Systems Biology of Tumor Physiology

Systems Biology of Tumor Physiology

Author: David H. Nguyen

Publisher: Springer

Published: 2015-12-11

Total Pages: 68

ISBN-13: 3319256017

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This exciting SpringerBrief presents evidence for new ideas that will challenge several theories of how cancer biology is understood. Cancer biology has undergone several intellectual revolutions in the past 50 years. A mutation-centric view of cancer has given way to the tumor microenvironment view. Reductionistic studies of one gene at a time have given way to systems biology approaches that analyze the whole genome (omics) at the same time. However, this text combines the complex levels studying cancer at the molecular biology level, endocrinology level, and transcriptomics level. What researchers are now realizing is that there is a need to combine omics with physiology concepts in order to better understand cancer and this book will give insight to the merging of these two fields in order to define how cancer is studied in the future.​


Systems Biology of Tumor Microenvironment

Systems Biology of Tumor Microenvironment

Author: Katarzyna A. Rejniak

Publisher: Springer

Published: 2016-10-13

Total Pages: 264

ISBN-13: 3319420232

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This edited volume discusses the complexity of tumor microenvironments during cancer development, progression and treatment. Each chapter presents a different mathematical model designed to investigate the interactions between tumor cells and the surrounding stroma and stromal cells. The topics covered in this book include the quantitative image analysis of a tumor microenvironment, the microenvironmental barriers in oxygen and drug delivery to tumors, the development of tumor microenvironmental niches and sanctuaries, intravenous transport of the circulating tumor cells, the role of the tumor microenvironment in chemotherapeutic interventions, the interactions between tumor cells, the extracellular matrix, the interstitial fluid, and the immune and stromal cells. Mathematical models discussed here embrace both continuous and agent-based approaches, as well as mathematical frameworks of solid mechanics, fluid dynamics and optimal control theory. The topics in each chapter will be of interest to a biological community wishing to apply the mathematical methods to interpret their experimental data, and to a biomathematical audience interested in exploring how mathematical models can be used to address complex questions in cancer biology.


Systems Biology and the Challenge of Deciphering the Metabolic Mechanisms Underlying Cancer

Systems Biology and the Challenge of Deciphering the Metabolic Mechanisms Underlying Cancer

Author: Osbaldo Resendis-Antonio

Publisher: Frontiers Media SA

Published: 2017-11-23

Total Pages: 144

ISBN-13: 2889453332

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Since the discovery of the Warburg effect in the 1920s cancer has been tightly associated with the genetic and metabolic state of the cell. One of the hallmarks of cancer is the alteration of the cellular metabolism in order to promote proliferation and undermine cellular defense mechanisms such as apoptosis or detection by the immune system. However, the strategies by which this is achieved in different cancers and sometimes even in different patients of the same cancer is very heterogeneous, which hinders the design of general treatment options. Recently, there has been an ongoing effort to study this phenomenon on a genomic scale in order to understand the causality underlying the disease. Hence, current “omics” technologies have contributed to identify and monitor different biological pieces at different biological levels, such as genes, proteins or metabolites. These technological capacities have provided us with vast amounts of clinical data where a single patient may often give rise to various tissue samples, each of them being characterized in detail by genomescale data on the sequence, expression, proteome and metabolome level. Data with such detail poses the imminent problem of extracting meaningful interpretations and translating them into specific treatment options. To this purpose, Systems Biology provides a set of promising computational tools in order to decipher the mechanisms driving a healthy cell’s metabolism into a cancerous one. However, this enterprise requires bridging the gap between large data resources, mathematical analysis and modeling specifically designed to work with the available data. This is by no means trivial and requires high levels of communication and adaptation between the experimental and theoretical side of research.


Systems Biology of Tumor Dormancy

Systems Biology of Tumor Dormancy

Author: Heiko Enderling

Publisher: Springer Science & Business Media

Published: 2012-11-09

Total Pages: 298

ISBN-13: 1461414458

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This volume is based on the Workshop on Systems Biology of Tumor Dormancy meeting, held July 25th to July 28th, 2011. The first annual CCSB workshop brought together biologists, clinicians, mathematicians, and computer scientists to discuss various aspects of tumor dormancy and develop novel mathematical/computational models with the keynote speakers. Specific topics included the angiogenic switch, immune system interactions, cancer stem cells and signaling.


