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Use of computational modeling of auditory nerve activation patterns for the optimization of cochlear implant electrical stimulation patterns.

机译:使用听觉神经激活模式的计算模型来优化耳蜗植入物电刺激模式。

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摘要

Evaluation of user-independent efficacy of novel cochlear implant (CI) signal processing strategies is difficult. Current practice relies on customization based on user performance in the clinical setting. As a result, it is impractical to achieve theoretical optimality, and improvements to stimulation strategies are frequently achieved using trial-and-error. A computational framework that approximates the upper bound on CI performance is desirable to reduce the number of novel strategies that require evaluation in patients.;Therefore, the goal is a physiologically-based framework, using accepted models of the acoustically- and electrically-induced nerve activation patterns (NAPs), to predict discrimination and forced-choice identification among acoustic stimuli. An initial framework has been developed to predict behavioral performance of normal-hearing (NH) listeners, using NAPs generated from the Zilany-Bruce auditory-periphery model. The correlation-based metric predicts rank orders of errors in confusion matrices exhibited by NH listeners during psychophysical experiments.;This method of predicting behavioral differences between stimuli has been extended to a framework that generates the optimal electrode stimulation sequence on an individual subject and stimulus basis by using the Bruce neural model for electrical stimulation. While generating these optimal electrical firing patterns is not feasible for use in real-time CI signal processing, it provides an estimate of the upper bound on CI user performance and allows for future work in designing real-time signal processing algorithms.
机译:新型的人工耳蜗(CI)信号处理策略的用户独立功效的评估是困难的。当前的实践依赖于基于临床环境中用户性能的定制。结果,实现理论上的最优是不切实际的,并且经常使用反复试验来实现对刺激策略的改进。为了减少需要在患者中进行评估的新策略的数量,需要一个近似CI性能上限的计算框架;因此,该目标是使用基于声学和电诱导神经的公认模型的基于生理的框架激活模式(NAP),以预测声音刺激之间的区别和强迫选择识别。已经开发了使用从Zilany-Bruce听觉外围模型生成的NAP来预测正常听力(NH)收听者的行为表现的初始框架。基于相关的度量可以预测NH听众在心理物理实验过程中出现的混淆矩阵中错误的等级顺序。通过使用布鲁斯神经模型进行电刺激。虽然生成这些最佳电触发模式不适用于实时CI信号处理,但它提供了对CI用户性能上限的估计,并允许将来设计实时信号处理算法。

著录项

  • 作者

    Aguiar, Daniel Edward.;

  • 作者单位

    Purdue University.;

  • 授予单位 Purdue University.;
  • 学科 Health Sciences Audiology.;Engineering Electronics and Electrical.
  • 学位 Ph.D.
  • 年度 2012
  • 页码 117 p.
  • 总页数 117
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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