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Bayesian optimal interval designs for phase I clinical trials
by
Yuan, Ying
, Liu, Suyu
in
Analysis
/ Bayesian adaptive design
/ Bayesian analysis
/ Bayesian method
/ Cancer
/ Clinical research
/ Clinical trials
/ Decision error
/ Dosage
/ Dose finding
/ Drug dosages
/ Econometrics
/ Error rates
/ Grade 3
/ Human exposure
/ Inappropriateness
/ Intervals
/ Mathematical models
/ Maximum tolerated dose
/ Medical research
/ Medical treatment
/ Memory
/ Optimization
/ Patients
/ Phase I clinical trials
/ Probability
/ Property
/ Sample properties
/ Sample size
/ Samples
/ Simulations
/ Studies
/ Toxic
/ Toxicity
/ Toxicology
2015
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Bayesian optimal interval designs for phase I clinical trials
by
Yuan, Ying
, Liu, Suyu
in
Analysis
/ Bayesian adaptive design
/ Bayesian analysis
/ Bayesian method
/ Cancer
/ Clinical research
/ Clinical trials
/ Decision error
/ Dosage
/ Dose finding
/ Drug dosages
/ Econometrics
/ Error rates
/ Grade 3
/ Human exposure
/ Inappropriateness
/ Intervals
/ Mathematical models
/ Maximum tolerated dose
/ Medical research
/ Medical treatment
/ Memory
/ Optimization
/ Patients
/ Phase I clinical trials
/ Probability
/ Property
/ Sample properties
/ Sample size
/ Samples
/ Simulations
/ Studies
/ Toxic
/ Toxicity
/ Toxicology
2015
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Do you wish to request the book?
Bayesian optimal interval designs for phase I clinical trials
by
Yuan, Ying
, Liu, Suyu
in
Analysis
/ Bayesian adaptive design
/ Bayesian analysis
/ Bayesian method
/ Cancer
/ Clinical research
/ Clinical trials
/ Decision error
/ Dosage
/ Dose finding
/ Drug dosages
/ Econometrics
/ Error rates
/ Grade 3
/ Human exposure
/ Inappropriateness
/ Intervals
/ Mathematical models
/ Maximum tolerated dose
/ Medical research
/ Medical treatment
/ Memory
/ Optimization
/ Patients
/ Phase I clinical trials
/ Probability
/ Property
/ Sample properties
/ Sample size
/ Samples
/ Simulations
/ Studies
/ Toxic
/ Toxicity
/ Toxicology
2015
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Bayesian optimal interval designs for phase I clinical trials
Journal Article
Bayesian optimal interval designs for phase I clinical trials
2015
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Overview
In phase I trials, effectively treating patients and minimizing the chance of exposing them to subtherapeutic and overly toxic doses are clinicians' top priority. Motived by this practical consideration, we propose Bayesian optimal interval (BOIN) designs to find the maximum tolerated dose and to minimize the probability of inappropriate dose assignments for patients. We show, both theoretically and numerically, that the BOIN design not only has superior finite and large sample properties but also can be easily implemented in a simple way similar to the traditional '3+3' design. Compared with the well-known continual reassessment method, the BOIN design yields comparable average performance to select the maximum tolerated dose but has a substantially lower risk of assigning patients to subtherapeutic and overly toxic doses. We apply the BOIN design to two cancer clinical trials.
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