Scanning the horizon: towards transparent and reproducible neuroimaging research

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作者
Russell A. Poldrack
Chris I. Baker
Joke Durnez
Krzysztof J. Gorgolewski
Paul M. Matthews
Marcus R. Munafò
Thomas E. Nichols
Jean-Baptiste Poline
Edward Vul
Tal Yarkoni
机构
[1] Stanford University,Department of Psychology and Stanford Center for Reproducible Neuroscience
[2] Laboratory of Brain and Cognition,Division of Brain Sciences, Department of Medicine
[3] National Institute of Mental Health,Department of Statistics and WMG
[4] US National Institutes of Health,Department of Psychology
[5] Institut National de Recherche en Informatique et en Automatique (INRIA) Parietal,Department of Psychology
[6] Neurospin,undefined
[7] Imperial College Hammersmith Hospital,undefined
[8] Medical Research Council (MRC) Integrative Epidemiology Unit at the University of Bristol,undefined
[9] UK Centre for Tobacco and Alcohol Studies,undefined
[10] School of Experimental Psychology,undefined
[11] University of Bristol,undefined
[12] University of Warwick,undefined
[13] Helen Wills Neuroscience Institute,undefined
[14] Henry H. Wheeler Jr. Brain Imaging Center,undefined
[15] University of California,undefined
[16] University of California,undefined
[17] San Diego,undefined
[18] University of Texas at Austin,undefined
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摘要
There is growing concern about the reproducibility of scientific research, and neuroimaging research suffers from many features that are thought to lead to high levels of false results.Statistical power of neuroimaging studies has increased over time but remains relatively low, especially for group comparison studies. An analysis of effect sizes in the Human Connectome Project demonstrates that most functional MRI studies are not sufficiently powered to find reasonable effect sizes.Neuroimaging analysis has a high degree of flexibility in analysis methods, which can lead to inflated false-positive rates unless controlled for. Pre-registration of analysis plans and clear delineation of hypothesis-driven and exploratory research are potential solutions to this problem.The use of appropriate corrections for multiple tests has increased, but some common methods can have highly inflated false-positive rates. The use of non-parametric methods is encouraged to provide accurate correction for multiple tests.Software errors have the potential to lead to incorrect or irreproducible results. The adoption of improved software engineering methods and software testing strategies can help to reduce such problems.Reproducibility will be improved through greater transparency in methods reporting and through increased sharing of data and code.
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页码:115 / 126
页数:11
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