Cabella Brenno, Donnelly Joseph, Cardim Danilo, Liu Xiuyun, Cabeleira Manuel, Smielewski Peter, Haubrich Christina, Hutchinson Peter J A, Kim Dong-Joo, Czosnyka Marek
Division of Neurosurgery, Department of Clinical Neurosciences, University of Cambridge, Cambridge, UK.
Department of Brain and Cognitive Engineering, Korea University, Seoul, South Korea.
Neurocrit Care. 2017 Aug;27(1):103-107. doi: 10.1007/s12028-016-0319-x.
Many demographic and physiological variables have been associated with TBI outcomes. However, with small sample sizes, making spurious inferences is possible. This paper explores the effect of sample sizes on statistical relationships between patient variables (both physiological and demographic) and outcome.
Data from head-injured patients with monitored arterial blood pressure, intracranial pressure (ICP) and outcome assessed at 6 months were included in this retrospective analysis. A univariate logistic regression analysis was performed to obtain the odds ratio for unfavorable outcome. Three different dichotomizations between favorable and unfavorable outcomes were considered. A bootstrap method was implemented to estimate the minimum sample sizes needed to obtain reliable association between physiological and demographic variables with outcome.
In a univariate analysis with dichotomized outcome, samples sizes should be generally larger than 100 for reproducible results. Pressure reactivity index, ICP, and ICP slow waves offered the strongest relationship with outcome. Relatively small sample sizes may overestimate effect sizes or even produce conflicting results.
Low power tests, generally achieved with small sample sizes, may produce misleading conclusions, especially when they are based only on p values and the dichotomized criteria of rejecting/not-rejecting the null hypothesis. We recommend reporting confidence intervals and effect sizes in a more complete and contextualized data analysis.
许多人口统计学和生理学变量都与创伤性脑损伤(TBI)的预后相关。然而,样本量较小时,可能会得出虚假的推断。本文探讨了样本量对患者变量(包括生理和人口统计学变量)与预后之间统计关系的影响。
本回顾性分析纳入了有动脉血压监测、颅内压(ICP)监测且在6个月时评估了预后的头部受伤患者的数据。进行单因素逻辑回归分析以获得不良预后的比值比。考虑了三种不同的预后良好与不良的二分法。采用自助法来估计生理和人口统计学变量与预后之间获得可靠关联所需的最小样本量。
在对二分法预后进行的单因素分析中,为获得可重复的结果,样本量通常应大于100。压力反应性指数、颅内压和颅内压慢波与预后的关系最为密切。相对较小的样本量可能会高估效应量,甚至产生相互矛盾的结果。
通常由小样本量导致的低效能检验可能会产生误导性结论,尤其是当它们仅基于p值以及拒绝/不拒绝原假设的二分标准时。我们建议在更完整且情境化的数据分析中报告置信区间和效应量。