Network Medicine: Complex Systems in Human Disease and Therapeutics
edited by Joseph Loscalzo, Albert-László Barabási and Edwin K. Silverman contributions by John C. Earls, James A. Eddy, Samik Ghosh, Kimberly R. Glass, Jeremy Gunawardena, David E. Hill, Isabelle Huvent, Hiroaki Kitano, Isabelle Landrieu, Jessica Lasky-Su, Arnaud Leroy, Guy Lippens, Augusto A. Litonjua, Douglas Luke, Shuyi Ma, Calum A. MacRae, Jörg Menche, Sucheendra K. Palaniappan, Benjamin Parent, Sudhakaran Prabakaran, Nathan Price, John Quackenbush, Thomas Rolland, Martin W. Schoen, Caroline Smet-Nocca, Joanne E. Sordillo, Marc Vidal, George M. Weinstock, Scott Tillman Weiss, Elliott M. Antman, Michael A. Calderwood, Benoit Charloteaux, Clary B. Clish, Michael E. Cusick and Dawn Lisa Demeo
Harvard University Press, 2017 eISBN: 978-0-674-54553-3 | Cloth: 978-0-674-43653-4 Library of Congress Classification R858.N48 2016 Dewey Decimal Classification 610.285
ABOUT THIS BOOK | REVIEWS | TOC
ABOUT THIS BOOK
Big data, genomics, and quantitative approaches to network-based analysis are combining to advance the frontiers of medicine as never before. Network Medicine introduces this rapidly evolving field of medical research, which promises to revolutionize the diagnosis and treatment of human diseases. With contributions from leading experts that highlight the necessity of a team-based approach in network medicine, this definitive volume provides readers with a state-of-the-art synthesis of the progress being made and the challenges that remain.
Medical researchers have long sought to identify single molecular defects that cause diseases, with the goal of developing silver-bullet therapies to treat them. But this paradigm overlooks the inherent complexity of human diseases and has often led to treatments that are inadequate or fraught with adverse side effects. Rather than trying to force disease pathogenesis into a reductionist model, network medicine embraces the complexity of multiple influences on disease and relies on many different types of networks: from the cellular-molecular level of protein-protein interactions to correlational studies of gene expression in biological samples. The authors offer a systematic approach to understanding complex diseases while explaining network medicine’s unique features, including the application of modern genomics technologies, biostatistics and bioinformatics, and dynamic systems analysis of complex molecular networks in an integrative context.
By developing techniques and technologies that comprehensively assess genetic variation, cellular metabolism, and protein function, network medicine is opening up new vistas for uncovering causes and identifying cures of disease.
REVIEWS
What will a human look like at molecular levels? The study behind the general concept of Network Medicine examines the effort to identify the blueprint and principles that will enable us to understand this complex life system at molecular levels. This book presents the state of the knowledge of network medicine and is an excellent reference for both experts in the area and general population interested in life science.
-- Weiniu Gan, National Heart, Lung, and Blood Institute
This book fills a gap in the literature by applying complex systems theory to the field of medicine. Such application is likely to trigger important results by promoting a very useful shift in perspective. Definitely a book to read.
