Machine Learning Methods and Applications to Brain Disorders
Coordonnateurs : Mechelli Andrea, Vieira Sandra
Machine Learning is an area of artificial intelligence involving the development of algorithms to discover trends and patterns in existing data; this information can then be used to make predictions on new data. A growing number of researchers and clinicians are using machine learning methods to develop and validate tools for assisting the diagnosis and treatment of patients with brain disorders. Machine Learning: Methods and Applications to Brain Disorders provides an up-to-date overview of how these methods can be applied to brain disorders, including both psychiatric and neurological disease. This book is written for a non-technical audience, such as neuroscientists, psychologists, psychiatrists, neurologists and health care practitioners.
Part I 1. Introduction to machine learning 2. Main concepts in machine learning 3. Applications of machine learning to brain disorders
Part II 4. Linear regression 5. Linear methods for classification 6. Support vector machine 7. Support vector regression 8. Multiple kernel learning 9. Deep neural networks 10. Convolutional neural networks 11. Autoencoders 12. Principal component analysis 13. K-means clustering
Part III 14. Dealing with missing data, small sample sizes, and heterogeneity 15. Working with high dimensional feature spaces: the example of voxel-wise encoding models 16. Multimodal integration 17. Bias, noise and interpretability in machine learning: from measurements to features 18. Ethical issues in the application of machine learning to brain disorders
Part IV 19. A step-by-step tutorial on how to build a machine learning model
Sandra Vieira is a postdoctoral researcher at the Institute Psychiatry, Psychology & Neuroscience (King's College London). After completing a degree in Psychology (2009) and a Masters in Clinical Psychology (2011) at the University of Coimbra, she joined the Institute Psychiatry, Psychology & Neuroscience. Here she obtained a Masters in Psychiatric Research in 2014 and a PhD in Psychosis Studies in 2019. Her research focuses on the integration of advanced machine learning methods and multi-modal neuroimaging to investigate the neural basis of mental illness and develop imaging-based clinical tools.
- Provides a non-technical introduction to machine learning and applications to brain disorders
- Includes a detailed description of the most commonly used machine learning algorithms as well as some novel and promising approaches
- Covers the main methodological challenges in the application of machine learning to brain disorders
- Provides a step-by-step tutorial for implementing a machine learning pipeline to neuroimaging data in Python
Date de parution : 11-2019
Ouvrage de 408 p.
15x22.8 cm