Department of Otolaryngology, Hannover Medical School, Hannover, Germany.
Research and Development, MED-EL Medical Electronics, Innsbruck, Austria.
PLoS One. 2021 Nov 1;16(11):e0259347. doi: 10.1371/journal.pone.0259347. eCollection 2021.
In cochlear implant (CI) users, measurements of electrically evoked compound action potentials (ECAPs) prove the functionality of the neuron-electrode interface. Objective measures, e.g., the ECAP threshold, may serve as a basis for the clinical adjustment of the device for the optimal benefit of the CI user. As for many neural responses, the threshold determination often is based on the subjective assessment of the clinical specialist, whose decision-making process could be aided by autonomous computational algorithms. To that end, we extended the signal-to-noise ratio (SNR) approach for ECAP threshold determination to be applicable for FineGrain (FG) ECAP responses. The new approach takes advantage of two features: the FG stimulation paradigm with its enhanced resolution of recordings, and SNR-based ECAP threshold determination, which allows defining thresholds independently of morphology and with comparably low computational power. Pearson's correlation coefficient r between the ECAP threshold determined by five experienced evaluators and the threshold determined with the FG-SNR algorithm was in the range of r = 0.78-0.93. Between evaluators, r was in a comparable range of 0.84-0.93. A subset of the parameters of the algorithm was varied to identify the parameters with the highest potential to improve the FG-SNR formalism in the future. The two steps with the strongest influence on the agreement between the threshold estimate of the evaluators and the algorithm were the removal of undesired frequency components (denoising of the response traces) and the exact determination of the two time windows (signal and noise and noise only)."The parameters were linked to the properties of an ECAP response, indicating how to adjust the algorithm for the automatic detection of other neurophysiological responses.
在人工耳蜗(CI)使用者中,电诱发复合动作电位(ECAP)的测量证明了神经元-电极界面的功能。客观测量,例如 ECAP 阈值,可以作为临床调整设备的基础,以实现 CI 用户的最佳受益。对于许多神经反应,阈值确定通常基于临床专家的主观评估,其决策过程可以通过自主计算算法来辅助。为此,我们将 ECAP 阈值确定的信噪比(SNR)方法扩展到适用于 FineGrain(FG)ECAP 响应。新方法利用了两个功能:具有增强记录分辨率的 FG 刺激范式,以及基于 SNR 的 ECAP 阈值确定,它允许独立于形态学和具有可比低计算能力来定义阈值。由五名经验丰富的评估员确定的 ECAP 阈值与 FG-SNR 算法确定的阈值之间的 Pearson 相关系数 r 在 0.78 到 0.93 之间。在评估员之间,r 的范围在 0.84 到 0.93 之间。该算法的参数子集发生变化,以确定将来具有最高潜力提高 FG-SNR 形式的参数。对评估员和算法之间阈值估计的一致性具有最强影响的两个步骤是去除不需要的频率分量(响应迹的去噪)和准确确定两个时间窗口(信号和噪声以及仅噪声)。“这些参数与 ECAP 响应的特性相关联,表明如何调整算法以自动检测其他神经生理响应。