Bayesian inference is usually presented as a method for determining how scientific belief should be modified by data. Although Bayesian methodology has been one of the most active areas of statistical development in the past 20 years, medical researchers have been reluctant to em-brace what they perceive as a subjective approach to data analysis. It is little understood that Bayesian methods have a data-based core, which can be used as a calculus of evidence. This core is the Bayes factor, which in its simplest form is also called a likelihood ratio. The minimum Bayes factor is objective and can be used in lieu of the P value as a measure of the evidential strength. Unlike P values, Bayes factors have a sound theoretical foundation and an i...
Establishing an accurate diagnosis is crucial in everyday clinical practice. It forms the starting p...
When the disease is rare and/or the outcome is uncommon the trial design does not warrant precise an...
Bayesian statistics make it possible to contrast statistical hypotheses of significance through prob...
In frequentist tests, the significance testing framework for null hypothesis permits dichotomous con...
An important problem exists in the interpretation of mod-ern medical research data: Biological under...
We review two recent trends: the emergence of evidence-based medicine and the growing use of Bayesia...
This paper considers the problem of choosing the sample size for testing hypotheses on the parameter...
Bayes factors quantify the evidence in support of the null (absence of an effect) or the alternative...
Despite clear deficiencies of the p value as a summary of statistical evidence, compelling alternati...
The p-value is a classical proposal of statistical inference, dating back to the seminal contributio...
RATIONALEBedside use of Bayes' theorem for estimating probabilities of diseases is cumbersome. An al...
The p-value quantifies the discrepancy between the data and a null hypothesis of interest, usually t...
AbstractA core aspect of science is using data to assess the degree to which data provide evidence f...
The role of Bayesian reasoning in medicine is explored from the perspective of the writings of Dr. L...
Abstract A core aspect of science is using data to assess the degree to which data provide evidence ...
Establishing an accurate diagnosis is crucial in everyday clinical practice. It forms the starting p...
When the disease is rare and/or the outcome is uncommon the trial design does not warrant precise an...
Bayesian statistics make it possible to contrast statistical hypotheses of significance through prob...
In frequentist tests, the significance testing framework for null hypothesis permits dichotomous con...
An important problem exists in the interpretation of mod-ern medical research data: Biological under...
We review two recent trends: the emergence of evidence-based medicine and the growing use of Bayesia...
This paper considers the problem of choosing the sample size for testing hypotheses on the parameter...
Bayes factors quantify the evidence in support of the null (absence of an effect) or the alternative...
Despite clear deficiencies of the p value as a summary of statistical evidence, compelling alternati...
The p-value is a classical proposal of statistical inference, dating back to the seminal contributio...
RATIONALEBedside use of Bayes' theorem for estimating probabilities of diseases is cumbersome. An al...
The p-value quantifies the discrepancy between the data and a null hypothesis of interest, usually t...
AbstractA core aspect of science is using data to assess the degree to which data provide evidence f...
The role of Bayesian reasoning in medicine is explored from the perspective of the writings of Dr. L...
Abstract A core aspect of science is using data to assess the degree to which data provide evidence ...
Establishing an accurate diagnosis is crucial in everyday clinical practice. It forms the starting p...
When the disease is rare and/or the outcome is uncommon the trial design does not warrant precise an...
Bayesian statistics make it possible to contrast statistical hypotheses of significance through prob...