Jeppe H Christensen, Johanne Rumley, Juan Camilo Gil-Carvajal, Helen Whiston, Melanie Lough, Gabrielle H Saunders
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In addition, it was examined how self-reported listening activity and hearing-aid data-logging can augment EMAs for individualized and contextualized hearing outcome assessments.</p><p><strong>Design: </strong>Experienced hearing-aid users (N = 40) with mild-to-moderate symmetrical sensorineural hearing loss completed the SSQ questionnaire and gave repeated EMAs for two wear periods of 2-weeks each with two different hearing-aid models that differed mainly in their noise reduction technology. The EMAs were linked to a self-reported listening activity and sound environment parameters (from hearing-aid data-logging) recorded at the time of EMA completion. Wear order was randomized by hearing-aid model. Linear mixed-effects models and Random Forest models with five-fold cross-validation were used to assess the statistical associations between listening experiences and end-of-trial preferences, and to evaluate how accurately EMAs predicted preference within individuals.</p><p><strong>Results: </strong>Only 6 of the 49 SSQ items significantly discriminated between responses made for the end-of-trial preferred versus nonpreferred hearing-aid model. For the EMAs, questions related to perception of the sound from the hearing aids were all significantly associated with preference, and these associations were strongest in EMAs completed in sound environments with predominantly low SNR and listening activities related to television, people talking, nonspecific listening, and music listening. Mean differences in listening experiences from SSQ and EMA correctly predicted preference in 71.8% and 72.5% of included participants, respectively. However, a prognostic classification of single EMAs into end-of-trial preference with a Random Forest model achieved a 93.8% accuracy when contextual information was included.</p><p><strong>Conclusions: </strong>SSQ and EMA predicted preference equally well when considering mean differences, however, EMAs had a high prognostic classifications accuracy due to the repeated-measures nature, which make them ideal for individualized hearing outcome investigations, especially when responses are combined with contextual information about the sound environment.</p>","PeriodicalId":55172,"journal":{"name":"Ear and Hearing","volume":null,"pages":null},"PeriodicalIF":2.6000,"publicationDate":"2024-09-01","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"https://www.ncbi.nlm.nih.gov/pmc/articles/PMC11325967/pdf/","citationCount":"0","resultStr":"{\"title\":\"Predicting Individual Hearing-Aid Preference From Self-Reported Listening Experiences in Daily Life.\",\"authors\":\"Jeppe H Christensen, Johanne Rumley, Juan Camilo Gil-Carvajal, Helen Whiston, Melanie Lough, Gabrielle H Saunders\",\"doi\":\"10.1097/AUD.0000000000001520\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<p><strong>Objectives: </strong>The study compared the utility of two approaches for collecting real-world listening experiences to predict hearing-aid preference: a retrospective questionnaire (Speech, Spatial, and Qualities of Hearing Scale [SSQ]) and in-situ Ecological Momentary Assessment (EMA). The rationale being that each approach likely provides different and yet complementary information. In addition, it was examined how self-reported listening activity and hearing-aid data-logging can augment EMAs for individualized and contextualized hearing outcome assessments.</p><p><strong>Design: </strong>Experienced hearing-aid users (N = 40) with mild-to-moderate symmetrical sensorineural hearing loss completed the SSQ questionnaire and gave repeated EMAs for two wear periods of 2-weeks each with two different hearing-aid models that differed mainly in their noise reduction technology. The EMAs were linked to a self-reported listening activity and sound environment parameters (from hearing-aid data-logging) recorded at the time of EMA completion. Wear order was randomized by hearing-aid model. Linear mixed-effects models and Random Forest models with five-fold cross-validation were used to assess the statistical associations between listening experiences and end-of-trial preferences, and to evaluate how accurately EMAs predicted preference within individuals.</p><p><strong>Results: </strong>Only 6 of the 49 SSQ items significantly discriminated between responses made for the end-of-trial preferred versus nonpreferred hearing-aid model. For the EMAs, questions related to perception of the sound from the hearing aids were all significantly associated with preference, and these associations were strongest in EMAs completed in sound environments with predominantly low SNR and listening activities related to television, people talking, nonspecific listening, and music listening. Mean differences in listening experiences from SSQ and EMA correctly predicted preference in 71.8% and 72.5% of included participants, respectively. 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引用次数: 0
