Cancer Bioinformatics

Ying Xu, Juan Cui, David Puett, et al.

PDF
ca. 53,49
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Springer New York img Link Publisher

Naturwissenschaften, Medizin, Informatik, Technik / Anwendungs-Software

Beschreibung

This book provides a framework for computational researchers studying the basics of cancer through comparative analyses of omic data. It discusses how key cancer pathways can be analyzed and discovered to derive new insights into the disease and identifies diagnostic and prognostic markers for cancer. Chapters explain the basic cancer biology and how cancer develops, including the many potential survival routes. The examination of gene-expression patterns uncovers commonalities across multiple cancers and specific characteristics of individual cancer types. The authors also treat cancer as an evolving complex system, explore future case studies, and summarize the essential online data sources. Cancer Bioinformatics is designed for practitioners and researchers working in cancer research and bioinformatics. It is also suitable as a secondary textbook for advanced-level students studying computer science, biostatistics or biomedicine.

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Kundenbewertungen

Schlagwörter

Bioinformatics, Cancer omic data analysis, Cancer biology, Cancer systems biology, Computational biology, Omic databases, Cancer bioinformatics, Comparative omic analysis, Cancer pathway analysis, Cancer genomes, Cancer marker identification