| Literature DB >> 28951721 |
Jaehee V Shim1, Bryan Chun2, Johan G C van Hasselt1, Marc R Birtwistle1, Jeffrey J Saucerman2, Eric A Sobie1.
Abstract
Tyrosine kinase inhibitors (TKIs) are highly potent cancer therapeutics that have been linked with serious cardiotoxicity, including left ventricular dysfunction, heart failure, and QT prolongation. TKI-induced cardiotoxicity is thought to result from interference with tyrosine kinase activity in cardiomyocytes, where these signaling pathways help to control critical processes such as survival signaling, energy homeostasis, and excitation-contraction coupling. However, mechanistic understanding is limited at present due to the complexities of tyrosine kinase signaling, and the wide range of targets inhibited by TKIs. Here, we review the use of TKIs in cancer and the cardiotoxicities that have been reported, discuss potential mechanisms underlying cardiotoxicity, and describe recent progress in achieving a more systematic understanding of cardiotoxicity via the use of mechanistic models. In particular, we argue that future advances are likely to be enabled by studies that combine large-scale experimental measurements with Quantitative Systems Pharmacology (QSP) models describing biological mechanisms and dynamics. As such approaches have proven extremely valuable for understanding and predicting other drug toxicities, it is likely that QSP modeling can be successfully applied to cardiotoxicity induced by TKIs. We conclude by discussing a potential strategy for integrating genome-wide expression measurements with models, illustrate initial advances in applying this approach to cardiotoxicity, and describe challenges that must be overcome to truly develop a mechanistic and systematic understanding of cardiotoxicity caused by TKIs.Entities:
Keywords: drug-induced adverse events; mathematical modeling; quantitative systems pharmacology; tyrosine kinase inhibitors
Year: 2017 PMID: 28951721 PMCID: PMC5599787 DOI: 10.3389/fphys.2017.00651
Source DB: PubMed Journal: Front Physiol ISSN: 1664-042X Impact factor: 4.566
Biological signaling components potentially relevant to toxicity.
| EGF | Epidermal growth factor | Extracellular peptide that signals through autocrine and paracrine mechanisms |
| Neuregulin1 | N/A | Extracellular peptide that signals through autocrine and paracrine mechanisms |
| ERBB2/HER2 | Human epidermal growth factor receptor 2 | EGFR family receptor tyrosine kinase |
| ERBB1/EGFR | Receptor for EGF | EGFR family receptor tyrosine kinase |
| VEGF | Vascular endothelial-derived growth factor | Extracellular peptide that signals through autocrine and paracrine mechanisms |
| VEGFR | Receptor for VEGF | Receptor tyrosine kinase |
| PDGF | Platelet-derived growth factor | Extracellular peptide that signals through autocrine and paracrine mechanisms |
| PDGFR | Receptor for PDGF | Receptor tyrosine kinase |
| ABL1 | Abelson murine leukemia viral oncogene homolog 1 | cytoplasmic tyrosine kinase |
| BCR-ABL | Fusion protein of ABL1 and Breakpoint cluster region protein (BCR) | cytoplasmic fusion tyrosine kinase |
| Raf-1/c-Raf | N/A | cytoplasmic serine/threonine kinase |
| ERK | Extracellular signal-related kinase | cytoplasmic serine/threonine kinase |
| JNK | c-Jun N-terminal kinase | cytoplasmic serine/threonine kinase |
| PI3K | Phosphatidylinositide 3-kinase | cytoplasmic lipid kinase |
| Akt/PKB | Also known as Protein Kinase B | cytoplasmic serine/threonine kinase |
| Src/c-Src | N/A | cytoplasmic tyrosine kinase |
| AMPK | AMP-activated protein kinase | cytoplasmic serine/threonine kinase |
Figure 1TKI targets and associated adverse events. (A) Euler diagram of tyrosine kinase inhibitors grouped based on the primary intended target(s). The three major primary targets are EGFR/ERBB2 (8 TKIs), VEGFR (11 TKIs), and ABL (6 TKIs). The category “Other” comprises five relatively newer TKIs with primary targets in different categories, such as vemurafenib (B-Raf). Out of 30 approved TKIs, 18 were identified as having intended targets in more than one category. (B) Black box warnings associated with tyrosine kinase inhibitors are indicated, with closely-related toxicities grouped to ease visualization. Cardiomyopathy category includes: “cardiac dysfunction,” “congestive heart failure,” “left ventricular dysfunction,” and “cardiomyopathy.” Arrhythmia includes: “prolonged QT interval,” “cardiac bradyarrhythmia,” and “cardiac arrhythmia.” Pericardial effusion includes both “pericardial/pleural effusion,” and “cardiac tamponade.” Four approved drugs have no cardiac-associated boxed warning (i.e., no serious cardiac adverse events listed in the drug's package insert).
Figure 2Computational pipeline for integrating gene expression data with QSP models to enable understanding of TKI-induced cardiotoxicity. The pipeline starts with (A) mRNAseq data generated from drug treated cells. Using the mRNAseq data, parameters in the QSP model are altered to reflect changes in cell state after 48 h of drug treatment. Specifically, parameters describing maximal activity of model species are scaled based on the changes in gene expression (drug-treated vs. untreated cells). (B) The QSP model (Ryall et al., 2012) is composed of ordinary differential equations (ODEs) that describe activation and inactivation of cellular signaling dynamics. Simulations are performed to predict how drug-induced changes in gene expression will influence both basal signaling activity and how cells respond to stimuli. For instance, example simulation results in (C) show BNP activity, before, and after stimulation with isoproterenol (a β-adrenergic receptor agonist), in both untreated cells, and cells that have been exposed to two different TKIs for 48 h. These time course simulations predict drug-specific changes, such as an increase in BNP signaling after nilotinib treatment (top) compared with a decrease after dasatinib treatment (bottom). From these time courses, summary statistics (D) are collected from steady-state levels of BNP under two conditions (192 basal activity and 193 stimulus). (E) Using this pipeline, steady state changes in seven model outputs were computed and summed to generate a metric that we termed the “hypertrophy index.” This provides a summary statistic of the overall hypertrophic risk of a drug under different conditions (e.g., basal activity, left, and isoproterenol stimulation, right). (F) Hypertrophy indices computed, under three different conditions, from data obtained in a single cell line after treatment with 24 TKIs, and six non-TKIs (control drugs that are presumed to not cause cardiotoxicity). Each circle represents an individual drug, the line indicates the mean value for each group under basal activity (left), isoproterenol stimulation (middle), and endothelin-1 stimulation (right).