively, we conclude that the brain-network-hub-degeneration framework is promising to elucidate the biological mechanisms of network dysfunction in AD, which provides valuable information on potential diagnostic biomarkers and promising therapeutic targets for the disease.

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Connectomics / Centrality / Modularity / Graph theory / MRI / Dementia

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Suhui Jin, Jinhui Wang, Yong He. The brain network hub degeneration in Alzheimer’s disease. Biophysics Reports, 2024, 10(4): 213‒229 https://doi.org/10.52601/bpr.2024.230025

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Acknowledgements

This work was supported by the National Natural Science Foundation of China (82021004 and 81922036) and National Social Science Foundation of China (20&ZD296).

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2024 The Author(s)
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