Screening screeners: calculating classification indices using correlations and cut-points

IF 2.1 3区 教育学 Q1 EDUCATION, SPECIAL Annals of Dyslexia Pub Date : 2022-06-10 DOI:10.1007/s11881-022-00261-5
Ashley A. Edwards, Wilhelmina van Dijk, Christine M. White, Christopher Schatschneider
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引用次数: 2

Abstract

Abstract

Given the recent push for universal screening, it is important to take into account how well a screener identifies children at risk for reading problems as well as how screener and sample information contribute to this classification. Picking the best cut-point for a particular sample and screening goal can be challenging given that test manuals often report classification information for a specific cut-point and sample base rate which may not generalize to other samples. By assuming a bivariate normal distribution, it is possible to calculate all of the classification information for a screener based on the correlation between the screener and outcome, the cut-point on the outcome (i.e., the base rate in the sample), and the cut-point on the screener. We provide an example with empirical data to validate these estimation procedures. This information is the basis for a free online tool that provides classification information for a given correlation between screener and outcome and cut-points on each. Results show that the correlation between screener and outcome needs to be greater than .9 (higher than observed in practice) to obtain good classification. These findings are important for researchers, administrators, and practitioners because current screeners do not meet these requirements. Since a correlation is dependent on the reliability of the measures involved, we need screeners with better reliability and/or multiple measures to increase reliability. Additionally, we demonstrate the impact of base rate on positive predictive power and discuss how gated screening can be useful in samples with low base rates.

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筛选筛选器:使用相关性和切割点计算分类指数。
鉴于最近推动普及筛查,重要的是要考虑到筛查人员在多大程度上识别出有阅读问题风险的儿童,以及筛查人员和样本信息对这一分类的贡献。考虑到测试手册经常报告特定切入点的分类信息和样本基准率,而这些信息可能无法推广到其他样本,因此为特定样本选择最佳切入点和筛选目标可能具有挑战性。通过假设二元正态分布,可以基于筛选器和结果之间的相关性、结果上的分界点(即样本中的基本比率)和筛选器上的分界点将计算筛选器的所有分类信息。我们提供了一个带有经验数据的例子来验证这些估计程序。这些信息是免费在线工具的基础,该工具为筛选者和结果之间的给定相关性以及每种相关性上的切割点提供分类信息。结果表明,筛选者和结果之间的相关性需要大于.9(高于实践中观察到的)才能获得良好的分类。这些发现对研究人员、管理人员和从业者来说很重要,因为目前的筛查人员不符合这些要求。由于相关性取决于所涉及措施的可靠性,我们需要具有更好可靠性和/或多种措施的筛选器来提高可靠性。此外,我们证明了基本率对阳性预测能力的影响,并讨论了门控筛查如何在低基本率的样本中有用。
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来源期刊
Annals of Dyslexia
Annals of Dyslexia Multiple-
CiteScore
4.90
自引率
8.70%
发文量
25
期刊介绍: Annals of Dyslexia is an interdisciplinary, peer-reviewed journal dedicated to the scientific study of dyslexia, its comorbid conditions; and theory-based practices on remediation, and intervention of dyslexia and related areas of written language disorders including spelling, composing and mathematics. Primary consideration for publication is given to original empirical studies, significant review, and well-documented reports of evidence-based effective practices. Only original papers are considered for publication.
期刊最新文献
Foveal crowding in children with developmental dyslexia. Bridging the Gap in Adult Dyslexia Research: Assessing the Efficacy of a Linguistic Intervention on Literacy Skills. Dyslexia in the 21st century: revisiting the consensus definition Exploring the feasibility of implementing the SPELL-Links to Reading and Writing intervention. Identifying students with dyslexia: exploration of current assessment methods.
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