停止信号反应时间的频率混合建模

M. Soltanifar, A. Dupuis, R. Schachar, M. Escobar
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引用次数: 5

摘要

停止信号反应时间(SSRT)是一种测量停止信号过程潜伏期的方法,由美国科学家戈登·洛根(Gordon Logan, 1994)利用赛马的围棋和停止信号过程模型从理论上提出。SSRT假设前面的试验类型(go/stop)对其测量的影响相等。在违反这一假设的情况下,我们考虑基于先前分析聚类反应时间(GORT)和线性混合模型(LMM)数据分析结果的思想来估计SSRT。考虑了两组试验,包括在开始试验之前进行的试验和在停止试验之前进行的其他试验。考虑到集群类型SSRTs之间的差异,我们需要考虑计算中未使用的集群类型信息的一些新索引。我们引入混合SSRT和加权SSRT作为SSRT的两个新的不同指标来解决违反假设。混合SSRT和加权SSRT在特殊条件下理论上是渐近等价的。以停止单任务(SST)的实际数据为例,展示了这两个新的SSRT指数的等效性,以及与Logan的1994年单SSRT相比,它们的量级更大。缩写:ADHD:注意缺陷多动障碍;ExG: Ex-Gaussiandistribution;GORT:围棋试验中的反应时间;GORTA: a型试验的反应时间;GORTB: B型go试验的反应时间;LMM:线性混合模型;SWAN: ADHD症状优缺点与正常行为评定量表;SSD:停止信号延时;SR:信号响应;SRRT:失败停止试验的反应时间;SSRT:停止试验中停止信号反应时间;停止signaltask。
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A frequentist mixture modeling of stop signal reaction times
The stop signal reaction time (SSRT), a measure of the latency of the stop signal process, has been theoretically formulated using a horse race model of go and stop signal processes by the American scientist Gordon Logan (1994). The SSRT assumes equal impact of the preceding trial type (go/stop) on its measurement. In the case of a violation of this assumption, we consider estimation of SSRT based on the idea of earlier analysis of cluster type go reaction times (GORT) and linear mixed model (LMM) data analysis results. Two clusters of trials were considered including those trials preceded by a go trial and other trials preceded by a stop trial. Given disparities between cluster type SSRTs, we need to consider some new indexes considering the unused cluster type information in the calculations. We introduce mixture SSRT and weighted SSRT as two new distinct indexes of SSRT that address the violated assumption. Mixture SSRT and weighted SSRT are theoretically asymptotically equivalent under special conditions. An example of stop single task (SST) real data is presented to show equivalency of these two new SSRT indexes and their larger magnitude compared to Logan's single 1994 SSRT. Abbreviations: ADHD: attention deficit hyperactivity disorder; ExG: Ex-Gaussiandistribution; GORT: reaction time in a go trial; GORTA: reaction time in a type A gotrial; GORTB: reaction time in a type B go trial; LMM: linear mixed model; SWAN:strengths and weakness of ADHD symptoms and normal behavior rating scale; SSD: stop signal delay; SR: signal respond; SRRT: reaction time in a failedstop trial; SSRT: stop signal reaction times in a stop trial; SST: stop signaltask.
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来源期刊
Biostatistics and Epidemiology
Biostatistics and Epidemiology Medicine-Health Informatics
CiteScore
1.80
自引率
0.00%
发文量
23
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