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使用输出信噪比指标预测人工耳蜗植入受者的个体言语感知能力。

Prediction of Individual Cochlear Implant Recipient Speech Perception With the Output Signal to Noise Ratio Metric.

作者信息

Watkins Greg D, Swanson Brett A, Suaning Gregg J

机构信息

Faculty of Engineering, School of Biomedical Engineering, The University of Sydney, Sydney, Australia.

Cochlear Limited, Sydney, Australia.

出版信息

Ear Hear. 2020 Sep/Oct;41(5):1270-1281. doi: 10.1097/AUD.0000000000000846.

Abstract

OBJECTIVES

A cochlear implant (CI) implements a variety of sound processing algorithms that seek to improve speech intelligibility. Typically, only a small number of parameter combinations are evaluated with recipients but the optimal configuration may differ for individuals. The present study evaluates a novel methodology which uses the output signal to noise ratio (OSNR) to predict complete psychometric functions that relate speech recognition to signal to noise ratio for individual CI recipients.

DESIGN

Speech scores from sentence-in-noise tests in a "reference" condition were mapped to OSNR and a psychometric function was fitted. The reference variability was defined as the root mean square error between the reference scores and the fitted curve. To predict individual scores in a different condition, OSNRs in that condition were calculated and the corresponding scores were read from the reference psychometric function. In a retrospective experiment, scores were predicted for each condition and subject in three existing data sets of sentence scores. The prediction error was defined as the root mean square error between observed and predicted scores. In data set 1, sentences were mixed with 20 talker babble or speech weighted noise and presented at 65 dB sound pressure level (SPL). An adaptive test procedure was used. Sound processing was advanced combinatorial encoding (ACE, Cochlear Limited) and ACE with ideal binary mask processing, with five different threshold settings. In data set 2, sentences were mixed with speech weighted noise, street-side city noise or cocktail party noise and presented at 65 dB SPL. An adaptive test procedure was used. Sound processing was ACE and ACE with two different noise reduction schemes. In data set 3, sentences were mixed with four-talker babble at two input SNRs and presented at levels of 55-89 dB SPL. Sound processing utilised three different automatic gain control configurations.

RESULTS

For data set 1, the median of individual prediction errors across all subjects, noise types and conditions, was 12% points, slightly better than the reference variability. The OSNR prediction method was inaccurate for the specific condition with a gain threshold of +10 dB. For data set 2, the median of individual prediction errors was 17% points and the reference variability was 11% points. For data set 3, the median prediction error was 9% points and the reference variability was 7% points. A Monte Carlo simulation found that the OSNR prediction method, which used reference scores and OSNR to predict individual scores in other conditions, was significantly more accurate (p < 0.01) than simply using reference scores as predictors.

CONCLUSIONS

The results supported the hypothesis that the OSNR prediction method could accurately predict individual recipient scores for a range of algorithms and noise types, for all but one condition. The medians of the individual prediction errors for each data set were accurate within 6% points of the reference variability and compared favourably with prediction methodologies in other recent studies. Overall, the novel OSNR-based prediction method shows promise as a tool to assist researchers and clinicians in the development or fitting of CI sound processors.

摘要

目的

人工耳蜗(CI)采用多种声音处理算法以提高言语可懂度。通常,仅对少数参数组合在受试者中进行评估,但最佳配置可能因个体而异。本研究评估一种新方法,该方法使用输出信噪比(OSNR)来预测完整的心理测量函数,这些函数将个体CI受试者的言语识别与信噪比相关联。

设计

在“参考”条件下的噪声中句子测试的言语分数被映射到OSNR,并拟合心理测量函数。参考变异性被定义为参考分数与拟合曲线之间的均方根误差。为了预测不同条件下的个体分数,计算该条件下的OSNR,并从参考心理测量函数中读取相应分数。在一项回顾性实验中,对三个现有的句子分数数据集的每个条件和受试者预测分数。预测误差被定义为观察到的分数与预测分数之间的均方根误差。在数据集1中,句子与20个说话者的嘈杂声或言语加权噪声混合,并在65分贝声压级(SPL)下呈现。使用了自适应测试程序。声音处理是先进的组合编码(ACE,科利耳有限公司)以及带有理想二进制掩码处理的ACE,具有五种不同的阈值设置。在数据集2中,句子与言语加权噪声、街边城市噪声或鸡尾酒会噪声混合,并在65分贝SPL下呈现。使用了自适应测试程序。声音处理是ACE以及带有两种不同降噪方案的ACE。在数据集3中,句子与两个输入信噪比下的四个说话者的嘈杂声混合,并在55 - 89分贝SPL水平下呈现。声音处理采用三种不同的自动增益控制配置。结果:对于数据集1,所有受试者、噪声类型和条件下个体预测误差的中位数为12个百分点,略优于参考变异性。对于增益阈值为 +10分贝的特定条件,OSNR预测方法不准确。对于数据集2,个体预测误差的中位数为17个百分点,参考变异性为11个百分点。对于数据集3,预测误差中位数为9个百分点,参考变异性为7个百分点。蒙特卡罗模拟发现,使用参考分数和OSNR来预测其他条件下个体分数的OSNR预测方法,比简单地使用参考分数作为预测指标显著更准确(p < 0.01)。

结论

结果支持以下假设,即OSNR预测方法可以准确预测一系列算法和噪声类型下除一种条件外的个体受试者分数。每个数据集的个体预测误差中位数在参考变异性的6个百分点范围内是准确的,并且与其他近期研究中的预测方法相比具有优势。总体而言,基于OSNR的新预测方法显示出有望成为协助研究人员和临床医生开发或拟合CI声音处理器的工具。

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