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首页> 外文期刊>Neural Systems and Rehabilitation Engineering, IEEE Transactions on >Single-Trial Extraction of Pure Somatosensory Evoked Potential Based on Expectation Maximization Approach
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Single-Trial Extraction of Pure Somatosensory Evoked Potential Based on Expectation Maximization Approach

机译:基于期望最大化方法的纯体感诱发电位的单次试验提取

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摘要

It is of great importance for intraoperative monitoring to accurately extract somatosensory evoked potentials (SEPs) and track its changes fast. Currently, multi-trial averaging is widely adopted for SEP signal extraction. However, because of the loss of variations related to SEP features across different trials, the estimated SEPs in such a way are not suitable for the purpose of real-time monitoring of every single trial of SEP. In order to handle this issue, a number of single-trial SEP extraction approaches have been developed in the literature, such as ARX and SOBI, but most of them have their performance limited due to not sufficient utilization of multi-trial and multi-condition structures of the signals. In this paper, a novel Bayesian model of SEP signals is proposed to make systemic use of multi-trial and multi-condition priors and other structural information in the signal by integrating both a cortical source propagation model and a SEP basis components model, and an Expectation Maximization (EM) algorithm is developed for single-trial SEP estimation under this model. Numerical simulations demonstrate that the developed method can provide reasonably good single-trial estimations of SEP as long as signal-to-noise ratio (SNR) of the measurements is no worse than . The effectiveness of the proposed method is further verified by its application to real SEP measurements of a number of different subjects during spinal surgeries. It is observed that using the proposed approach the main SEP features (i.e., latencies) can be reliably estimated at single-trial basis, and thus the variation of latencies in different trials can be traced, which provides a solid support for surgical intraoperative monitoring.
机译:准确地提取体感诱发电位(SEP)并快速跟踪其变化对于术中监测非常重要。当前,多次尝试平均被广泛用于SEP信号提取。但是,由于在不同的试验中丢失了与SEP功能相关的变化,因此以这种方式估算的SEP不适合用于实时监测SEP的每个试验。为了解决这个问题,文献中已经开发了许多单试验SEP提取方法,例如ARX和SOBI,但是由于对多试验和多条件的利用不充分,大多数方法的性能受到限制。信号的结构。本文提出了一种新颖的SEP信号贝叶斯模型,通过整合皮层源传播模型和SEP基础分量模型,并在信号中系统地利用多试验和多条件先验和其他结构信息,在此模型下,为单次SEP估计开发了期望最大化(EM)算法。数值模拟表明,只要测量的信噪比(SNR)不小于SEP,所开发的方法就可以提供合理良好的SEP单次估计。通过将其应用于脊柱外科手术期间许多不同受试者的实际SEP测量,该方法的有效性得到了进一步验证。可以看出,使用建议的方法可以在单次试验的基础上可靠地估计主要SEP特征(即潜伏期),因此可以追踪不同试验中的潜伏期变化,这为手术术中监测提供了坚实的支持。

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