Integrating Transcriptomic Data with Mechanistic Systems Pharmacology Models for Virtual Drug Combination Trials

ACS Chem Neurosci. 2018 Jan 17;9(1):118-129. doi: 10.1021/acschemneuro.7b00197. Epub 2017 Oct 6.

Abstract

Monotherapy clinical trials with mutation-targeted kinase inhibitors, despite some success in other cancers, have yet to impact glioblastoma (GBM). Besides insufficient blood-brain barrier penetration, combinations are key to overcoming obstacles such as intratumoral heterogeneity, adaptive resistance, and the epistatic nature of tumor genomics that cause mutation-targeted therapies to fail. With now hundreds of potential drugs, exploring the combination space clinically and preclinically is daunting. We are building a simulation-based approach that integrates patient-specific data with a mechanistic computational model of pan-cancer driver pathways (receptor tyrosine kinases, RAS/RAF/ERK, PI3K/AKT/mTOR, cell cycle, apoptosis, and DNA damage) to prioritize drug combinations by their simulated effects on tumor cell proliferation and death. Here we illustrate a first step, tailoring the model to 14 GBM patients from The Cancer Genome Atlas defined by an mRNA-seq transcriptome, and then simulating responses to three promiscuous FDA-approved kinase inhibitors (bosutinib, ibrutinib, and cabozantinib) with evidence for blood-brain barrier penetration. The model captures binding of the drug to primary targets and off-targets based on published affinity data and simulates responses of 100 heterogeneous tumor cells within a patient. Single drugs are marginally effective or even counterproductive. Common copy number alterations (PTEN loss, EGFR amplification, and NF1 loss) have a negligible correlation with single-drug or combination efficacy, reinforcing the importance of postgenetic approaches that account for kinase inhibitor promiscuity to match drugs to patients. Drug combinations tend to be either cytostatic or cytotoxic, but seldom both, highlighting the need for considering targeted and nontargeted therapy. Although we focus on GBM, the approach is generally applicable.

Keywords: Brain tumors; Cancer precision medicine; Combination therapy; Mechanistic models; Quantitative systems pharmacology; Stochastic simulation.

Publication types

  • Research Support, N.I.H., Extramural
  • Research Support, Non-U.S. Gov't

MeSH terms

  • Adenine / analogs & derivatives
  • Anilides / pharmacology
  • Anilides / therapeutic use
  • Aniline Compounds / pharmacology
  • Aniline Compounds / therapeutic use
  • Antineoplastic Agents / pharmacology
  • Antineoplastic Agents / therapeutic use
  • Apoptosis / drug effects
  • Blood-Brain Barrier / metabolism
  • Cell Cycle / drug effects
  • Cell Proliferation / drug effects
  • Central Nervous System Neoplasms / drug therapy
  • Central Nervous System Neoplasms / genetics
  • Central Nervous System Neoplasms / metabolism
  • Clinical Trials as Topic
  • Computer Simulation*
  • Drug Discovery / methods*
  • Drug Therapy, Combination*
  • Genomics / methods
  • Glioblastoma / drug therapy
  • Glioblastoma / genetics
  • Glioblastoma / metabolism
  • Humans
  • Models, Theoretical*
  • Nitriles / pharmacology
  • Nitriles / therapeutic use
  • Piperidines
  • Protein-Tyrosine Kinases / antagonists & inhibitors
  • Protein-Tyrosine Kinases / metabolism
  • Pyrazoles / pharmacology
  • Pyrazoles / therapeutic use
  • Pyridines / pharmacology
  • Pyridines / therapeutic use
  • Pyrimidines / pharmacology
  • Pyrimidines / therapeutic use
  • Quinolines / pharmacology
  • Quinolines / therapeutic use
  • RNA, Messenger / metabolism
  • Stochastic Processes
  • Transcriptome*

Substances

  • Anilides
  • Aniline Compounds
  • Antineoplastic Agents
  • Nitriles
  • Piperidines
  • Pyrazoles
  • Pyridines
  • Pyrimidines
  • Quinolines
  • RNA, Messenger
  • cabozantinib
  • ibrutinib
  • bosutinib
  • Protein-Tyrosine Kinases
  • Adenine