| Literature DB >> 25950758 |
Richard M Turner1, B Kevin Park2, Munir Pirmohamed1.
Abstract
There is notable interindividual heterogeneity in drug response, affecting both drug efficacy and toxicity, resulting in patient harm and the inefficient utilization of limited healthcare resources. Pharmacogenomics is at the forefront of research to understand interindividual drug response variability, but although many genotype-drug response associations have been identified, translation of pharmacogenomic associations into clinical practice has been hampered by inconsistent findings and inadequate predictive values. These limitations are in part due to the complex interplay between drug-specific, human body and environmental factors influencing drug response and therefore pharmacogenomics, whilst intrinsically necessary, is by itself unlikely to adequately parse drug variability. The emergent, interdisciplinary and rapidly developing field of systems pharmacology, which incorporates but goes beyond pharmacogenomics, holds significant potential to further parse interindividual drug variability. Systems pharmacology broadly encompasses two distinct research efforts, pharmacologically-orientated systems biology and pharmacometrics. Pharmacologically-orientated systems biology utilizes high throughput omics technologies, including next-generation sequencing, transcriptomics and proteomics, to identify factors associated with differential drug response within the different levels of biological organization in the hierarchical human body. Increasingly complex pharmacometric models are being developed that quantitatively integrate factors associated with drug response. Although distinct, these research areas complement one another and continual development can be facilitated by iterating between dynamic experimental and computational findings. Ultimately, quantitative data-derived models of sufficient detail will be required to help realize the goal of precision medicine.Entities:
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Year: 2015 PMID: 25950758 PMCID: PMC4696409 DOI: 10.1002/wsbm.1302
Source DB: PubMed Journal: Wiley Interdiscip Rev Syst Biol Med ISSN: 1939-005X
FIGURE 1The rationale for a multiscale network-based understanding of drug action. The human body can be parsed into a hierarchy of biological levels; interactions within and between levels form networks that are interconnected to other networks, resulting in the complex human body system. The founder constituents of this dynamic complex system are the genome and exposome; the latter represents environmental exposures (e.g., smoking) that interact with and influence all biological levels of the human body. Many drugs have more than one protein target and therefore a network-based understanding is more informative than a single target perspective. In this figure, the genomic, proteomic and tissue/organ levels have been expanded, although all levels can inform an individual's response to drug therapy. Genetic polymorphisms can, e.g., alter the structure and/or abundance of a drug target and important proteins mediating the drug-induced proteomic network response. This network response influences other levels in different times and spaces, for example altering gene transcription and tissue function. Intra- and inter-level interactions ultimately lead to the emergence of an individual patient's clinical drug response. Through investigating and modelling these interactions using empirical and pharmacometric methods, illustrated further in Figure 2, the aim is to develop multiscale models to facilitate dose- and drug-adjusted precision medicine. ADR: adverse drug reaction
FIGURE 2The interrelated processes for systems pharmacology multiscale model development. This figure provides a nonexhaustive overview of the processes and interconnections relevant to multiscale modelling. First, from a clinical observation and/or new research finding, a new research question is generated. Three major empirical resources can be harnessed to address the question: clinical, in vitro/animal and publically available empirically derived databases. Multi-omics approaches coupled with bioinformatics can uncover new associations. Network description and analysis can glean further information from existing databases (e.g., of high throughput data), predicting new targets and defining molecular sub-networks associated with drug response phenotypes of interest (e.g., adverse drug reactions). Conventional biological investigations can validate these new associations and predictions, derive mechanistic insight, and perform detailed biochemical kinetics analyses. This empirical data can be incorporated into quantitative pharmacometric models. Population pharmacokinetics (POP PK) top down modelling is tightly fitted to empirical data. However physiologically based PK (PBPK) coupled with in vitro–in vivo extrapolation (IVIVE) and enhanced pharmacodynamics (ePD) modelling are more bottom up, using empirical data where available and assumptions when necessary. Model simulations and assumptions will drive further empirical experimentation, leading to an iterative process of model development and refinement. Through combining detailed PBPK-IVIVE and ePD models that are adequately fitted to empirical data, systems pharmacology multiscale models with adequate predictive power to facilitate precision medicine will hopefully be developed.
