Nelson Timothy D, Brock Rebecca L, Yokum Sonja, Tomaso Cara C, Savage Cary R, Stice Eric
Department of Psychology, University of Nebraska-Lincoln, Lincoln, NE, United States.
Oregon Research Institute, Eugene, OR, United States.
Front Neurosci. 2021 Sep 30;15:746424. doi: 10.3389/fnins.2021.746424. eCollection 2021.
The current paper leveraged a large multi-study functional magnetic resonance imaging (fMRI) dataset ( = 363) and a generated missingness paradigm to demonstrate different approaches for handling missing fMRI data under a variety of conditions. The performance of full information maximum likelihood (FIML) estimation, both with and without auxiliary variables, and listwise deletion were compared under different conditions of generated missing data volumes (i.e., 20, 35, and 50%). FIML generally performed better than listwise deletion in replicating results from the full dataset, but differences were small in the absence of auxiliary variables that correlated strongly with fMRI task data. However, when an auxiliary variable created to correlate = 0.5 with fMRI task data was included, the performance of the FIML model improved, suggesting the potential value of FIML-based approaches for missing fMRI data when a strong auxiliary variable is available. In addition to primary methodological insights, the current study also makes an important contribution to the literature on neural vulnerability factors for obesity. Specifically, results from the full data model show that greater activation in regions implicated in reward processing (caudate and putamen) in response to tastes of milkshake significantly predicted weight gain over the following year. Implications of both methodological and substantive findings are discussed.
本文利用了一个大型多研究功能磁共振成像(fMRI)数据集(n = 363)和一个生成的缺失范式,以展示在各种条件下处理缺失fMRI数据的不同方法。在生成的缺失数据量的不同条件下(即20%、35%和50%),比较了有无辅助变量时的全信息最大似然(FIML)估计和逐行删除的性能。在复制完整数据集的结果时,FIML通常比逐行删除表现更好,但在没有与fMRI任务数据高度相关的辅助变量时,差异很小。然而,当纳入一个与fMRI任务数据的相关性创建为r = 0.5的辅助变量时,FIML模型的性能有所提高,这表明当有强大的辅助变量时,基于FIML的方法对缺失fMRI数据的潜在价值。除了主要的方法学见解外,本研究还对肥胖的神经易损因素文献做出了重要贡献。具体而言,完整数据模型的结果表明,在品尝奶昔时,奖励处理相关区域(尾状核和壳核)的激活增强显著预测了次年的体重增加。讨论了方法学和实质性发现的意义。