A recent article in this journal (Ioannidis JP (2005) Why most published research findings are false. PLoS Med 2: e124) argued that more than half of published research findings in the medical literature are false. In this commentary, we examine the structure of that argument, and show that it has three basic components: 1)An assumption that the prior probability of most hypotheses explored in medical research is below 50%. 2)Dichotomization of P-values at the 0.05 level and introduction of a “bias” factor (produced by significance-seeking), the combination of which severely weakens the evidence provided by every design. 3)Use of Bayes theorem to show that, in the face of weak evidence, hypotheses with low prior probabilities cannot have po...
Diagnostic screening models for the interpretation of null hypothesis significance test (NHST) resul...
Bandyopadhyay, Taper, and Brittan (BTB) advance a measure of evidential support that first appeared ...
Null hypothesis significance testing is the typical statistical approach in search of the truthfulne...
Evidence-based medicine frequently uses statistical hypothesis testing. In this paradigm, data can o...
There is increasing concern that most current published research findings are false. The probability...
Evidence-based medicine frequently uses statistical hypothesis testing. In this paradigm, data can o...
An important problem exists in the interpretation of mod-ern medical research data: Biological under...
Psychology journals rarely publish nonsignificant results. At the same time, it is often very unlike...
BACKGROUND: In medical practice, clinically unexpected measurements might be quite properly handled ...
The (mis)use of statistics in practice is widely debated, and a field where the debate is particular...
Medical research makes intensive use of statistics in order to support its claims. In this paper we ...
AbstractMethodology described by Francis in “Replication, Statistical Consistency and Publication Bi...
Part 3 of the article. With few exceptions, top scientists publish fewer, but much more important p...
Recently there has been a growing concern that many published research findings do not hold up in at...
This paper looks at an appeal to the authority of biomedical research that has recently been used by...
Diagnostic screening models for the interpretation of null hypothesis significance test (NHST) resul...
Bandyopadhyay, Taper, and Brittan (BTB) advance a measure of evidential support that first appeared ...
Null hypothesis significance testing is the typical statistical approach in search of the truthfulne...
Evidence-based medicine frequently uses statistical hypothesis testing. In this paradigm, data can o...
There is increasing concern that most current published research findings are false. The probability...
Evidence-based medicine frequently uses statistical hypothesis testing. In this paradigm, data can o...
An important problem exists in the interpretation of mod-ern medical research data: Biological under...
Psychology journals rarely publish nonsignificant results. At the same time, it is often very unlike...
BACKGROUND: In medical practice, clinically unexpected measurements might be quite properly handled ...
The (mis)use of statistics in practice is widely debated, and a field where the debate is particular...
Medical research makes intensive use of statistics in order to support its claims. In this paper we ...
AbstractMethodology described by Francis in “Replication, Statistical Consistency and Publication Bi...
Part 3 of the article. With few exceptions, top scientists publish fewer, but much more important p...
Recently there has been a growing concern that many published research findings do not hold up in at...
This paper looks at an appeal to the authority of biomedical research that has recently been used by...
Diagnostic screening models for the interpretation of null hypothesis significance test (NHST) resul...
Bandyopadhyay, Taper, and Brittan (BTB) advance a measure of evidential support that first appeared ...
Null hypothesis significance testing is the typical statistical approach in search of the truthfulne...