ABSTRACT

Artificial Intelligence for Drug Development, Precision Medicine, and Healthcare covers exciting developments at the intersection of computer science and statistics. While much of machine-learning is statistics-based, achievements in deep learning for image and language processing rely on computer science’s use of big data. Aimed at those with a statistical background who want to use their strengths in pursuing AI research, the book:

·       Covers broad AI topics in drug development, precision medicine, and healthcare.

·       Elaborates on supervised, unsupervised, reinforcement, and evolutionary learning methods.

·       Introduces the similarity principle and related AI methods for both big and small data problems.

·       Offers a balance of statistical and algorithm-based approaches to AI.

·       Provides examples and real-world applications with hands-on R code.

·       Suggests the path forward for AI in medicine and artificial general intelligence.

 

As well as covering the history of AI and the innovative ideas, methodologies and software implementation of the field, the book offers a comprehensive review of AI applications in medical sciences. In addition, readers will benefit from hands on exercises, with included R code.

chapter 1|16 pages

Overview of Modern Artificial Intelligence

chapter 4|28 pages

Similarity-Based Artificial Intelligence

chapter 5|23 pages

Artificial Neural Networks

chapter 6|38 pages

Deep Learning Neural Networks

chapter 7|13 pages

Kernel Methods

chapter 8|14 pages

Decision Tree and Ensemble Methods

chapter 9|22 pages

Bayesian Learning Approach

chapter 10|23 pages

Unsupervised Learning

chapter 11|24 pages

Reinforcement Learning

chapter 12|15 pages

Swarm and Evolutionary Intelligence

chapter 15|10 pages

Appendix