Hyperbolic trade-off : The importance of balancing trial and subject sample sizes in neuroimaging

被引:31
作者
Chen, Gang [1 ]
Pine, Daniel S. [2 ]
Brotman, Melissa A. [3 ]
Smith, Ashley R. [2 ]
Cox, Robert W. [1 ]
Taylor, Paul A. [1 ]
Haller, Simone P. [3 ]
机构
[1] NIMH, Sci & Stat Comp Core, Bethesda, MD 20892 USA
[2] NIMH, Sect Dev & Affect Neurosci, Bethesda, MD 20892 USA
[3] NIMH, Neurosci & Novel Therapeut Unit, Emot & Dev Branch, Bethesda, MD 20892 USA
关键词
STATISTICAL POWER; FMRI; BRAIN;
D O I
10.1016/j.neuroimage.2021.118786
中图分类号
Q189 [神经科学];
学科分类号
071006 ;
摘要
Here we investigate the crucial role of trials in task-based neuroimaging from the perspectives of statistical efficiency and condition-level generalizability. Big data initiatives have gained popularity for leveraging a large sample of subjects to study a wide range of effect magnitudes in the brain. On the other hand, most task-based FMRI designs feature a relatively small number of subjects, so that resulting parameter estimates may be associated with compromised precision. Nevertheless, little attention has been given to another important dimension of experimental design, which can equally boost a study's statistical efficiency: the trial sample size. The common practice of condition-level modeling implicitly assumes no cross-trial variability. Here, we systematically explore the different factors that impact effect uncertainty, drawing on evidence from hierarchical modeling, simulations and an FMRI dataset of 42 subjects who completed a large number of trials of cognitive control task. We find that, due to an approximately symmetric hyperbola-relationship between trial and subject sample sizes in the presence of relatively large cross-trial variability, 1) trial sample size has nearly the same impact as subject sample size on statistical efficiency; 2) increasing both the number of trials and subjects improves statistical efficiency more effectively than focusing on subjects alone; 3) trial sample size can be leveraged alongside subject sample size to improve the cost-effectiveness of an experimental design; 4) for small trial sample sizes, trial-level modeling, rather than condition-level modeling through summary statistics, may be necessary to accurately assess the standard error of an effect estimate. We close by making practical suggestions for improving experimental designs across neuroimaging and behavioral studies.
引用
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页数:20
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