_Computational Intelligence for Genomics Data_ presents an overview of
machine learning and deep learning techniques being developed for the
analysis of genomic data and the development of disease prediction
models. The book focuses on machine and deep learning techniques
applied to dimensionality reduction, feature extraction, and
expressive gene selection. It includes designs, algorithms, and
simulations on MATLAB and Python for larger prediction models and
explores the possibilities of software and hardware-based applications
and devices for genomic disease prediction. With the inclusion of
important case studies and examples, this book will be a helpful
resource for researchers, graduate students, and professional
engineers.
* Provides comparative analysis of machine learning and deep learning
methods in the analysis of genomic data, discussing major design
challenges, best practices, pitfalls, and research potential
* Explores machine and deep learning techniques applied to
dimensionality reduction, feature extraction, data selection, and
their application in genomics
* Presents case studies of various diseases based on gene microarray
expression data, including cancer, liver disorders, neuromuscular
disorders, and neurodegenerative disorders
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Produktdetaljer
ISBN
9780443300813
Publisert
2024
Utgiver
Elsevier S & T
Språk
Product language
Engelsk
Format
Product format
Digital bok
Forfatter