摘要
研究目的该研究比较了两种收集真实世界听力经验的方法对预测助听器偏好的实用性:回顾性问卷(言语、空间和听力质量量表 [SSQ])和现场生态瞬间评估 (EMA)。理由是每种方法可能提供不同但互补的信息。此外,还研究了自我报告的听力活动和助听器数据记录如何增强 EMA,以进行个性化和情景化的听力结果评估:设计:轻度至中度对称性感音神经性听力损失的资深助听器用户(N = 40)填写了 SSQ 问卷,并使用两种不同型号的助听器(主要在降噪技术方面存在差异),在两个为期 2 周的佩戴期内重复进行了 EMA。EMA 与自我报告的听力活动和 EMA 完成时记录的声环境参数(来自助听器数据记录)相关联。佩戴顺序按助听器型号随机排列。采用线性混合效应模型和五倍交叉验证的随机森林模型来评估聆听体验与试验结束时的偏好之间的统计关联,并评估 EMA 预测个人偏好的准确程度:结果:在 49 个 SSQ 项目中,只有 6 个项目能显著区分对试验结束时首选与非首选助听器模式的回答。就 EMA 而言,与助听器声音感知相关的问题都与偏好有显著关联,而且在主要为低信噪比的声音环境中完成的 EMA 以及与电视、人声交谈、非特定聆听和音乐聆听相关的聆听活动中,这些关联性最强。从 SSQ 和 EMA 中得出的听力体验平均差异分别正确预测了 71.8% 和 72.5% 的参与者的偏好。然而,当包含上下文信息时,使用随机森林模型对单个 EMA 进行试验结束偏好预后分类的准确率达到了 93.8%:在考虑平均差的情况下,SSQ 和 EMA 预测偏好的效果相当好,但是,EMA 因其重复测量的性质而具有较高的预后分类准确性,这使其成为个性化听力结果调查的理想选择,尤其是当反应与声音环境的上下文信息相结合时。
Predicting Individual Hearing-Aid Preference From Self-Reported Listening Experiences in Daily Life.
Objectives: The study compared the utility of two approaches for collecting real-world listening experiences to predict hearing-aid preference: a retrospective questionnaire (Speech, Spatial, and Qualities of Hearing Scale [SSQ]) and in-situ Ecological Momentary Assessment (EMA). The rationale being that each approach likely provides different and yet complementary information. In addition, it was examined how self-reported listening activity and hearing-aid data-logging can augment EMAs for individualized and contextualized hearing outcome assessments.
Design: Experienced hearing-aid users (N = 40) with mild-to-moderate symmetrical sensorineural hearing loss completed the SSQ questionnaire and gave repeated EMAs for two wear periods of 2-weeks each with two different hearing-aid models that differed mainly in their noise reduction technology. The EMAs were linked to a self-reported listening activity and sound environment parameters (from hearing-aid data-logging) recorded at the time of EMA completion. Wear order was randomized by hearing-aid model. Linear mixed-effects models and Random Forest models with five-fold cross-validation were used to assess the statistical associations between listening experiences and end-of-trial preferences, and to evaluate how accurately EMAs predicted preference within individuals.
Results: Only 6 of the 49 SSQ items significantly discriminated between responses made for the end-of-trial preferred versus nonpreferred hearing-aid model. For the EMAs, questions related to perception of the sound from the hearing aids were all significantly associated with preference, and these associations were strongest in EMAs completed in sound environments with predominantly low SNR and listening activities related to television, people talking, nonspecific listening, and music listening. Mean differences in listening experiences from SSQ and EMA correctly predicted preference in 71.8% and 72.5% of included participants, respectively. However, a prognostic classification of single EMAs into end-of-trial preference with a Random Forest model achieved a 93.8% accuracy when contextual information was included.
Conclusions: SSQ and EMA predicted preference equally well when considering mean differences, however, EMAs had a high prognostic classifications accuracy due to the repeated-measures nature, which make them ideal for individualized hearing outcome investigations, especially when responses are combined with contextual information about the sound environment.
期刊介绍:
From the basic science of hearing and balance disorders to auditory electrophysiology to amplification and the psychological factors of hearing loss, Ear and Hearing covers all aspects of auditory and vestibular disorders. This multidisciplinary journal consolidates the various factors that contribute to identification, remediation, and audiologic and vestibular rehabilitation. It is the one journal that serves the diverse interest of all members of this professional community -- otologists, audiologists, educators, and to those involved in the design, manufacture, and distribution of amplification systems. The original articles published in the journal focus on assessment, diagnosis, and management of auditory and vestibular disorders.