scholarly journals Sample Size Determination and Statistical Hypothesis Testing for Core Centration in Press Coated Tablets

2012 ◽  
Vol 02 (03) ◽  
pp. 269-273 ◽  
Author(s):  
Pierre Lafaye de Micheaux ◽  
Vincent Lemaire
F1000Research ◽  
2018 ◽  
Vol 7 ◽  
pp. 1176 ◽  
Author(s):  
Nicholas Graves ◽  
Adrian G. Barnett ◽  
Edward Burn ◽  
David Cook

Background: Clinical trials might be larger than needed because arbitrary high levels of statistical confidence are sought in the results. Traditional sample size calculations ignore the marginal value of the information collected for decision making. The statistical hypothesis testing objective is misaligned with the goal of generating information necessary for decision-making. The aim of the present study was to show that a clinical trial designed to test a prior hypothesis against an arbitrary threshold of confidence may recruit too many participants, wasting scarce research dollars and exposing participants to research unnecessarily. Methods: We used data from a recent RCT powered for traditional rules of statistical significance. The data were also used for an economic analysis to show the intervention led to cost savings and improved health outcomes. Adoption represented a good investment for decision-makers. We examined the effect of reducing the trial’s sample size on the results of the statistical hypothesis-testing analysis and the conclusions that would be drawn by decision-makers reading the economic analysis. Results: As the sample size reduced it became more likely that the null hypothesis of no difference in the primary outcome between groups would fail to be rejected. For decision-makers reading the economic analysis, reducing the sample size had little effect on the conclusion about whether to adopt the intervention. There was always high probability the intervention reduced costs and improved health. Conclusions: Decision makers managing health services are largely invariant to the sample size of the primary trial and the arbitrary p-value of 0.05. If the goal is to make a good decision about whether the intervention should be adopted widely, then that could have been achieved with a much smaller trial. It is plausible that hundreds of millions of research dollars are wasted each year recruiting more participants than required for RCTs.


2009 ◽  
Vol 6 (2) ◽  
pp. 133-146 ◽  
Author(s):  
Dulal K. Bhaumik ◽  
Anindya Roy ◽  
Nicole A. Lazar ◽  
Kush Kapur ◽  
Subhash Aryal ◽  
...  

F1000Research ◽  
2018 ◽  
Vol 7 ◽  
pp. 1176
Author(s):  
Nicholas Graves ◽  
Adrian G. Barnett ◽  
Edward Burn ◽  
David Cook

Background: Clinical trials might be larger than needed because arbitrary levels of statistical confidence are sought in the results. Traditional sample size calculations ignore the marginal value of the information collected for decision making. The statistical hypothesis testing objective is misaligned with the goal of generating information necessary for decision-making. The aim of the present study was to show that for a case study clinical trial designed to test a prior hypothesis against an arbitrary threshold of confidence more participants were recruited than needed to make a good decision about adoption. Methods: We used data from a recent RCT powered for traditional rules of statistical significance. The data were also used for an economic analysis to show the intervention led to cost-savings and improved health outcomes. Adoption represented a sensible investment for decision-makers. We examined the effect of reducing the trial’s sample size on the results of the statistical hypothesis-testing analysis and the conclusions that would be drawn by decision-makers reading the economic analysis. Results: As the sample size reduced it became more likely that the null hypothesis of no difference in the primary outcome between groups would fail to be rejected. For decision-makers reading the economic analysis, reducing the sample size had little effect on the conclusion about whether to adopt the intervention. There was always high probability the intervention reduced costs and improved health. Conclusions: Decision makers managing health services are largely invariant to the sample size of the primary trial and the arbitrary p-value of 0.05. If the goal is to make a good decision about whether the intervention should be adopted widely, then that could have been achieved with a much smaller trial. It is plausible that hundreds of millions of research dollars are wasted each year recruiting more participants than required for RCTs.


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