使用患者特定人工耳蜗刺激模型评估听神经纤维健康状况。

Ziteng Liu, Ahmet Cakir, Jack H Noble
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引用次数: 5

摘要

人工耳蜗(CIs)通过植入耳蜗的电极阵列直接刺激听觉神经纤维(ANFs)来恢复听力。ci患者的听力结果取决于anf患者的健康状况。在这项研究中,我们开发了一种方法,使用患者定制的基于图像的脑内刺激计算模型来估计anf的健康状况。我们的刺激模型建立在先前基于模型的解决方案上,以估计由CI产生的耳蜗内电场(EF)。在此,我们建议使用估计的EF来驱动代表沿耳蜗长度的75个神经束的ANF模型。我们提出了一种方法,通过优化神经健康参数来检测ANF模型的神经健康状况,以最小化模拟和通过患者ci可获得的生理测量值之间的平方和。生成的运行状况参数提供了对ANF包运行状况的估计。8个被试的实验表明,模型预测的准确性很好,临床测量的神经刺激反应与我们的参数优化模型预测的神经刺激反应非常吻合。这些结果表明,我们的建模方法可以为CI用户提供对ANF健康状况的准确估计。
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Auditory Nerve Fiber Health Estimation Using Patient Specific Cochlear Implant Stimulation Models.

Cochlear implants (CIs) restore hearing using an array of electrodes implanted in the cochlea to directly stimulate auditory nerve fibers (ANFs). Hearing outcomes with CIs are dependent on the health of the ANFs. In this research, we developed an approach to estimate the health of ANFs using patient-customized, image-based computational models of CI stimulation. Our stimulation models build on a previous model-based solution to estimate the intra-cochlear electric field (EF) created by the CI. Herein, we propose to use the estimated EF to drive ANF models representing 75 nerve bundles along the length of the cochlea. We propose a method to detect the neural health of the ANF models by optimizing neural health parameters to minimize the sum of squared differences between simulated and the physiological measurements available via patients' CIs. The resulting health parameters provide an estimate of the health of ANF bundles. Experiments with 8 subjects show promising model prediction accuracy, with excellent agreement between neural stimulation responses that are clinically measured and those that are predicted by our parameter optimized models. These results suggest our modeling approach may provide an accurate estimation of ANF health for CI users.

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