Systems Biology of Cancer

Systems Biology of Cancer

Author: Sam Thiagalingam

Publisher: Cambridge University Press

Published: 2015-04-09

Total Pages: 597

ISBN-13: 0521493390

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An overview of the current systems biology-based knowledge and the experimental approaches for deciphering the biological basis of cancer.


Evolution-adjusted Tumor Pathophysiology:

Evolution-adjusted Tumor Pathophysiology:

Author: Albrecht Reichle

Publisher: Springer Science & Business Media

Published: 2013-07-01

Total Pages: 438

ISBN-13: 9400768664

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Combined modularized therapies for metastatic cancer are pointing to central problems of communication among ‘systems participators’. A communication theory explains 'social engineering', endogenously induced or by implementing non-normative boundary conditions. Evolution-adjusted tumor pathophysiology is borne by an evolution theory, which contrasts narrative evolution histories. The tool of rationalizations constituting the tumor's normativity (inflammation, immune response etc.) represents the non-genomic counterpart of the tumor genome and should be additionally assessed during tumor staging. Evolution-adjusted tumor pathophysiology allows implementing applied systems biology, a novel clinical and pharmaceutical technology for bioengineering tumor response and personalizing tumor therapy. Combined modularized therapy, evolution-adjusted tumor pathophysiology, and ‘universal’ biomarkers concertedly address genetically based tumor heterogeneity.


Computational Biology Of Cancer: Lecture Notes And Mathematical Modeling

Computational Biology Of Cancer: Lecture Notes And Mathematical Modeling

Author: Dominik Wodarz

Publisher: World Scientific

Published: 2005-01-24

Total Pages: 266

ISBN-13: 9814481874

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The book shows how mathematical and computational models can be used to study cancer biology. It introduces the concept of mathematical modeling and then applies it to a variety of topics in cancer biology. These include aspects of cancer initiation and progression, such as the somatic evolution of cells, genetic instability, and angiogenesis. The book also discusses the use of mathematical models for the analysis of therapeutic approaches such as chemotherapy, immunotherapy, and the use of oncolytic viruses.


Systems Biology and the Challenge of Deciphering the Metabolic Mechanisms Underlying Cancer

Systems Biology and the Challenge of Deciphering the Metabolic Mechanisms Underlying Cancer

Author:

Publisher:

Published: 2017

Total Pages: 0

ISBN-13:

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Since the discovery of the Warburg effect in the 1920s cancer has been tightly associated with the genetic and metabolic state of the cell. One of the hallmarks of cancer is the alteration of the cellular metabolism in order to promote proliferation and undermine cellular defense mechanisms such as apoptosis or detection by the immune system. However, the strategies by which this is achieved in different cancers and sometimes even in different patients of the same cancer is very heterogeneous, which hinders the design of general treatment options.Recently, there has been an ongoing effort to study this phenomenon on a genomic scale in order to understand the causality underlying the disease. Hence, current "omics" technologies have contributed to identify and monitor different biological pieces at different biological levels, such as genes, proteins or metabolites. These technological capacities have provided us with vast amounts of clinical data where a single patient may often give rise to various tissue samples, each of them being characterized in detail by genomescale data on the sequence, expression, proteome and metabolome level. Data with such detail poses the imminent problem of extracting meaningful interpretations and translating them into specific treatment options. To this purpose, Systems Biology provides a set of promising computational tools in order to decipher the mechanisms driving a healthy cell's metabolism into a cancerous one. However, this enterprise requires bridging the gap between large data resources, mathematical analysis and modeling specifically designed to work with the available data. This is by no means trivial and requires high levels of communication and adaptation between the experimental and theoretical side of research.


New Challenges for Cancer Systems Biomedicine

New Challenges for Cancer Systems Biomedicine

Author: Alberto D'Onofrio

Publisher: Springer Science & Business Media

Published: 2013-01-25

Total Pages: 398

ISBN-13: 8847025710

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The future of oncology seems to lie in Molecular Medicine (MM). MM is a new science based on three pillars. Two of them are evident in its very name and are well known: medical science and molecular biology. However, there is a general unawareness that MM is firmly based on a third, and equally important, pillar: Systems Biomedicine. Currently, this term denotes multilevel, hierarchical models integrating key factors at the molecular, cellular, tissue, through phenotype levels, analyzed to reveal the global behavior of the biological process under consideration. It becomes increasingly evident that the tools to construct such complex models include, not only bioinformatics and modern applied statistics, as is unanimously agreed, but also other interdisciplinary fields of science, notably, Mathematical Oncology, Systems Biology and Theoretical Biophysics.