Enhancing causal inference in population-based neuroimaging data in children and adolescents

IF 4.6 2区 医学 Q1 NEUROSCIENCES Developmental Cognitive Neuroscience Pub Date : 2024-10-19 DOI:10.1016/j.dcn.2024.101465
Rachel Visontay , Lindsay M. Squeglia , Matthew Sunderland , Emma K. Devine , Hollie Byrne , Louise Mewton
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Abstract

Recent years have seen the increasing availability of large, population-based, longitudinal neuroimaging datasets, providing unprecedented capacity to examine brain-behavior relationships in the neurodevelopmental context. However, the ability of these datasets to deliver causal insights into brain-behavior relationships relies on the application of purpose-built analysis methods to counter the biases that otherwise preclude causal inference from observational data. Here we introduce these approaches (i.e., propensity score-based methods, the ‘G-methods’, targeted maximum likelihood estimation, and causal mediation analysis) and conduct a review to determine the extent to which they have been applied thus far in the field of developmental cognitive neuroscience. We identify just eight relevant studies, most of which employ propensity score-based methods. Many approaches are entirely absent from the literature, particularly those that promote causal inference in settings with complex, multi-wave data and repeated neuroimaging assessments. Causality is central to an etiological understanding of the relationship between the brain and behavior, as well as for identifying targets for prevention and intervention. Careful application of methods for causal inference may help the field of developmental cognitive neuroscience approach these goals.
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加强基于人群的儿童和青少年神经影像数据的因果推理。
近年来,基于人群的大型纵向神经影像数据集越来越多,为研究神经发育背景下的大脑行为关系提供了前所未有的能力。然而,这些数据集能否深入揭示大脑与行为之间的因果关系,有赖于应用专门的分析方法来消除偏差,否则就无法从观察数据中得出因果推论。在此,我们将介绍这些方法(即基于倾向分数的方法、"G 方法"、有针对性的最大似然估计和因果中介分析),并进行综述,以确定迄今为止这些方法在发育认知神经科学领域的应用程度。我们仅发现了八项相关研究,其中大部分采用了基于倾向分数的方法。许多方法在文献中完全缺失,尤其是那些能在复杂、多波数据和重复神经影像评估的环境中促进因果推断的方法。因果关系对于从病因学角度理解大脑与行为之间的关系以及确定预防和干预目标至关重要。谨慎应用因果推断方法可能有助于发育认知神经科学领域接近这些目标。
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来源期刊
CiteScore
7.60
自引率
10.60%
发文量
124
审稿时长
6-12 weeks
期刊介绍: The journal publishes theoretical and research papers on cognitive brain development, from infancy through childhood and adolescence and into adulthood. It covers neurocognitive development and neurocognitive processing in both typical and atypical development, including social and affective aspects. Appropriate methodologies for the journal include, but are not limited to, functional neuroimaging (fMRI and MEG), electrophysiology (EEG and ERP), NIRS and transcranial magnetic stimulation, as well as other basic neuroscience approaches using cellular and animal models that directly address cognitive brain development, patient studies, case studies, post-mortem studies and pharmacological studies.
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