Systems biology: perspectives on multiscale modeling in research on endocrine-related cancers

Author:

Clarke Robert1,Tyson John J2,Tan Ming3,Baumann William T4,Jin Lu1,Xuan Jianhua5,Wang Yue5

Affiliation:

1. 1Department of Oncology, Georgetown University Medical Center, Washington, District of Columbia, USA

2. 2Department of Biological Sciences, Virginia Polytechnic Institute and State University, Blacksburg, Virginia, USA

3. 3Department of Biostatistics, Bioinformatics & Biomathematics, Georgetown University Medical Center, Washington, District of Columbia, USA

4. 4Department of Electrical and Computer Engineering, Virginia Polytechnic Institute and State University, Blacksburg, Virginia, USA

5. 5Department of Electrical and Computer Engineering, Virginia Polytechnic Institute and State University, Arlington, Virginia, USA

Abstract

Drawing on concepts from experimental biology, computer science, informatics, mathematics and statistics, systems biologists integrate data across diverse platforms and scales of time and space to create computational and mathematical models of the integrative, holistic functions of living systems. Endocrine-related cancers are well suited to study from a systems perspective because of the signaling complexities arising from the roles of growth factors, hormones and their receptors as critical regulators of cancer cell biology and from the interactions among cancer cells, normal cells and signaling molecules in the tumor microenvironment. Moreover, growth factors, hormones and their receptors are often effective targets for therapeutic intervention, such as estrogen biosynthesis, estrogen receptors or HER2 in breast cancer and androgen receptors in prostate cancer. Given the complexity underlying the molecular control networks in these cancers, a simple, intuitive understanding of how endocrine-related cancers respond to therapeutic protocols has proved incomplete and unsatisfactory. Systems biology offers an alternative paradigm for understanding these cancers and their treatment. To correctly interpret the results of systems-based studies requires some knowledge of how in silico models are built, and how they are used to describe a system and to predict the effects of perturbations on system function. In this review, we provide a general perspective on the field of cancer systems biology, and we explore some of the advantages, limitations and pitfalls associated with using predictive multiscale modeling to study endocrine-related cancers.

Publisher

Bioscientifica

Subject

Cancer Research,Endocrinology,Oncology,Endocrinology, Diabetes and Metabolism

Reference288 articles.

1. An engineering design approach to systems biology;Integrative Biology,2017

2. Microarray-based class discovery for molecular classification of breast cancer: analysis of interobserver agreement;Journal of the National Cancer Institute,2011

3. A framework for parameter estimation and model selection from experimental data in systems biology using approximate Bayesian computation;Nature Protocols,2014

4. Experimental designs for multidrug combination studies using signaling networks;Biometrics,2018

5. Predicting multi-drug inhibition interactions based on signaling networks and single drug dose-response information;Journal of Computational Systems Biology,2016

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