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用于语言转录本系统分析的动态归一化

Dynamic Norming for Systematic Analysis of Language Transcripts.

作者信息

Tucci Alexander, Plante Elena, Heilmann John J, Miller Jon F

机构信息

Department of Speech, Language, and Hearing Sciences, The University of Arizona, Tucson.

Department of Communication Sciences & Disorders, University of Wisconsin-Milwaukee.

出版信息

J Speech Lang Hear Res. 2022 Jan 12;65(1):320-333. doi: 10.1044/2021_JSLHR-21-00227. Epub 2021 Dec 10.

Abstract

PURPOSE

This exploratory study sought to establish the psychometric stability of a dynamic norming system using the Systematic Analysis of Language Transcripts (SALT) databases. Dynamic norming is the process by which clinicians select a subset of the normative database sample matched to their individual client's demographic characteristics.

METHOD

The English Conversation and Student-Selected Story (SSS) Narrative databases from SALT were used to conduct the analyses in two phases. Phase 1 was an exploratory examination of the standard error of measure (SEM) of six clinically relevant transcript metrics at predetermined sampling intervals to determine (a) whether the dynamic norming process resulted in samples with adequate stability and (b) the minimum sample size required for stable results. Phase 2 was confirmatory, as random samples were taken from the SALT databases to simulate clinical comparison samples. These samples were examined (a) for stability of SEM estimations and (b) to confirm the sample size findings from Phase 1.

RESULTS

Results of Phase 1 indicated that the SEMs for the six transcript metrics across both databases were low relative to each metric's scale. Samples as small as 40-50 children in the Conversation database and 20-30 children in the SSS Narrative database resulted in stable SEM estimations. Phase 2 confirmed these findings, indicating that age bands as small as ±4 months from a given center-point resulted in stable estimations provided there were approximately 35 children or more in the comparison sample.

CONCLUSION

Psychometrically stable comparison samples can be achieved using SALT's dynamic norming system that are much smaller than the standard sample size recommended in most tests of children's language.

摘要

目的

本探索性研究旨在利用语言转录系统分析(SALT)数据库建立动态常模系统的心理测量稳定性。动态常模是临床医生从常模数据库样本中选择与个体客户人口统计学特征相匹配的子集的过程。

方法

使用SALT的英语对话和学生自选故事(SSS)叙事数据库分两个阶段进行分析。第一阶段是对六个临床相关转录指标在预定抽样间隔下的测量标准误(SEM)进行探索性检查,以确定(a)动态常模过程是否产生具有足够稳定性的样本,以及(b)获得稳定结果所需的最小样本量。第二阶段是验证性的,从SALT数据库中抽取随机样本以模拟临床比较样本。对这些样本进行检查,(a)以评估SEM估计的稳定性,以及(b)确认第一阶段的样本量结果。

结果

第一阶段的结果表明,相对于每个指标的量表,两个数据库中六个转录指标的SEM都较低。对话数据库中40 - 50名儿童以及SSS叙事数据库中20 - 30名儿童的样本产生了稳定的SEM估计。第二阶段证实了这些发现,表明只要比较样本中有大约35名或更多儿童,从给定中心点起±4个月的年龄范围就能产生稳定的估计。

结论

使用SALT的动态常模系统可以获得心理测量稳定的比较样本,其样本量比大多数儿童语言测试中推荐的标准样本量小得多。

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