Examples of Drug, Human Body Level, and Environmental Factors Associated with Interindividual Drug Response Variability
| Example | |||
|---|---|---|---|
| Factor Classification | Factor | Effect | Reference |
| Drug-delivery | Diltiazem single versus dual microbead oral delivery | ↑ AUC + | Ref. |
| Drug regimen | Variable adherence to medication (e.g., long-term statin therapy) | ↑ risk of cardiovascular events with reduced statin adherence | Ref. |
| Genome | |||
| On-target | Tumour Bcr-Abl T315I | ↑ imatinib resistance | Ref. |
| ↓ WSD requirements | Ref. | ||
| ↑ WSD requirements | Refs | ||
| Off-target | ↑ risk of abacavir hypersensitivity syndrome | Refs | |
| DME function | ↓ WSD requirements; ↑ risk of haemorrhage ( | Refs | |
| ↓ tacrolimus dose requirements | Ref. | ||
| ↓ tacrolimus dose requirements | Ref. | ||
| ↓ dose-adjusted tacrolimus trough levels | Ref. | ||
| XTs | ↑ risk of simvastatin-induced myopathy; ↑ plasma exposure of several statins including simvastatin acid + rosuvastatin | Refs | |
| ↓ absorption of simvastatin | Ref. | ||
| Transcription factors | ↑ tacrolimus dose-adjusted trough blood concentration | Ref. | |
| Epigenome | |||
| DNA methylation | Associated with CYP3A4 mRNA expression | Ref. | |
| Clinical nonresponse to 5-FU in colorectal cancer | Ref. | ||
| ↑ overall survival with PCV chemotherapy in gliomas | Ref. | ||
| MicroRNA | ↑ miR-519a expression | ↓ tamoxifen-induced apoptosis; ↓ disease-free survival in oestrogen receptor positive breast cancer | Ref. |
| Proteome | |||
| Protein synthesis regulation | ↑ inflammatory cytokines (e.g., IL-6) | ↓ transcription of hepatic DMEs/XTs | Ref. |
| Serum protein levels | Multivariate protein test based on eight serum mass spectra intensity levels | Associated with overall survival outcomes with erlotinib | Ref. |
| Metabolome | |||
| Purine metabolism | Inosine and adenosine levels | ↑ in aspirin poor responders | Ref. |
| Tissue/organ | |||
| Anatomical | ↑ adiposity | ↑ distribution of lipophilic drugs into fatty tissue | |
| Small liver/kidney (e.g., infant) | ↓ drug metabolism/excretion | ||
| Physiological | ↑ intestinal transit time | ↓ predicted oral absorption of poorly soluble/low permeability/slow release drugs | Ref. |
| Pathophysiological | Clinical liver or kidney disease | ↓ drug metabolism/excretion | |
| Altered blood flow | Precedes hepatocellular injury in paracetamol hepatotoxicity | Ref. | |
| Iatrogenic | Gastrectomy | ↑ AUC + | Ref. |
| Drugs, smoking, and concomitant food intake | PD interaction | Verapamil/beta blocker interaction to ↑ bradycardia/hypotension | |
| Absorption | ↓ levothyroxine absorption by e.g., iron, calcium, sevelamer | Ref. | |
| DME and XT inhibition | Grapefruit juice inhibits intestinal CYP3A4; Saquinavir/ritonavir inhibit CYP3A4 and OATP1B1 leading to ↑ simvastatin acid AUC + | Refs | |
| DME and XT induction | ↑ CYP3A4/3A5 by carbamazepine; ↑ CYP2B6, 2C8, 2C9, 2C19, 3A4/3A5, ABCB1, and specific phase II enzymes (e.g., UGT1A1) with chronic rifampicin; ↑ CYP1A1 and 1A2 by smoking | Refs | |
| UV exposure | CYP3A4 induction | Seasonal variation in duodenal CYP3A4 mRNA; Seasonal trend for variation in midazolam AUC | Ref. |
AUC, area under the plasma drug concentration time curve; Cmax, maximum plasma concentration; DME, drug-metabolizing enzyme; 5-FU, 5-fluorouracil; IL-6, Interleukin-6; PCV, procarbazine, CCNU and vincristine adjuvant chemotherapy regimen; S-1, composite drug of 5-FU, tegafur, and two 5-FU modulatory compounds; WSD, warfarin stable dose; XT, xenobiotic transporter.
