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中国物理学会期刊

静息态功能磁共振成像评估健康老年人认知行为的多尺度熵模型研究

CSTR: 32037.14.aps.69.20200050

Study of multiscale entropy model to evaluate the cognitive behavior of healthy elderly people based on resting state functional magnetic resonance imaging

CSTR: 32037.14.aps.69.20200050
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  • 当前, 静息态功能磁共振成像(rfMRI)为脑功能检测提供了高效、快捷的先进技术. 熵可以捕捉神经信号动态特征, 可作为量化评估参数, 但尚存在固定尺度计算缺陷且对认知行为的生物学标记少有研究, 影响检测精准性. 为此, 本文将多尺度熵模型与机器学习方法联合, 寻求BOLD信号复杂度表征健康老年人认知分数的功能影像学标记. 由扫描前认知量表测试分数将98名健康老年人分为优、差两组, 78名纳入训练, 20名纳入测试. 首先, 构建多尺度熵模型, 计算两组扫描数据熵, 统计和对比以优化模型参数; 然后, 在优化参数下由统计显著性高的脑区熵值构建特征向量; 最后, 用极限学习机对两组分类并统计检验. 发现: rfMRI多尺度熵在评估老年人认知分数时, 在额、颞叶脑区存在较大显著性差异, 以此为标记区分认知分数可达80%准确率. 结论: 额、颞叶等脑区优化的多尺度熵可有效区分健康老年人认知行为优劣. 该研究将为rfMRI替代主观繁琐的传统认知量表测试提供新的检测参数和新方法.

     

    At present, resting state functional magnetic resonance imaging (rfMRI) has provided an efficient, rapid and advanced technology for brain function detection. Entropy can capture the dynamic characteristics of neural signals and might be used as a quantitative evaluation parameter. However, there are some problems remain solved yet, such as the entropy model computing with a fixed scale, and whether the entropy model could evaluate the cognitive performance.These problems will affect the accuracy of detection. Therefore, the multi-scale entropy model combined with a machine learning method is proposed here to investigate the relationship between complexity derived from BOLD signal and cognitive score of healthy elderly people, so as to some new imaging biomarkers could be illuminate by rfMRI. A total of 98 healthy old volunteers were selected and divided into two groups according to the pre-scan scores for the cognitive questions test (regarded as cognitive performance here): excellent group and poor group. Firstly, the multi-scale entropy model was constructed, the entropy of scanning data was calculated in two groups, and the parameters of the model were optimized by statistics and comparison with the help machine learning method. Secondly, the eigenvectors were constructed by the entropy values of the indicative brain areas with high statistical significance under the optimized parameters of multi-scale model. Finally, the sample data were divided into either training set or testing set, in which 78 people were randomly included in the training set and the rest of 20 people were included in the testing set. The two groups of data were classified and tested by the extreme learning machine. It was found that there was a significant difference between the frontal and temporal regions in the assessment of cognitive scores of the elderly by the multi-scale entropy model based on rfMRI, and the sorting rate for the cognitive scores could reach up to 80%. Conclusion: the optimized multi-scale entropy model can effectively distinguish the cognitive scores of healthy elderly people at the frontal lobe, temporal lobe and other marker brain regions. This study has highlighted the optimization advantage of the multi-scale entropy model with the help of machine learning, and might provide a new detection parameter and a potential method for rfMRI to replace the subjective and tedious traditional cognitive scale form tests.

     

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