非参数全交叉映射(NFCM):一种高度稳定的因果脑网络测量方法及其试点应用。

Danni Yang, Wentao Lin, Minghui Liu, Yuanfeng Zhou, Yalin Wang
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引用次数: 0

摘要

目的:利用神经生理信号测量因果脑网络是近年来神经信息学领域的研究热点。传统的数据驱动算法由于参数的设置,计算时间长且不稳定。方法:为了解决这些限制,我们提出了一种新的无参数技术,称为“非参数全交叉映射(NFCM)”。NFCM采用了当前的收敛交叉映射(CCM)概念,并进行了两个改进:(1)改进的具有恒定嵌入参数的相空间重构(IPSR);(2)单纯形投影后流形上所有嵌入向量的交叉映射估计。主要结果:数值实验验证了NFCM在系统噪声干扰下仍具有最高的量化稳定性,其变异系数几乎低于6种基线方法。开发的NFCM最终用于儿童耐药癫痫(DREC)的SEEG分析。共36例癫痫发作,包括18例手术成功和18例失败,以探索大脑网络动力学。成功手术致痫区的平均因果耦合(0.81±0.04)显著高于非致痫区的平均因果耦合(0.40±0.03),具有显著性意义。我们的NFCM测量的因果脑网络被证实是定位DREC中致痫区的可靠生物标志物。这些发现有望推进DREC的精准医疗。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Non-parametric full cross mapping (NFCM): a highly-stable measure for causal brain network and a pilot application.

Objective.Measuring causal brain network from neurophysiological signals has recently attracted much attention in the field of neuroinformatics. Traditional data-driven algorithms are computationally time-consuming and unstable due to parameter settings.Approach.To resolve these limits, we proposed a novel parameter-free technique, called 'non-parametric full cross mapping (NFCM)'. The NFCM adapts current convergent cross-mapping concept, and makes two improvements: (1) an improved phase-space reconstruction with constant embedding parameters and (2) cross-mapping estimate of all embedding vectors on manifolds following simplex projection.Main results.Numerical experiments verify that our NFCM has the highest quantization stability even when perturbed by system noise, and its coefficient of variation is almost lower than that of the six baseline methods. The developed NFCM is finally used in stereoelectroencephalogram analysis of drug-resistant epilepsy in children (DREC). A total of 36 seizures, comprising 18 surgical successes and 18 failures, were included to explore the brain network dynamics. The average causal coupling in epileptogenic zones of successful surgery (0.81 ± 0.04) is significantly higher than that in non-epileptogenic zones (0.40 ± 0.03) withP<0.001via Mann-Whitney-U-test. While there is no significant difference among the 18 failed surgeries.Significance.The causal brain network measured by our NFCM is confirmed as a credible biomarker for localizing epileptogenic zones in DREC. These findings promise to advance precision medicine for DREC.

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