Efficient medical progress requires that we know when a treatment effect is absent. We considered all 207 Original Articles published in the 2015 volume of the New England Journal of Medicine and found that 45 (21.7%) reported a null result for at least one of the primary outcome measures. Unfortunately, standard statistical analyses are unable to quantify the degree to which these null results actually support the null hypothesis. Such quantification is possible, however, by conducting a Bayesian hypothesis test. Here we reanalyzed a subset of 43 null results from 36 articles using a default Bayesian test for contingency tables. This Bayesian reanalysis revealed that, on average, the reported null results provided strong evidence for the a...
Researchers often conclude an effect is absent when a null-hypothesis significance test yields a non...
BackgroundFollowing testing in clinical trials, the use of remdesivir for treatment of COVID-19 has ...
This article provides guidance on interpreting and reporting Bayesian hypothesis tests, to aid their...
Efficient medical progress requires that we know when a treatment effect is absent. We considered al...
Efficient medical progress requires that we know when a treatment effect is absent. We considered al...
Efficient medical progress requires that we know when a treatment effect is absent. We considered al...
Efficient medical progress requires that we know when a treatment effect is absent. We considered al...
Being able to interpret ‘null effects?is important for cumulative knowledge generation in science. T...
BACKGROUND: In clinical trials, study designs may focus on assessment of superiority, equivalence, o...
Researchers often conclude an effect is absent when a null-hypothesis significance test yields a non...
Experiments often challenge the null hypothesis that an intervention, for instance application of no...
Null hypothesis significance testing (NHST) has been under scrutiny for decades. The literature show...
Studies suggest a bias against the publication of null (p \u3e .05) results. Instead of significance...
Researchers often conclude an effect is absent when a null-hypothesis significance test yields a non...
BackgroundFollowing testing in clinical trials, the use of remdesivir for treatment of COVID-19 has ...
This article provides guidance on interpreting and reporting Bayesian hypothesis tests, to aid their...
Efficient medical progress requires that we know when a treatment effect is absent. We considered al...
Efficient medical progress requires that we know when a treatment effect is absent. We considered al...
Efficient medical progress requires that we know when a treatment effect is absent. We considered al...
Efficient medical progress requires that we know when a treatment effect is absent. We considered al...
Being able to interpret ‘null effects?is important for cumulative knowledge generation in science. T...
BACKGROUND: In clinical trials, study designs may focus on assessment of superiority, equivalence, o...
Researchers often conclude an effect is absent when a null-hypothesis significance test yields a non...
Experiments often challenge the null hypothesis that an intervention, for instance application of no...
Null hypothesis significance testing (NHST) has been under scrutiny for decades. The literature show...
Studies suggest a bias against the publication of null (p \u3e .05) results. Instead of significance...
Researchers often conclude an effect is absent when a null-hypothesis significance test yields a non...
BackgroundFollowing testing in clinical trials, the use of remdesivir for treatment of COVID-19 has ...
This article provides guidance on interpreting and reporting Bayesian hypothesis tests, to aid their...