CYP4F2 does do not directly interact with warfarin but rs2108622 indirectly affects warfarin pharmacodynamics.
Gene protein products do not directly interact with specified drug but genetic variants indirectly perturb drug pharmacokinetics.
Key Publically Available Data Resources that Can Be Utilized and Integrated for Systems Pharmacology Analyses
| Resource | Description | URL |
|---|---|---|
| Biological General Repository for Interaction Datasets (BioGRID) | Genetic and protein interaction data for different species including humans | |
| Cancer Target Discovery and Development (CTD | Cell line fitness following genetic or drug perturbation, and data from judicious animal model testing | |
| ChEMBL | Database of small molecule bioactivities | |
| Connectivity Map (CMAP) and Library of Integrated Network-based Cellular Signatures (LINCS L1000) | Human mostly cancer cell line gene expression signatures following drug or endogenous ligand perturbation | |
| DrugBank | Drug (chemical, pharmacological and pharmaceutical) and drug target information | |
| Encyclopedia of DNA Elements (ENCODE) | Genomic map of gene regulatory elements, including transcription factor and histone modification binding sites | |
| US Food and Drug Administration (FDA) Adverse Event Reporting System (FAERS) | Adverse events and medication errors submitted to the FDA | |
| Gene Expression Omnibus (GEO) | Gene expression signatures from cell lines and tissues following genetic or drug perturbation | |
| Gene Ontology (GO) | Species-independent functional annotation of gene products by associated biological processes, cellular components and molecular functions | |
| Genomics of Drug Sensitivity in Cancer | Fitness of multiple cancer cell lines to drug perturbation, correlated to cell line genomic and expression data | |
| Genotype-Tissue Expression Project (GTEx) | Expression quantitative trait loci (eQTL), derived from expression signatures of multiple human tissues | |
| Interactome3D | Protein-protein interaction network with structural annotations | |
| International Mouse Phenotype Consortium (IMPC) | Systematic determination of gene knockout-mouse phenotype associations | |
| Kyoto Encyclopedia of Genes and Genomes (KEGG) | Biological molecular interaction pathways/systems, genomic, chemical and drug related information | |
| The miRNA Pharmacogenomics Database (PharmacomiR) | Literature-derived miRNA pharmacogenomic data | |
| Online Mendelian Inheritance in Man (OMIM) | Compendium of all known mendelian disorders and multifactorial diseases with a genetic component, focusing on genotype-phenotype associations | |
| The Pharmacogenomics Knowledgebase (PharmGKB) | Clinical drug information, gene-drug and genotype-phenotype associations | |
| Protein Data Bank (PDB) | Three-dimensional structural information of large biological molecules, predominantly proteins, from multiple species | |
| Roadmap Epigenomics | Development toward reference epigenomes for a range of human cells | |
| Side Effect Resource (SIDER) | Recorded ADRs of marketed drugs | |
| Therapeutic Targets Database (TTD) | Established and exploratory drug target data, corresponding drug data and links to associated targeted pathways and diseases |
FIGURE 3Overview of the main pharmacokinetic modelling methods. (a) Noncompartmental analysis is the preferred method to determine overall drug exposure (i.e., AUC), using the trapezoidal rule, and other pharmacokinetic parameters (e.g., Cmax, clearance, elimination half-life, etc.) as it involves few assumptions.84 (b) Compartmental and (c) physiologically based pharmacokinetic models (PBPK) are constructed from compartments that are interconnected using differential equations that describe drug flow between model constituents. Conventional compartmental models are constructed from one or more compartments that are descriptive, rather than mechanistically representative; the final model is parsimonious and compartments are only included if they noticeably improve the final model fit to the empirical data. PBPK models include multiple compartments that represent actual physiology (i.e., organs and blood), incorporate data from more diverse sources, and if properly validated can be used to make PK predictions and extrapolations for circumstances (e.g., different doses or routes of administration) beyond those used to construct the model.85 (Reprinted with permission from Ref. 86; Copyright 2013.