Clinical Network Systems Biology: Traversing the Cancer Multiverse

Author:

Mambetsariev Isa1,Fricke Jeremy1ORCID,Gruber Stephen B.1,Tan Tingting1,Babikian Razmig1,Kim Pauline2,Vishnubhotla Priya13,Chen Jianjun4,Kulkarni Prakash14,Salgia Ravi1ORCID

Affiliation:

1. Department of Medical Oncology and Therapeutic Research, City of Hope National Medical Center, Duarte, CA 91010, USA

2. Department of Pharmacy, City of Hope National Medical Center, Duarte, CA 91010, USA

3. Department of Medical Oncology, City of Hope Atlanta, Newnan, GA 30265, USA

4. Department of Systems Biology, City of Hope National Medical Center, Duarte, CA 91010, USA

Abstract

In recent decades, cancer biology and medicine have ushered in a new age of precision medicine through high-throughput approaches that led to the development of novel targeted therapies and immunotherapies for different cancers. The availability of multifaceted high-throughput omics data has revealed that cancer, beyond its genomic heterogeneity, is a complex system of microenvironments, sub-clonal tumor populations, and a variety of other cell types that impinge on the genetic and non-genetic mechanisms underlying the disease. Thus, a systems approach to cancer biology has become instrumental in identifying the key components of tumor initiation, progression, and the eventual emergence of drug resistance. Through the union of clinical medicine and basic sciences, there has been a revolution in the development and approval of cancer therapeutic drug options including tyrosine kinase inhibitors, antibody–drug conjugates, and immunotherapy. This ‘Team Medicine’ approach within the cancer systems biology framework can be further improved upon through the development of high-throughput clinical trial models that utilize machine learning models, rapid sample processing to grow patient tumor cell cultures, test multiple therapeutic options and assign appropriate therapy to individual patients quickly and efficiently. The integration of systems biology into the clinical network would allow for rapid advances in personalized medicine that are often hindered by a lack of drug development and drug testing.

Funder

National Cancer Institute of the National Institutes of Health

Publisher

MDPI AG

Subject

General Medicine

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