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A Review of Cognition Related Macro-Microstructural Changes Based on MRI |
Wu Qiong1, Chen Yuanyaun2, Zhao Xin1*, Ming Dong1,2# |
1School of precision instruments and optoelectronic engineering, Tianjin University, Tianjin 300072, China; 2Institute of medical engineering and translational medicine, Tianjin University, Tianjin 300072, China |
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Abstract Alzheimer′s disease (AD) is a neurodegenerative disease with cognitive impairment. The mechanism of AD is complex and not clear now and therefore still a great challenge in the field of medical research. The development of structure and diffusion magnetic resonance imaging technology can provide important technical means for studying the mechanism of macroscopic morphology and microstructural pathological characteristics of Alzheimer′s disease. In recent years, studies have observed that there are relationships between the abnormal changes of macroscopic and microscopic structure, which is of great significance for revealing the mechanism of structural changes in age-related diseases including AD. This article reviewed the studies on the pattern and interrelation of brain macro-microstructure changes to cognitive impairment in recent years, and summarized the important analysis methods and research conclusions. The mechanism of brain macro-microstructure pathology was discussed as well.
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Received: 26 April 2018
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