Sørensen Øystein, Westerhausen René
Center for Lifespan Changes in Brain and Cognition (LCBC), Department of Psychology, University of Oslo, Oslo, Norway.
Department of Biological and Medical Psychology, University of Bergen, Bergen, Norway.
Laterality. 2020 Sep;25(5):560-582. doi: 10.1080/1357650X.2020.1769124. Epub 2020 May 26.
Researchers interested in hemispheric dominance frequently aim to infer latent functional differences between the hemispheres from observed lateral behavioural or brain-activation differences. To be valid, these inferences may not only rely on the observed laterality measures but also need to account for the antecedent probabilities of the studied latent classes. This fact is frequently ignored in the literature, leading to misclassifications especially when considering low probability classes as, for example, "atypical" right hemispheric language dominance. In the present paper, we revisit this inference problem (a) by outlining a general Bayesian framework for the inferential process and (b) by exemplarily applying this framework on the inference of hemispheric dominance for speech processing from dichotic-listening laterality scores. Utilizing large-scale empirical data sets as well as simulation studies, we show that valid inferences also regarding low probable latent classes can be drawn applying the present framework, although within certain boundaries. We further illustrate that repeated laterality measures of the same person may be used to improve the classification outcome. The article additionally provides R package and Shiny app implementations of the suggested Bayesian framework, which allow to explore the boundaries of valid inference for the present and other examples.
对半球优势感兴趣的研究人员常常试图从观察到的行为或大脑激活的侧向差异中推断出半球之间潜在的功能差异。为了使这些推断有效,它们不仅可能依赖于观察到的偏侧性测量,还需要考虑所研究的潜在类别出现的先验概率。这一事实在文献中常常被忽视,从而导致错误分类,尤其是在将低概率类别视为例如“非典型”右半球语言优势时。在本文中,我们重新审视这个推断问题:(a)通过概述一个用于推断过程的通用贝叶斯框架;(b)通过将这个框架应用于从双耳分听偏侧性分数推断言语处理的半球优势的示例。利用大规模实证数据集以及模拟研究,我们表明,应用当前框架也可以得出关于低概率潜在类别的有效推断,尽管存在一定限制。我们进一步说明,同一个人的重复偏侧性测量可用于改善分类结果。本文还提供了所建议的贝叶斯框架的R包和Shiny应用程序实现,这有助于探索当前及其他示例中有效推断的边界。