Department of Otolaryngology, University of Texas Southwestern Medical Center, Dallas, Texas.
Department of Otolaryngology-Head and Neck Surgery, Walter Reed National Military Medical Center, Bethesda, Maryland.
Otol Neurotol. 2021 Jun 1;42(5):e530-e535. doi: 10.1097/MAO.0000000000003023.
To explore the predictive value of utilizing routine audiometry to best determine cochlear implant (CI) candidacy using AzBio sentences.
A retrospective chart review was performed between 2011 and 2018 for 206 adult patients who underwent CI evaluation assessed with AzBio sentences. Better hearing ear word recognition score (WRS) using Northwestern University-6 word lists presented at decibel hearing level from a standard audiogram was used to determine when best to refer a patient for CI evaluation. Predicted AzBio scores from multivariate regression models were calculated and compared with the actual CI candidacy to assess accuracy of the regression models.
Race, marital status, hearing aid type, better hearing ear WRS, and HL were all independently and significantly associated with AzBio testing in quiet on univariate analyses. Better hearing ear WRS and better hearing ear decibel hearing level predicted AzBio Quiet on multivariate regression analysis. For AzBio +10 dB signal-to-noise ratio (SNR), sex, and better hearing ear WRS each significantly predicted speech perception testing. Predicted CI candidacy was based on AzBio sentence testing of ≤60% for the ease of statistical analysis. Regression models for AzBio sentence testing in quiet and +10 dB SNR agreed with the actual testing most of the time (85.0 and 87.9%, respectively). A generalized linear model was built for both AzBio testing in quiet and +10 dB SNR.
A WRS of <60% in the better hearing ear derived from a routine audiogram will identify 83.1% of CI candidates while appropriately excluding 63.8% of patients.
利用常规听力测试来预测人工耳蜗(CI)植入的候选者,采用 AzBio 句子进行评估。
对 2011 年至 2018 年间接受过 AzBio 句子评估的 206 例成人患者进行了回顾性图表审查。采用西北大学 6 个单词列表的更好听力耳单词识别得分(WRS),在标准听力图的分贝听力水平上呈现,以确定何时最佳推荐患者进行 CI 评估。计算了来自多元回归模型的预测 AzBio 得分,并将其与实际 CI 候选者进行比较,以评估回归模型的准确性。
在单变量分析中,种族、婚姻状况、助听器类型、更好听力耳 WRS 和 HL 均与安静状态下的 AzBio 测试独立且显著相关。更好听力耳 WRS 和更好听力耳分贝听力水平在多元回归分析中预测了 AzBio 安静。对于 AzBio +10dB 信噪比(SNR),性别和更好听力耳 WRS 均显著预测了言语感知测试。基于 AzBio 句子测试的 ≤60%的预测 CI 候选者,为了便于统计分析。AzBio 句子测试在安静和 +10dB SNR 的回归模型在大多数情况下与实际测试相符(分别为 85.0%和 87.9%)。为安静状态下的 AzBio 测试和 +10dB SNR 建立了一个广义线性模型。
从常规听力图中得出的更好听力耳的 WRS <60%将确定 83.1%的 CI 候选者,同时适当排除 63.8%的患者。