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Classifying children with reading difficulties from non-impaired readers via symbolic dynamics and complexity analysis of MEG resting-state data

机译:通过符号动力学和MEG静止状态数据的复杂性分析,对非阅读障碍儿童的阅读障碍儿童进行分类

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Magnetoencephalography (MEG) is a brain imaging method affording real-time temporal, and adequate spatial resolution to reveal aberrant neurophysiological function associated with dyslexia. In this study we analyzed sensor-level resting-state neuromagnetic recordings from 25 reading-disabled children and 27 non-impaired readers under the notion of symbolic dynamics and complexity analysis. We compared two techniques for estimating the complexity of MEG time-series in each of 8 frequency bands based on symbolic dynamics: (a) Lempel-Ziv complexity (LZC) entailing binarization of each MEG time series using the mean amplitude as a threshold, and (b) An approach based on the neural-gas algorithm (NG) which has been used by our group in the context of various symbolization schemes. The NG approach transforms each MEG time series to more than two symbols by learning the reconstructed manifold of each time series with a small error. Using this algorithm we computed a complexity index (CI) based on the distribution of words up to a predetermined length. The relative performance of the two complexity indexes was assessed using a classification procedure based on k-NN and Support Vector Machines. Results revealed the capacity of CI to discriminate impaired from non-impaired readers with 80% accuracy. Corresponding performance of LZC values did not exceed 55%. These findings indicate that symbolization of MEG recordings with an appropriate neuroinformatic approach, such as the proposed CI metric, may be of value in understanding the neural dynamics of dyslexia.
机译:磁脑电图(MEG)是一种大脑成像方法,可提供实时的时间和足够的空间分辨率,以揭示与阅读障碍相关的异常神经生理功能。在这项研究中,我们根据符号动力学和复杂性分析的概念,分析了来自25个阅读障碍儿童和27个非弱能阅读器的传感器水平的静息状态神经磁记录。我们比较了两种基于符号动力学来估计8个频段中每个频段的MEG时间序列复杂度的技术:(a)伦佩尔-齐夫复杂度(LZC),需要使用平均幅度作为阈值对每个MEG时间序列进行二值化,以及(b)基于神经气体算法(NG)的方法,该方法已被我们的小组在各种符号化方案中使用。 NG方法通过以很小的误差学习每个时间序列的重构流形,将每个MEG时间序列转换为两个以上的符号。使用此算法,我们根据直至预定长度的单词分布计算了复杂性指数(CI)。使用基于k-NN和支持向量机的分类程序评估了两个复杂性指标的相对性能。结果显示CI能够以80%的准确度区分未受损阅读者和残障人士。 LZC值的相应性能不超过55%。这些发现表明,使用适当的神经信息学方法(例如,建议的CI指标)对MEG录音进行符号化可能对理解阅读障碍的神经动力学具有重要意义。

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