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噪声中的词汇(WIN)测试的组内和组间测试、重测信度

Intra- and inter-session test, retest reliability of the Words-in-Noise (WIN) test.

作者信息

Wilson Richard H, McArdle Rachel

机构信息

James H. Quillen VA Medical Center, Mountain Home, Tennessee 37684, USA.

出版信息

J Am Acad Audiol. 2007 Nov-Dec;18(10):813-25. doi: 10.3766/jaaa.18.10.2.

Abstract

Retest stability and retest reliability were assessed for the Words-in-Noise Test (WIN) in two experiments involving older listeners with sensorineural hearing loss. In Experiment 1, the 70-item WIN protocol was administered during two sessions 12 months apart to examine retest stability on a sample of 315 veterans from four VA Medical Centers. The mean 50% points on the WIN were 12.5- and 12.8-dB S/N for the two sessions with a critical difference of 3.5 dB and an intra-class correlation coefficient of 0.88. [Normal recognition performance on the WIN (50% point) is < or =6-dB S/N.] In Experiment 2, intra- and inter-session retest reliability was examined for the two 35-word WIN protocols on 96 veterans, 48 of whom had mild-to-severe hearing loss (Group 1) and 48 of whom had a moderate-to-severe hearing loss (Group 2). The mean 50% points on the WIN during the two sessions (separated by 40 days) were 13.0- and 13.4-dB S/N (Group 1) and 15.3- and 15.8-dB S/N (Group 2) with no significant intra-session differences. A 3.1-dB critical difference was calculated for the groups combined with intra-class correlations of 0.89 and 0.91 for Group 1 and Group 2, respectively.

摘要

在两项针对患有感音神经性听力损失的老年听众的实验中,对言语噪声测试(WIN)的重测稳定性和重测信度进行了评估。在实验1中,70项WIN测试方案在间隔12个月的两次测试中进行,以检验来自四个退伍军人事务部医疗中心的315名退伍军人样本的重测稳定性。两次测试中WIN的平均50%得分分别为12.5 dB S/N和12.8 dB S/N,临界差异为3.5 dB,组内相关系数为0.88。[WIN测试(50%得分)的正常识别表现为≤6 dB S/N。]在实验2中,对96名退伍军人的两个35词WIN测试方案进行了组内和组间重测信度检验,其中48人患有轻度至重度听力损失(第1组),48人患有中度至重度听力损失(第2组)。两次测试(间隔40天)中WIN的平均50%得分在第1组为13.0 dB S/N和13.4 dB S/N,在第2组为15.3 dB S/N和15.8 dB S/N,组内差异不显著。计算出两组合并后的临界差异为3.1 dB,第1组和第2组的组内相关系数分别为0.89和0.91。

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