
Real-World Evidence: Methods and Mastery is the most technically advanced volume in the Evidence Mastery series — and one of the most comprehensive treatments of advanced RWE methodology available in the scientific literature. Written for methodologists, regulators, senior researchers, and advanced practitioners who need to go well beyond the basics, it covers the full architecture of modern causal inference and real-world evidence generation.
The book is structured in six parts. Part I establishes the foundations: the RWE ecosystem as a system of systems, advanced data quality and validation, large-scale data linkage, and measurement error and misclassification. Part II is the methodological core — covering target trial emulation, advanced propensity score methods, instrumental variables, marginal structural models, G-methods and causal diagrams, and sensitivity analyses with quantitative bias analysis.
Part III explores advanced analytics including longitudinal data methods, survival analysis, high-dimensional propensity scores, machine learning for causal inference, and synthetic data and digital twins. Part IV covers the full landscape of real-world trials — pragmatic trials, registry-based RCTs, decentralised trials, and adaptive designs. Part V is a comprehensive treatment of global regulatory science (FDA, EMA/DARWIN EU, MHRA, PMDA, Health Canada, and ICH M14). Part VI closes with applications across drug development, medical devices, vaccines, and the emerging field of longevity and geroscience.
Early-bird pricing and exclusive pre-launch content for waitlist members. Publication: December 2027.