神经影像学
心理学
样本量测定
单变量
认知心理学
认知
神经功能成像
样品(材料)
匹配(统计)
意识的神经相关物
影像遗传学
大样本
多元统计
神经科学
机器学习
计算机科学
统计
色谱法
化学
数学
作者
Colin G. DeYoung,Kirsten Hilger,Jamie L. Hanson,Rany Abend,Timothy A. Allen,Roger E. Beaty,Scott D. Blain,Robert S. Chavez,Stephen A. Engel,Ma Feilong,Alex Fornito,Erhan Genç,Vina M. Goghari,Rachael Grazioplene,Philipp Homan,Keanan J. Joyner,Antonia N. Kaczkurkin,Robert D. Latzman,Elizabeth A. Martin,Aki Nikolaidis
摘要
Linking neurobiology to relatively stable individual differences in cognition, emotion, motivation, and behavior can require large sample sizes to yield replicable results. Given the nature of between-person research, sample sizes at least in the hundreds are likely to be necessary in most neuroimaging studies of individual differences, regardless of whether they are investigating the whole brain or more focal hypotheses. However, the appropriate sample size depends on the expected effect size. Therefore, we propose four strategies to increase effect sizes in neuroimaging research, which may help to enable the detection of replicable between-person effects in samples in the hundreds rather than the thousands: (1) theoretical matching between neuroimaging tasks and behavioral constructs of interest; (2) increasing the reliability of both neural and psychological measurement; (3) individualization of measures for each participant; and (4) using multivariate approaches with cross-validation instead of univariate approaches. We discuss challenges associated with these methods and highlight strategies for improvements that will help the field to move toward a more robust and accessible neuroscience of individual differences.
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