Gonçalves Braz Libio, Fontan Lionel, Pinquier Julien, Stone Michael A, Füllgrabe Christian
IRIT, CNRS, Université Paul Sabatier, Toulouse, France.
Archean LABS, Montauban, France.
Front Neurosci. 2022 Feb 21;16:779048. doi: 10.3389/fnins.2022.779048. eCollection 2022.
Hearing-aid (HA) prescription rules (such as NAL-NL2, DSL-v5, and CAM2) are used by HA audiologists to define initial HA settings (e.g., insertion gains, IGs) for patients. This initial fitting is later individually adjusted for each patient to improve clinical outcomes in terms of speech intelligibility and listening comfort. During this fine-tuning stage, speech-intelligibility tests are often carried out with the patient to assess the benefits associated with different HA settings. As these tests tend to be time-consuming and performance on them depends on the patient's level of fatigue and familiarity with the test material, only a limited number of HA settings can be explored. Consequently, it is likely that a suboptimal fitting is used for the patient. Recent studies have shown that automatic speech recognition (ASR) can be used to predict the effects of IGs on speech intelligibility for patients with age-related hearing loss (ARHL). The aim of the present study was to extend this approach by optimizing, in addition to IGs, compression thresholds (CTs). However, increasing the number of parameters to be fitted increases exponentially the number of configurations to be assessed. To limit the number of HA settings to be tested, three random-search (RS) genetic algorithms were used. The resulting new HA fitting method, combining ASR and RS, is referred to as "objective prescription rule based on ASR and random search" (OPRA-RS). Optimal HA settings were computed for 12 audiograms, representing average and individual audiometric profiles typical for various levels of ARHL severity, and associated ASR performances were compared to those obtained with the settings recommended by CAM2. Each RS algorithm was run twice to assess its reliability. For all RS algorithms, ASR scores obtained with OPRA-RS were significantly higher than those associated with CAM2. Each RS algorithm converged on similar optimal HA settings across repetitions. However, significant differences were observed between RS algorithms in terms of maximum ASR performance and processing costs. These promising results open the way to the use of ASR and RS algorithms for the fine-tuning of HAs with potential speech-intelligibility benefits for the patient.
助听器(HA)处方规则(如NAL-NL2、DSL-v5和CAM2)被HA听力学家用于为患者定义初始HA设置(例如,插入增益,IGs)。这种初始验配随后会针对每个患者进行单独调整,以在言语可懂度和聆听舒适度方面改善临床效果。在这个微调阶段,通常会与患者进行言语可懂度测试,以评估与不同HA设置相关的益处。由于这些测试往往耗时,并且测试表现取决于患者的疲劳程度和对测试材料的熟悉程度,因此只能探索有限数量的HA设置。因此,很可能会为患者使用次优的验配。最近的研究表明,自动语音识别(ASR)可用于预测IGs对年龄相关性听力损失(ARHL)患者言语可懂度的影响。本研究的目的是通过除了优化IGs之外还优化压缩阈值(CTs)来扩展这种方法。然而,增加要拟合的参数数量会使要评估的配置数量呈指数级增长。为了限制要测试的HA设置数量,使用了三种随机搜索(RS)遗传算法。由此产生的结合了ASR和RS的新HA验配方法被称为“基于ASR和随机搜索的客观处方规则”(OPRA-RS)。针对12份听力图计算了最佳HA设置,这些听力图代表了各种ARHL严重程度水平的典型平均和个体听力测量特征,并将相关的ASR性能与使用CAM2推荐的设置获得的性能进行了比较。每个RS算法运行两次以评估其可靠性。对于所有RS算法,使用OPRA-RS获得的ASR分数显著高于与CAM2相关的分数。每个RS算法在重复过程中都收敛于相似的最佳HA设置。然而,在最大ASR性能和处理成本方面,RS算法之间观察到了显著差异。这些有前景的结果为使用ASR和RS算法对HA进行微调开辟了道路,这可能会给患者带来言语可懂度方面的益处。