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人工耳蜗植入者皮质听觉诱发电位的对比分析。

Comparative Analysis of Cortical Auditory Evoked Potential in Cochlear Implant Users.

机构信息

Fiona Stanley Fremantle Hospital Group, Perth, Western Australia, Australia.

Medical School, Division of Surgery, The University of Western Australia, Perth, Australia.

出版信息

Ear Hear. 2021;42(6):1755-1769. doi: 10.1097/AUD.0000000000001075.

Abstract

OBJECTIVES

The primary goal of the study was to investigate electrical cortical auditory evoked potentials (eCAEPs) at maximum comfortable level (MCL) and 50% MCL on three cochlear implant (CI) electrodes and compare them with the acoustic CAEP (aCAEPs), in terms of the amplitude and latency of the P1-N1-P2 complex. This was achieved by comparing the eCAEP obtained with the method described and stimulating single electrodes, via the fitting software spanning the cochlear array and the aCAEP obtained using the HEARLab system at four speech tokens.

DESIGN

Twenty MED-EL (MED-EL Medical Electronics, Innsbruck, Austria) CI adult users were tested. CAEP recording with HEARLab System was performed with speech tokens /m/, /g/, /t/, and /s/ in free field, presented at 55 dB SPL. eCAEPs were recorded with an Evoked Potential device triggered from the MAX Programming Interface (MED-EL Medical Devices) with 70 msec electrical burst at 0.9 Hz at the apical (1), middle (6), and basal (10 or 11) CI electrode at their MCL and 50% MCL.

RESULTS

CAEP responses were recorded in 100% of the test subjects for the speech token /t/, 95% for the speech tokens /g/ and /s/, and 90% for the speech token /m/. For eCAEP recordings, in all subjects, it was possible to identify N1 and P2 peaks when stimulating the apical and middle electrodes. This incidence of detection decreased to an 85% chance of stimulation at 50% MCL on the same electrodes. A P1 peak was less evident for all electrodes. There was an overall increase in latency for stimulation at 50% MCL compared with MCL. There was a significant difference in the amplitude of adjacent peaks (P1-N1 and N1-P2) for 50% MCL compared with MCL. The mean of the maximum cross-correlation values were in the range of 0.63 to 0.68 for the four speech tokens. The distribution of the calculated time shift, where the maximum of the cross-correlation was found, was distributed between the speech tokens. The speech token /g/ had the highest number of valid cross-correlations, while the speech token /s/ had the lowest number.

CONCLUSIONS

This study successfully compared aCAEP and eCAEP in CI users. Both acoustic and electrical P1-N1-P2 recordings obtained were clear and reliable, with good correlation. Latency increased with decreasing stimulation level, while amplitude decreased. eCAEP is potentially a better option to verify speech detection at the cortical level because it (1) uses direct stimulation and therefore creates less interference and delay of the sound processor and (2) creates more flexibility with the recording setup and stimulation setting. As such, eCAEP is an alternative method for CI optimization.

摘要

目的

本研究的主要目的是通过比较三种耳蜗植入(CI)电极的最大舒适水平(MCL)和 50%MCL 下的电皮质听觉诱发电位(eCAEP)与声皮质听觉诱发电位(aCAEP),研究 P1-N1-P2 复合波的振幅和潜伏期。这是通过比较使用描述方法获得的 eCAEP 和通过拟合软件刺激单个电极来实现的,该软件跨越了耳蜗数组,以及使用 HEARLab 系统在四个语音标记上获得的 aCAEP。

设计

对 20 名 MED-EL(MED-EL Medical Electronics,因斯布鲁克,奥地利)CI 成年用户进行了测试。使用 HEARLab 系统在自由场中以 55 dB SPL 呈现语音标记 /m/、/g/、/t/和/s/,进行 CAEP 记录。eCAEP 使用 Evoked Potential 设备记录,由 MAX 编程接口(MED-EL Medical Devices)触发,在 0.9 Hz 时以 70 msec 的电脉冲刺激尖端(1)、中部(6)和基底部(10 或 11)CI 电极的 MCL 和 50%MCL。

结果

在所有测试对象中,100%的测试对象可记录到语音标记 /t/的 CAEP 反应,95%的测试对象可记录到语音标记 /g/和/s/的 CAEP 反应,90%的测试对象可记录到语音标记 /m/的 CAEP 反应。对于 eCAEP 记录,在所有受试者中,刺激尖端和中部电极时都可以识别 N1 和 P2 峰值。在同一电极上,刺激 50%MCL 时,检测到的发生率下降到 85%。所有电极的 P1 峰值都不太明显。与 MCL 相比,刺激 50%MCL 时潜伏期总体增加。与 MCL 相比,50%MCL 时相邻峰(P1-N1 和 N1-P2)的振幅有显著差异。四个语音标记的最大互相关值的平均值在 0.63 到 0.68 之间。找到互相关最大值的计算时间移位的分布在语音标记之间。语音标记 /g/ 有最多的有效互相关,而语音标记 /s/ 有最少的有效互相关。

结论

本研究成功比较了 CI 用户的 aCAEP 和 eCAEP。获得的声学和电 P1-N1-P2 记录均清晰可靠,相关性良好。潜伏期随刺激水平降低而增加,而振幅随刺激水平降低而降低。eCAEP 是一种更好的皮质水平语音检测验证方法,因为它 (1) 使用直接刺激,因此减少了对声音处理器的干扰和延迟,以及 (2) 在记录设置和刺激设置方面提供了更大的灵活性。因此,eCAEP 是 CI 优化的一种替代方法。

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