脑电图数据随机模型参数作为脑疟疾后儿童神经发育的生物标志物。

Q2 Mathematics Journal of Statistical Distributions and Applications Pub Date : 2018-01-01 Epub Date: 2018-12-29 DOI:10.1186/s40488-018-0086-7
Maria A Veretennikova, Alla Sikorskii, Michael J Boivin
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引用次数: 6

摘要

本研究的目的是测试脑电图(EEG)记录的统计特征作为乌干达儿童脑疟疾昏迷后神经发育和认知的预测因子。将脑电时间序列的频带增量建模为Student过程;这些学生过程的参数被估计,并与临床和人口统计数据一起用于机器学习算法,以预测脑疟疾后6个月儿童的神经发育和认知评分。这项工作的关键创新在于识别随机脑电图特征,这些特征可以作为脑疟疾对发育中的大脑影响的语言无关标记。研究结果可以加强对哪些儿童最需要康复干预的预后判断,这在撒哈拉以南非洲等资源受限的环境中尤为重要。
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Parameters of stochastic models for electroencephalogram data as biomarkers for child's neurodevelopment after cerebral malaria.

The objective of this study was to test statistical features from the electroencephalogram (EEG) recordings as predictors of neurodevelopment and cognition of Ugandan children after coma due to cerebral malaria. The increments of the frequency bands of EEG time series were modeled as Student processes; the parameters of these Student processes were estimated and used along with clinical and demographic data in a machine-learning algorithm for the prediction of children's neurodevelopmental and cognitive scores 6 months after cerebral malaria illness. The key innovation of this work is in the identification of stochastic EEG features that can serve as language-independent markers of the impact of cerebral malaria on the developing brain. The results can enhance prognostic determination of which children are in most need of rehabilitative interventions, which is especially important in resource-constrained settings such as sub-Saharan Africa.

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来源期刊
Journal of Statistical Distributions and Applications
Journal of Statistical Distributions and Applications Decision Sciences-Statistics, Probability and Uncertainty
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