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Novel time-frequency-eigen filter for intraoperative neurophysiologic monitoring in spinal surgeries

机译:新型时频特征滤波器在脊柱外科手术中的神经生理监测

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We present a novel signal-processing algorithm to extract the posterior tibial somatosensory evoked potentials (tSSEP) using a minimum number of trials. We analyze the proposed algorithm and compare it with the clinically used conventional signal averaging method for 12 surgical procedures. The tSSEP trials are continuously fed to our processing algorithm that displays the extracted SSEP after processing 12 successive unrejected sweeps. A unique filtering process employing time, frequency and eigen systems, in that order, was used to extract the SSEP from this set of 12 trials. The algorithm then detects, marks and records the P37 and N45 peaks using the first order differentials obtained through Walsh transformation. The monitoring using the algorithm was successful and proved conclusive to the clinical information through the different surgical procedures. Higher accuracy and faster execution time in determining the SSEP signals provides for a much improved and effective neurophysiological monitoring process.
机译:我们提出了一种新颖的信号处理算法,使用最少的试验次数来提取胫骨后体感诱发电位(tSSEP)。我们分析了提出的算法,并将其与临床使用的常规信号平均方法进行了12种外科手术的比较。将tSSEP试验连续输入到我们的处理算法中,该算法在处理12次连续未拒绝的扫描后显示提取的SSEP。依次采用了采用时间,频率和本征系统的独特过滤过程,从这12组试验中提取了SSEP。然后,该算法使用通过沃尔什变换获得的一阶差分来检测,标记和记录P37和N45峰。使用该算法的监测是成功的,并通过不同的手术程序被证明对临床信息具有决定性意义。确定SSEP信号时,更高的准确性和更快的执行时间可提供大大改进和有效的神经生理监测过程。

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