Ciarleglio Adam, Petkova Eva, Harel Ofer
Department of Biostatistics and Bioinformatics, Milken Institute School of Public Health, George Washington University, Washington, DC.
Department of Population Health, New York University, New York, NY and Department of Child and Adolescent Psychiatry, New York University, New York, NY.
J Am Stat Assoc. 2022;117(537):12-26. doi: 10.1080/01621459.2021.1942011. Epub 2021 Jul 26.
Frontal power asymmetry (FA), a measure of brain function derived from electroencephalography, is a potential biomarker for major depressive disorder (MDD). Though FA is functional in nature, it is typically reduced to a scalar value prior to analysis, possibly obscuring its relationship with MDD and leading to a number of studies that have provided contradictory results. To overcome this issue, we sought to fit a functional regression model to characterize the association between FA and MDD status, adjusting for age, sex, cognitive ability, and handedness using data from a large clinical study that included both MDD and healthy control (HC) subjects. Since nearly 40% of the observations are missing data on either FA or cognitive ability, we propose an extension of multiple imputation (MI) by chained equations that allows for the imputation of both scalar and functional data. We also propose an extension of Rubin's Rules for conducting valid inference in this setting. The proposed methods are evaluated in a simulation and applied to our FA data. For our FA data, a pooled analysis from the imputed data sets yielded similar results to those of the complete case analysis. We found that, among young females, HCs tended to have higher FA over the , , and frequency bands, but that the difference between HC and MDD subjects diminishes and ultimately reverses with age. For males, HCs tended to have higher FA in the frequency band, regardless of age. Young male HCs had higher FA in the and bands, but this difference diminishes with increasing age in the band and ultimately reverses with increasing age in the band.
额部功率不对称性(FA)是一种通过脑电图得出的脑功能测量指标,是重度抑郁症(MDD)的潜在生物标志物。尽管FA本质上是功能性的,但在分析之前通常会简化为一个标量值,这可能会掩盖其与MDD的关系,并导致许多研究得出相互矛盾的结果。为了克服这个问题,我们试图拟合一个功能回归模型来描述FA与MDD状态之间的关联,并使用来自一项大型临床研究的数据对年龄、性别、认知能力和利手进行调整,该研究包括MDD患者和健康对照(HC)受试者。由于近40%的观测值在FA或认知能力方面存在缺失数据,我们提出了一种通过链式方程进行多重插补(MI)的扩展方法,该方法允许对标量数据和功能数据进行插补。我们还提出了在这种情况下进行有效推断的鲁宾规则的扩展。所提出的方法在模拟中进行了评估,并应用于我们的FA数据。对于我们的FA数据,对插补数据集进行的汇总分析得出了与完全病例分析相似的结果。我们发现,在年轻女性中,HC受试者在、和频段的FA往往较高,但HC与MDD受试者之间的差异会随着年龄的增长而减小,最终逆转。对于男性,无论年龄大小,HC受试者在频段的FA往往较高。年轻男性HC受试者在和频段的FA较高,但这种差异在频段中随着年龄的增长而减小,在频段中最终随着年龄的增长而逆转。