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Single-Arm Phase II Survival Trial Design provides a comprehensive
summary to the most commonly- used methods for single-arm phase II
trial design with time-to-event endpoints. Single-arm phase II
trials are a key component for successfully developing advanced
cancer drugs and treatments, particular for target therapy and
immunotherapy in which time-to-event endpoints are often the
primary endpoints. Most test statistics for single-arm phase II
trial design with time-to-event endpoints are not available in
commercial software. Key Features: Covers the most frequently used
methods for single-arm phase II trial design with time-to-event
endpoints in a comprehensive fashion. Provides new material on
phase II immunotherapy trial design and phase II trial design with
TTP ratio endpoint. Illustrates trial designs by real clinical
trial examples Includes R code for all methods proposed in the
book, enabling straightforward sample size calculation.
Single-Arm Phase II Survival Trial Design provides a comprehensive
summary to the most commonly- used methods for single-arm phase II
trial design with time-to-event endpoints. Single-arm phase II
trials are a key component for successfully developing advanced
cancer drugs and treatments, particular for target therapy and
immunotherapy in which time-to-event endpoints are often the
primary endpoints. Most test statistics for single-arm phase II
trial design with time-to-event endpoints are not available in
commercial software. Key Features: Covers the most frequently used
methods for single-arm phase II trial design with time-to-event
endpoints in a comprehensive fashion. Provides new material on
phase II immunotherapy trial design and phase II trial design with
TTP ratio endpoint. Illustrates trial designs by real clinical
trial examples Includes R code for all methods proposed in the
book, enabling straightforward sample size calculation.
Statistical Methods for Survival Trial Design: With Applications to
Cancer Clinical Trials Using R provides a thorough presentation of
the principles of designing and monitoring cancer clinical trials
in which time-to-event is the primary endpoint. Traditional cancer
trial designs with time-to-event endpoints are often limited to the
exponential model or proportional hazards model. In practice,
however, those model assumptions may not be satisfied for long-term
survival trials. This book is the first to cover comprehensively
the many newly developed methodologies for survival trial design,
including trial design under the Weibull survival models;
extensions of the sample size calculations under the proportional
hazard models; and trial design under mixture cure models, complex
survival models, Cox regression models, and competing-risk models.
A general sequential procedure based on the sequential conditional
probability ratio test is also implemented for survival trial
monitoring. All methodologies are presented with sufficient detail
for interested researchers or graduate students.
Statistical Methods for Survival Trial Design: With Applications to
Cancer Clinical Trials Using R provides a thorough presentation of
the principles of designing and monitoring cancer clinical trials
in which time-to-event is the primary endpoint. Traditional cancer
trial designs with time-to-event endpoints are often limited to the
exponential model or proportional hazards model. In practice,
however, those model assumptions may not be satisfied for long-term
survival trials. This book is the first to cover comprehensively
the many newly developed methodologies for survival trial design,
including trial design under the Weibull survival models;
extensions of the sample size calculations under the proportional
hazard models; and trial design under mixture cure models, complex
survival models, Cox regression models, and competing-risk models.
A general sequential procedure based on the sequential conditional
probability ratio test is also implemented for survival trial
monitoring. All methodologies are presented with sufficient detail
for interested researchers or graduate students.
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