-- Guido Caldarelli, IMT Institute for Advanced Studies Lucca
TABLE OF CONTENTS
Cover
Title
Copyright
Dedication
Contents
Preface
Chapter 1. Scientific Basis of Network Medicine
Chapter 2. Introduction to Network Analysis
Chapter 3. Human Interactomes in Network Medicine
Chapter 4. Social Networks in Human Disease
Chapter 5. Phenotype, Pathophenotype, and Endo(patho)phenotype in Network Medicine
Chapter 6. A New Paradigm for Defining Human Disease and Therapy
Chapter 7. Complex Disease Genetics and Network Medicine
Chapter 8. Transcriptomics and Network Medicine
Chapter 9. Post-translational Modifications of the Proteome: The Example of Tau in the Neuron and the Brain
Chapter 10. Epigenetics and Network Medicine
Chapter 11. Metabolomics and Network Medicine
Chapter 12. Using Integrative -omics Approaches in Network Medicine
Chapter 13. Cancer Network Medicine
Chapter 14. Systems Pharmacology in Network Medicine
Network Medicine: Complex Systems in Human Disease and Therapeutics
edited by Joseph Loscalzo, Albert-László Barabási and Edwin K. Silverman contributions by John C. Earls, James A. Eddy, Samik Ghosh, Kimberly R. Glass, Jeremy Gunawardena, David E. Hill, Isabelle Huvent, Hiroaki Kitano, Isabelle Landrieu, Jessica Lasky-Su, Arnaud Leroy, Guy Lippens, Augusto A. Litonjua, Douglas Luke, Shuyi Ma, Calum A. MacRae, Jörg Menche, Sucheendra K. Palaniappan, Benjamin Parent, Sudhakaran Prabakaran, Nathan Price, John Quackenbush, Thomas Rolland, Martin W. Schoen, Caroline Smet-Nocca, Joanne E. Sordillo, Marc Vidal, George M. Weinstock, Scott Tillman Weiss, Elliott M. Antman, Michael A. Calderwood, Benoit Charloteaux, Clary B. Clish, Michael E. Cusick and Dawn Lisa Demeo
Harvard University Press, 2017 eISBN: 978-0-674-54553-3 Cloth: 978-0-674-43653-4
Big data, genomics, and quantitative approaches to network-based analysis are combining to advance the frontiers of medicine as never before. Network Medicine introduces this rapidly evolving field of medical research, which promises to revolutionize the diagnosis and treatment of human diseases. With contributions from leading experts that highlight the necessity of a team-based approach in network medicine, this definitive volume provides readers with a state-of-the-art synthesis of the progress being made and the challenges that remain.
Medical researchers have long sought to identify single molecular defects that cause diseases, with the goal of developing silver-bullet therapies to treat them. But this paradigm overlooks the inherent complexity of human diseases and has often led to treatments that are inadequate or fraught with adverse side effects. Rather than trying to force disease pathogenesis into a reductionist model, network medicine embraces the complexity of multiple influences on disease and relies on many different types of networks: from the cellular-molecular level of protein-protein interactions to correlational studies of gene expression in biological samples. The authors offer a systematic approach to understanding complex diseases while explaining network medicine’s unique features, including the application of modern genomics technologies, biostatistics and bioinformatics, and dynamic systems analysis of complex molecular networks in an integrative context.
By developing techniques and technologies that comprehensively assess genetic variation, cellular metabolism, and protein function, network medicine is opening up new vistas for uncovering causes and identifying cures of disease.
REVIEWS
What will a human look like at molecular levels? The study behind the general concept of Network Medicine examines the effort to identify the blueprint and principles that will enable us to understand this complex life system at molecular levels. This book presents the state of the knowledge of network medicine and is an excellent reference for both experts in the area and general population interested in life science.
-- Weiniu Gan, National Heart, Lung, and Blood Institute
This book fills a gap in the literature by applying complex systems theory to the field of medicine. Such application is likely to trigger important results by promoting a very useful shift in perspective. Definitely a book to read.
-- Guido Caldarelli, IMT Institute for Advanced Studies Lucca
TABLE OF CONTENTS
Cover
Title
Copyright
Dedication
Contents
Preface
Chapter 1. Scientific Basis of Network Medicine
Chapter 2. Introduction to Network Analysis
Chapter 3. Human Interactomes in Network Medicine
Chapter 4. Social Networks in Human Disease
Chapter 5. Phenotype, Pathophenotype, and Endo(patho)phenotype in Network Medicine
Chapter 6. A New Paradigm for Defining Human Disease and Therapy
Chapter 7. Complex Disease Genetics and Network Medicine
Chapter 8. Transcriptomics and Network Medicine
Chapter 9. Post-translational Modifications of the Proteome: The Example of Tau in the Neuron and the Brain
Chapter 10. Epigenetics and Network Medicine
Chapter 11. Metabolomics and Network Medicine
Chapter 12. Using Integrative -omics Approaches in Network Medicine
Chapter 13. Cancer Network Medicine
Chapter 14. Systems Pharmacology in Network Medicine