非平稳fMEG数据的时空分析。

P Soni, Y Chan, H Preissl, H Eswaran, J Wilson, P Murphy, C L Lowery
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引用次数: 0

摘要

脑磁图(MEG)是一种用于无创记录人脑产生的神经磁场的技术。我们的新SARA (SQUID阵列生殖评估)是一种独特的MEG设备,专为胎儿神经生理学研究而设计。胎儿脑磁图(fMEG)在采集胎儿脑磁图的过程中,还会采集到许多其他干扰性的生物磁信号。例如胎儿的运动或母亲的肌肉收缩。因此,记录的信号可能显示出意想不到的模式,而不是感兴趣的目标信号。这些干预措施使得医生很难评估胎儿的确切状况,包括对各种刺激的反应。我们建议使用干预分析和时空自回归移动平均(STARMA)模型来解决这个问题。STARMA是一种统计方法,它检查当前观测结果与过去观测结果的线性组合之间的关系,以及邻近站点的观测结果。通过干扰分析,可以很好地解释干扰信号引起的模式变化。当这些干扰被去除后,最终产品是一个模板时间序列,或来自感兴趣目标的典型信号,从而提供了一种更可靠的手段来监测胎儿大脑和其他感兴趣器官产生的实际信号。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Spatial-temporal analysis of non-stationary fMEG data.

Magnetoencephalography (MEG) is a technique used to non-invasively record neuromagnetic fields generated by the human brain. Our new SARA (SQUID Array for Reproductive Assessment) is a unique MEG device designed specifically for the study of the fetal neurophysiology. During the acquistion of fetal magnetoencephalography (fMEG), many other interfering bio-magnetic signals are collected as well. Examples include the movement of fetus or muscle contraction of the mother. As a result, the recorded signals may show unexpected patterns, other than the target signal of interest. These interventions makes it difficult for a physician to assess the exact fetal condition, including its response to various stimuli. We propose using intervention analysis and spatial-temporal autoregressive moving average (STARMA) modeling to address the problem. STARMA is a statistical method that examines the relationship between the current observations as a linear combination of past observations, as well as observations at neighboring sites. Through intervention analysis, the change in pattern due to interfering signals can be well accounted for. When these interferences are removed, the end product is a template time series, or a typical signal from the target of interest thus providing a more reliable means to monitor the actual signals generated by the fetal brain and other organs of interest.

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