Bayesian Adaptive Trials for Rare Cardiovascular Conditions
Author(s) -
Azadeh Shohoudi,
David A. Stephens,
Paul Khairy
Publication year - 2018
Publication title -
future cardiology
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.392
H-Index - 33
eISSN - 1744-8298
pISSN - 1479-6678
DOI - 10.2217/fca-2017-0040
Subject(s) - interpretability , bayesian probability , medicine , sample size determination , randomization , clinical trial , computer science , limiting , machine learning , risk analysis (engineering) , data mining , artificial intelligence , statistics , mathematics , mechanical engineering , engineering , pathology
Escalating costs of cardiovascular trials are limiting medical innovations, prompting the development of more efficient and flexible study designs. The Bayesian paradigm offers a framework conducive to adaptive trial methodologies and is well suited for the study of small populations. Bayesian adaptive trials provide a statistical structure for combining prior information with accumulating data to compute probabilities of unknown quantities of interest. Adaptive design features are useful in modifying randomization schemes, adjusting sample sizes and providing continuous surveillance to guide decisions on dropping study arms or premature trial interruption. Advantages include greater efficiency, minimization of risks, inclusion of knowledge as it is generated, cost savings and more intuitive interpretability. Extensive high-level computations are facilitated by an expanding armamentarium of available tools.
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