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为人工耳蜗使用者个性化瞬态噪声降低算法设置。

Personalizing Transient Noise Reduction Algorithm Settings for Cochlear Implant Users.

机构信息

Department of Otorhinolaryngology, Leiden University Medical Center, Leiden, The Netherlands.

Advanced Bionics, LLC, Valencia, California, USA.

出版信息

Ear Hear. 2021;42(6):1602-1614. doi: 10.1097/AUD.0000000000001048.

Abstract

OBJECTIVES

Speech understanding in noise is difficult for patients with a cochlear implant. One common and disruptive type of noise is transient noise. We have tested transient noise reduction (TNR) algorithms in cochlear implant users to investigate the merits of personalizing the noise reduction settings based on a subject's own preference.

DESIGN

The effect of personalizing two parameters of a broadband and a multiband TNR algorithm (TNRbb and TNRmb, respectively) on speech recognition was tested in a group of 15 unilaterally implanted subjects in cafeteria noise. The noise consisted of a combination of clattering dishes and babble noise. Each participant could individually vary two parameters, namely the scaling factor of the attenuation and the release time (τ). The parameter τ represents the duration of the attenuation applied after a transient is detected. As a reference, the current clinical standard TNR "SoundRelax" from Advanced Bionics was tested (TNRbb-std). Effectiveness of the algorithms on speech recognition was evaluated adaptively by determining the speech reception threshold (SRT). Possible subjective benefits of the algorithms were assessed using a rating task at a fixed signal-to-noise ratio (SNR) of SRT + 3 dB. Rating was performed on four items, namely speech intelligibility, speech naturalness, listening effort, and annoyance of the noise. Word correct scores were determined at these fixed speech levels as well.

RESULTS

The personalized TNRmb improved the SRT statistically significantly with 1.3 dB, while the personalized TNRbb degraded it significantly by 1.7 dB. For TNRmb, we attempted to further optimize its settings by determining a group-based setting, leaving out those subjects that did not experience a benefit from it. Using these group-based settings, however, TNRmb did not have a significant effect on the SRT any longer. TNRbb-std did not affect speech recognition significantly. No significant effects on subjective ratings were found for any of the items investigated. In addition, at a constant speech level of SRT + 3 dB, no effect of any of the algorithms was found on word correct scores, including TNRmb with personalized settings.

CONCLUSIONS

Our study results indicate that personalizing noise reduction settings of a multiband TNR algorithm can significantly improve speech intelligibility in transient noise, but only under challenging listening conditions around the SRT. At more favorable SNRs (SRT + 3 dB), this benefit was lost. We hypothesize that TNRmb was beneficial at lower SNRs, because of more effective artifact detection under those conditions. Group-averaged settings of the multiband algorithm did not significantly affect speech recognition. TNRbb decreased speech recognition significantly using personalized parameter settings. Rating scores were not significantly affected by the algorithms under any condition tested. The currently available TNR algorithm for Advanced Bionics systems (SoundRelax) is a broadband filter that does not support personalization of its settings. Future iterations of this algorithm might benefit from upgrading it to a multiband variant with the option to personalize its parameter settings.

摘要

目的

噪声环境下的言语理解对于植入者来说是困难的。一种常见且具有干扰性的噪声是瞬态噪声。我们已经在单侧植入者中测试了瞬态噪声降低(TNR)算法,以研究根据个体的自身偏好来个性化噪声降低设置的优点。

设计

在咖啡馆噪声中,对一组 15 名单侧植入者进行了两种宽带和多频带 TNR 算法(TNRbb 和 TNRmb)的两个参数的个性化对言语识别的影响测试。噪声由餐具碰撞声和背景噪声的混合组成。每个参与者可以单独改变两个参数,即衰减的缩放因子和释放时间(τ)。参数τ表示在检测到瞬态后应用衰减的持续时间。作为参考,测试了 Advanced Bionics 的当前临床标准 TNR“SoundRelax”(TNRbb-std)。通过自适应确定言语接受阈值(SRT)来评估算法对言语识别的有效性。在固定信噪比(SNR)为 SRT+3dB 的情况下,使用评分任务评估算法的可能主观益处。评分在四个项目上进行,分别是言语可懂度、言语自然度、聆听努力度和噪声的烦恼度。在这些固定的言语水平上,还确定了单词正确得分。

结果

个性化 TNRmb 统计学上显著改善了 SRT,提高了 1.3dB,而个性化 TNRbb 则显著降低了 1.7dB。对于 TNRmb,我们试图通过确定一个基于群组的设置来进一步优化其设置,将那些没有从中受益的个体排除在外。然而,使用这些基于群组的设置,TNRmb 对 SRT 不再具有显著影响。TNRbb-std 对言语识别没有显著影响。对于所研究的任何项目,都没有发现对主观评分有显著影响。此外,在恒定的言语水平 SRT+3dB 下,没有发现任何算法对单词正确得分有影响,包括个性化设置的 TNRmb。

结论

我们的研究结果表明,个性化多频带 TNR 算法的噪声降低设置可以显著提高瞬态噪声下的言语可懂度,但仅在 SRT 周围的挑战性聆听条件下。在更有利的 SNR(SRT+3dB)下,这种益处就消失了。我们假设,在较低的 SNR 下,TNRmb 是有益的,因为在这些条件下可以更有效地检测到伪影。多频带算法的群组平均设置对言语识别没有显著影响。个性化参数设置会显著降低 TNRbb 的言语识别。在任何测试条件下,评分都没有受到算法的显著影响。目前 Advanced Bionics 系统的 TNR 算法(SoundRelax)是一种宽带滤波器,不支持其设置的个性化。未来的版本可能受益于升级为具有个性化参数设置选项的多频带变体。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/b80d/8542075/8bc3f94b164b/aud-42-1602-g001.jpg

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