4.4 Article

An Association Between ICP-Derived Data and Outcome in TBI Patients: The Role of Sample Size

Journal

NEUROCRITICAL CARE
Volume 27, Issue 1, Pages 103-107

Publisher

HUMANA PRESS INC
DOI: 10.1007/s12028-016-0319-x

Keywords

Traumatic brain injury; Outcome prediction; Statistical inference; Intracranial pressure; Autoregulation

Funding

  1. National Institutes of Health Research (Cambridge Centre)
  2. NIHR Health Technology Co-operative
  3. CNPQ [203792/2014-9]
  4. Woolf Fisher Trust
  5. Cambridge Commonwealth European and International Trust Scholarship
  6. Gates Cambridge Trust
  7. MRC [G0600986, G0601025] Funding Source: UKRI
  8. Medical Research Council [G0600986, G0601025] Funding Source: researchfish
  9. National Institute for Health Research [NIHR-RP-R3-12-013, 12/35/57] Funding Source: researchfish

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Background 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. Methods 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. Results 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. Conclusion 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.

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