Computational Approaches in Biology and Medicine
Authors:
Denis L. Cascino, Bain & Company, Italy
Giovanni Gatti, Bocconi University, Italy
Luca S. Matarazzo, Department of Computing Sciences at Bocconi University, Italy
Sandeep Unwith, University of Oxford, UK
Simone G. Riva, University of Oxford, UK
Giovanni Damiani, University of Milan, Italy and Case Western Reserve University, USA
Andrea Tangherloni, Department of Computing Sciences, Bocconi University, Milan, Italy
ISBN: 9788743812463 (Hardback) e-ISBN: 9788743812470
Available: July 2026
Biomedical Data Science: A Step-by-Step Guide to Analysis and Interpretation is a practical roadmap for transforming complex biomedical data into reliable insights. Designed for readers at the crossroads of biology, medicine, and computation, the book walks readers through the entire lifecycle of analysis, from formulating clear questions to designing robust studies, quantifying uncertainty, building and validating models, and interpreting results responsibly.
Instead of overwhelming the reader with derivations, it emphasises conceptual clarity, reproducibility, and interpretability, linking key ideas with Python workflows using widely adopted libraries. Core statistical tools (estimation, confidence intervals, hypothesis testing, multiple testing) are integrated with essential machine-learning practices (cross-validation, metrics, baseline vs. null models, sanity checks, and model explanation).
An end-to-end clinical case study ties everything together—demonstrating how design decisions, preprocessing, statistical analysis, and predictive modelling collectively influence conclusions and clinical significance. As the first volume of the River Series, this book establishes a practical, open, and interdisciplinary approach to data-driven biomedicine, guiding readers to “get it right” from the outset.
Part I : Experimental Design in Biomedical Research
Part II : Statistical Methods and Machine Learning Techniques: From Hypothesis Testing to Predictive ModellingÂ