Section I: Multiple sources of data.
Chapter 1: Introduction to data sources and outcome models.
Chapter 2: Cinical data in outcome models.
Chapter 3: Imaging data: Radiomics.
Chapter 4: Dosimetric data.
Chapter 5: Pre-Clinical Radiobiological insights to inform modelling of radiotherapy outcome.
Chapter 6: Biological data: The use of omics in outcome models. Section II: Top-down Modeling Approaches.
Chapter 7: Analytical and mechanistic modeling.
Chapter 8: Data driven approaches I: using conventional statistical inference methods, including linear and logistic regression.
Chapter 9: Data driven approaches II: Machine Learning. Section III: Bottom-up Modeling Approaches.
Chapter 10: Stochastic multiscale modelling of biological effects induced by ionizing radiation.
Chapter 11: Multiscale modeling approaches: Application in Chemo and immunotherapies. Section IV: Example Applications in Oncology. Chapter 12: Outcome Modeling in Treatment Planning.
Chapter 13: A Utility Based Approach to Individualized and Adaptive Radiation Therapy.
Chapter 14: Outcome modeling in Particle therapy.
Chapter 15: Modeling response to oncological surgery.
Chapter 16: Tools for the precision medicine era: Developing highly adaptive and personalized treatment recommendations using SMARTs.