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听众用于区分流畅与不流畅叙事话语的感知线索。

Perceptual cues used by listeners to discriminate fluent from nonfluent narrative discourse.

作者信息

Park Hyejin, Rogalski Yvonne, Rodriguez Amy D, Zlatar Zvinka, Benjamin Michelle, Harnish Stacy, Bennett Jeffrey, Rosenbek John C, Crosson Bruce, Reilly Jamie

机构信息

Department of Speech, Language, & Hearing Sciences, University of Florida, Gainesville, FL, USA.

出版信息

Aphasiology. 2011 Sep 1;25(9):998-1015. doi: 10.1080/02687038.2011.570770.

Abstract

BACKGROUND

Language fluency is a common diagnostic marker for discriminating among aphasia subtypes and improving clinical inference about site of lesion. Nevertheless, fluency remains a subjective construct that is vulnerable to a number of potential sources of variability, both between and within raters. Moreover, this variability is compounded by distinct neurological aetiologies that shape the characteristics of a narrative speech sample. Previous research on fluency has focused on characteristics of a particular patient population. Less is known about the ways that raters spontaneously weigh different perceptual cues when listening to narrative speech samples derived from a heterogeneous sample of brain-damaged adults. AIM: We examined the weighted contribution of a series of perceptual predictors that influence listeners' judgements of language fluency among a diverse sample of speakers. Our goal was to sample a range of narrative speech representing most fluent (i.e., healthy controls) to potentially least nonfluent (i.e., left inferior frontal lobe stroke). METHODS #ENTITYSTARTX00026; PROCEDURES: Three raters blind to patient diagnosis made forced choice judgements of fluency (i.e., fluent or nonfluent) for 61 pseudorandomly presented narrative speech samples elicited by the BDAE Cookie Theft picture. Samples were collected from a range of clinical populations, including patients with frontal and temporal lobe pathologies and non-brain-damaged speakers. We conducted a logistic regression analysis in which the dependent measure was the majority judgement of fluency for each speech sample (i.e., fluent or non-fluent). The statistical model contained five predictors: speech rate, syllable type token ratio, speech productivity, audible struggle, and filler ratio. OUTCOMES #ENTITYSTARTX00026; RESULTS: This statistical model fit the data well, discriminating group membership (i.e., fluent or nonfluent) with 95.1% accuracy. The best step of the regression model included the following predictors: speech rate, speech productivity, and audible struggle. Listeners were sensitive to different weightings of these predictors. CONCLUSIONS: A small combination of perceptual variables can strongly discriminate whether a listener will assign a judgement of fluent versus nonfluent. We discuss implications for these findings and identify areas of potential future research towards further specifying the construct of fluency among adults with acquired speech and language disorders.

摘要

背景

语言流畅性是区分失语症亚型以及改善对病变部位临床推断的常见诊断指标。然而,流畅性仍然是一个主观概念,容易受到评分者之间以及评分者内部多种潜在变异性来源的影响。此外,这种变异性因塑造叙事性言语样本特征的不同神经病因而更加复杂。先前关于流畅性的研究主要集中在特定患者群体的特征上。对于评分者在听取来自脑损伤成人异质样本的叙事性言语样本时如何自发权衡不同感知线索的方式,我们了解得较少。目的:我们研究了一系列感知预测因素对不同说话者样本中听众语言流畅性判断的加权贡献。我们的目标是对一系列叙事性言语进行抽样,从最流畅的(即健康对照)到可能最不流畅的(即左额叶下回中风患者)。方法#实体开始X00026;程序:三名对患者诊断不知情的评分者对由波士顿诊断性失语症检查(BDAE)的“偷饼干”图片引出的61个伪随机呈现的叙事性言语样本进行流畅性(即流畅或不流畅)的强制选择判断。样本来自一系列临床群体,包括额叶和颞叶病变患者以及非脑损伤的说话者。我们进行了逻辑回归分析,其中因变量是每个言语样本流畅性的多数判断(即流畅或不流畅)。统计模型包含五个预测因素:语速、音节类型与词元比率、言语产出率、明显的吃力程度和填充词比率。结果#实体开始X00026;结果:该统计模型与数据拟合良好,以95.1%的准确率区分了组别(即流畅或不流畅)。回归模型的最佳步骤包括以下预测因素:语速、言语产出率和明显的吃力程度。听众对这些预测因素的不同权重很敏感。结论:一小组合感知变量能够强烈区分听众是否会做出流畅与不流畅的判断。我们讨论了这些发现的意义,并确定了未来潜在的研究领域,以进一步明确获得性言语和语言障碍成人的流畅性概念。

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