Gene Expression Data Analysis: A Statistical and Machine Learning Perspective has been written with a multidisciplinary audience in mind. The book discusses gene expression data analysis from molecular biology, machine learning, and statistical perspectives. Readers will be able to acquire both theoretical and practical knowledge of methods for identifying novel patterns of high biological significance. To measure the effectiveness of such algorithms, we discuss statistical and biological performance metrics that can be used in real life or in a simulated environment. This book discusses a large number of benchmark algorithms, tools, systems, and repositories that are commonly used in analyzing gene expression data and validating results. This book will benefit students, researchers, and practitioners in biology, medicine, and computer science by enabling them to acquire in-depth knowledge in statistical and machine-learning-based methods for analyzing gene expression data.
Key Features:
- An introduction to the Central Dogma of molecular biology and information flow in biological systems
- A systematic overview of the methods for generating gene expression data
- Background knowledge on statistical modeling and machine learning techniques
- Detailed methodology of analyzing gene expression data with an example case study
- Clustering methods for finding co-expression patterns from microarray, bulkRNA, and scRNA data
- A large number of practical tools, systems, and repositories that are useful for computational biologists to create, analyze, and validate biologically relevant gene expression patterns
- Suitable for multidisciplinary researchers and practitioners in computer science and biological sciences
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