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Drug development is a strictly regulated area. As such, marketing
approval of a new drug depends heavily, if not exclusively, on
evidence generated from clinical trials. Drug development has seen
tremendous innovation in science and technology that has
revolutionized the treatment of some diseases. And yet, the
statistical design and practical conduct of the clinical trials
used to test new therapeutics for safety and efficacy have changed
very little over the decades. Our approach to clinical trials is
steeped in convention and tradition. The large, fixed, randomized
controlled trial methods that have been the gold standard are well
understood and expected by many trial stakeholders. However, this
approach is not well suited to all aspects of modern drug
development and the current competitive landscape. We now see new
therapies that target a small fraction of the patient population,
rare diseases with high unmet medical need, and paediatric
populations that must wait for years for new drug approvals from
the time that therapies are approved in adults. Large randomized
clinical trials are at best inefficient and at worst completely
infeasible in many modern clinical settings. Advances in technology
and data infrastructure call for innovations in clinical trial
design. Despite advances in statistical methods, the availability
of information, and computing power, the actual experience with
innovative design in clinical trials across industry and academia
is limited. This book will be an important showcase of the
potential for these innovative designs in modern drug development
and will be an important resource to guide those who wish to
undertake them for themselves. This book is ideal for professionals
in the pharmaceutical industry and regulatory agencies, but will
also be useful to academic researchers, faculty members, and
graduate students in, statistics, biostatistics, public health, and
epidemiology due to its focus on innovation. Key Features: Written
by pharmaceutical industry experts, academic researchers, and
regulatory reviewers, this is the first book providing a
comprehensive set of case studies related to statistical
methodology, implementation, regulatory considerations, and
communication of complex innovative trial design; Has a broad
appeal to a multitude of readers across academia, industry, and
regulatory agencies; Each contribution is a practical case study
that can speak to the benefits of an innovative approach but also
balance that with the real-life challenges encountered; A complete
understanding of what is actually being done in modern clinical
trials will broaden the reader’s capabilities and provide
examples to first mimic and then customize and expand upon when
exploring these ideas on their own.
Real-world evidence (RWE) has been at the forefront of
pharmaceutical innovations. It plays an important role in
transforming drug development from a process aimed at meeting
regulatory expectations to an operating model that leverages data
from disparate sources to aid business, regulatory, and healthcare
decision making. Despite its many benefits, there is no single book
systematically covering the latest development in the field.
Written specifically for pharmaceutical practitioners, Real-World
Evidence in Drug Development and Evaluation, presents a wide range
of RWE applications throughout the lifecycle of drug product
development. With contributions from experienced researchers in the
pharmaceutical industry, the book discusses at length RWE
opportunities, challenges, and solutions. Features Provides the
first book and a single source of information on RWE in drug
development Covers a broad array of topics on outcomes- and
value-based RWE assessments Demonstrates proper Bayesian
application and causal inference for real-world data (RWD) Presents
real-world use cases to illustrate the use of advanced analytics
and statistical methods to generate insights Offers a balanced
discussion of practical RWE issues at hand and technical solutions
suitable for practitioners with limited data science expertise
Real-world evidence (RWE) has been at the forefront of
pharmaceutical innovations. It plays an important role in
transforming drug development from a process aimed at meeting
regulatory expectations to an operating model that leverages data
from disparate sources to aid business, regulatory, and healthcare
decision making. Despite its many benefits, there is no single book
systematically covering the latest development in the field.
Written specifically for pharmaceutical practitioners, Real-World
Evidence in Drug Development and Evaluation, presents a wide range
of RWE applications throughout the lifecycle of drug product
development. With contributions from experienced researchers in the
pharmaceutical industry, the book discusses at length RWE
opportunities, challenges, and solutions. Features Provides the
first book and a single source of information on RWE in drug
development Covers a broad array of topics on outcomes- and
value-based RWE assessments Demonstrates proper Bayesian
application and causal inference for real-world data (RWD) Presents
real-world use cases to illustrate the use of advanced analytics
and statistical methods to generate insights Offers a balanced
discussion of practical RWE issues at hand and technical solutions
suitable for practitioners with limited data science expertise
Develop Effective Immunogenicity Risk Mitigation Strategies
Immunogenicity assessment is a prerequisite for the successful
development of biopharmaceuticals, including safety and efficacy
evaluation. Using advanced statistical methods in the study design
and analysis stages is therefore essential to immunogenicity risk
assessment and mitigation strategies. Statistical Methods for
Immunogenicity Assessment provides a single source of information
on statistical concepts, principles, methods, and strategies for
detection, quantification, assessment, and control of
immunogenicity. The book first gives an overview of the impact of
immunogenicity on biopharmaceutical development, regulatory
requirements, and statistical methods and strategies used for
immunogenicity detection, quantification, and risk assessment and
mitigation. It then covers anti-drug antibody (ADA) assay
development, optimization, validation, and transfer as well as the
analysis of cut point, a key assay performance parameter in ADA
assay development and validation. The authors illustrate how to
apply statistical modeling approaches to establish associations
between ADA and clinical outcomes, predict immunogenicity risk, and
develop risk mitigation strategies. They also present various
strategies for immunogenicity risk control. The book concludes with
an explanation of the computer codes and algorithms of the
statistical methods. A critical issue in the development of
biologics, immunogenicity can cause early termination or limited
use of the products if not managed well. This book shows how to use
robust statistical methods for detecting, quantifying, assessing,
and mitigating immunogenicity risk. It is an invaluable resource
for anyone involved in immunogenicity risk assessment and control
in both non-clinical and clinical biopharmaceutical development.
Covers statistical concepts, methods and applications related to
all aspects of survival analysis with cure, integration of insights
gained from statistical analysis to decision-marking and inference
in cancer research Self-contained as sufficient the technical
details and statistical background are provided to make its
materials easy to grasp Timely book on most relevant and important
issues on cure models by experienced statistical researchers
Includes Applications to real-life problems Inclusion of R codes
for some of the novel methods and high-impact studies
Covers statistical concepts, methods and applications related to
all aspects of survival analysis with cure, integration of insights
gained from statistical analysis to decision-marking and inference
in cancer research Self-contained as sufficient the technical
details and statistical background are provided to make its
materials easy to grasp Timely book on most relevant and important
issues on cure models by experienced statistical researchers
Includes Applications to real-life problems Inclusion of R codes
for some of the novel methods and high-impact studies
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