Quality over quantity: powering neuroimaging samples in psychiatry.

IF 6.6 1区 医学 Q1 NEUROSCIENCES Neuropsychopharmacology Pub Date : 2024-11-01 Epub Date: 2024-06-20 DOI:10.1038/s41386-024-01893-4
Carolina Makowski, Thomas E Nichols, Anders M Dale
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Abstract

Neuroimaging has been widely adopted in psychiatric research, with hopes that these non-invasive methods will provide important clues to the underpinnings and prediction of various mental health symptoms and outcomes. However, the translational impact of neuroimaging has not yet reached its promise, despite the plethora of computational methods, tools, and datasets at our disposal. Some have lamented that too many psychiatric neuroimaging studies have been underpowered with respect to sample size. In this review, we encourage this discourse to shift from a focus on sheer increases in sample size to more thoughtful choices surrounding experimental study designs. We propose considerations at multiple decision points throughout the study design, data modeling and analysis process that may help researchers working in psychiatric neuroimaging boost power for their research questions of interest without necessarily increasing sample size. We also provide suggestions for leveraging multiple datasets to inform each other and strengthen our confidence in the generalization of findings to both population-level and clinical samples. Through a greater emphasis on improving the quality of brain-based and clinical measures rather than merely quantity, meaningful and potentially translational clinical associations with neuroimaging measures can be achieved with more modest sample sizes in psychiatry.

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质量重于数量:为精神病学的神经成像样本提供动力。
神经影像学已被广泛应用于精神病学研究,人们希望这些非侵入性方法能为各种精神健康症状和结果的基础和预测提供重要线索。然而,尽管我们掌握了大量的计算方法、工具和数据集,但神经影像学的转化影响尚未达到预期目标。有人感叹,太多精神科神经成像研究的样本量不足。在这篇综述中,我们鼓励将讨论的焦点从单纯增加样本量转移到围绕实验研究设计的更深思熟虑的选择上。我们提出了在整个研究设计、数据建模和分析过程中多个决策点的注意事项,这些注意事项可以帮助精神科神经影像学研究人员在不增加样本量的情况下提高研究动力,从而解决他们感兴趣的研究问题。我们还提供了利用多个数据集相互借鉴的建议,以增强我们将研究结果推广到人群和临床样本的信心。通过更加重视提高脑部和临床测量的质量而不仅仅是数量,精神病学可以通过更适度的样本量来实现神经影像测量与有意义且可能转化的临床关联。
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来源期刊
Neuropsychopharmacology
Neuropsychopharmacology 医学-精神病学
CiteScore
15.00
自引率
2.60%
发文量
240
审稿时长
2 months
期刊介绍: Neuropsychopharmacology is a reputable international scientific journal that serves as the official publication of the American College of Neuropsychopharmacology (ACNP). The journal's primary focus is on research that enhances our knowledge of the brain and behavior, with a particular emphasis on the molecular, cellular, physiological, and psychological aspects of substances that affect the central nervous system (CNS). It also aims to identify new molecular targets for the development of future drugs. The journal prioritizes original research reports, but it also welcomes mini-reviews and perspectives, which are often solicited by the editorial office. These types of articles provide valuable insights and syntheses of current research trends and future directions in the field of neuroscience and pharmacology.
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