Sadil Patrick, Lindquist Martin A
Department of Biostatistics, Johns Hopkins Bloomberg School of Public Health, 615 N. Wolfe Street, Baltimore, Maryland 21205, USA.
bioRxiv. 2024 Aug 7:2024.08.05.606611. doi: 10.1101/2024.08.05.606611.
Task-based functional magnetic resonance imaging is a powerful tool for studying brain function, but neuroimaging research produces ongoing concerns regarding small-sample studies and how to interpret them. Although it is well understood that larger samples are preferable, many situations require researchers to make judgments from small studies, including reviewing the existing literature, analyzing pilot data, or assessing subsamples. Quantitative guidance on how to make these judgments remains scarce. To address this, we leverage the Human Connectome Project's Young Adult dataset to survey various analyses-from regional activation maps to predictive models. We find that, for some classic analyses such as detecting regional activation or cluster peak location, studies with as few as 40 subjects are adequate, although this depends crucially on effect sizes. For predictive modeling, similar sizes can be adequate for detecting whether features are predictable, but at least an order of magnitude more (at least hundreds) may be required for developing consistent predictions. These results offer valuable insights for designing and interpreting fMRI studies, emphasizing the importance of considering effect size, sample size, and analysis approach when assessing the reliability of findings. We hope that this survey serves as a reference for identifying which kinds of research questions can be reliably answered with small-scale studies.
基于任务的功能磁共振成像是研究脑功能的有力工具,但神经影像学研究引发了人们对小样本研究及其解读方式的持续关注。尽管大家都清楚较大样本更可取,但在许多情况下,研究人员需要从小规模研究中做出判断,包括回顾现有文献、分析先导数据或评估子样本。关于如何做出这些判断的定量指导仍然很少。为了解决这个问题,我们利用人类连接组计划的青年成人数据集来调查各种分析——从区域激活图到预测模型。我们发现,对于一些经典分析,如检测区域激活或簇峰值位置,仅有40名受试者的研究就足够了,尽管这关键取决于效应大小。对于预测建模,类似规模的样本足以检测特征是否可预测,但要开发一致的预测可能至少需要多一个数量级(至少数百个)的样本。这些结果为功能磁共振成像研究的设计和解读提供了有价值的见解,强调了在评估研究结果的可靠性时考虑效应大小、样本大小和分析方法的重要性。我们希望这项调查能为确定哪些类型的研究问题可以通过小规模研究可靠地回答提供参考。