| Literature DB >> 33528719 |
E F Magavern1,2, J C Kaski3, R M Turner4,5, A Janmohamed6, P Borry7,8, M Pirmohamed4,5,9.
Abstract
Pharmacogenomics has a burgeoning role in cardiovascular medicine, from warfarin dosing to antiplatelet choice, with recent developments in sequencing bringing the promise of personalised medicine ever closer to the bedside. Further scientific evidence, real-world clinical trials, and economic modelling are needed to fully realise this potential. Additionally, tools such as polygenic risk scores, and results from Mendelian randomisation analyses, are only in the early stages of clinical translation and merit further investigation. Genetically targeted rational drug design has a strong evidence base and, due to the nature of genetic data, academia, direct-to-consumer companies, healthcare systems, and industry may meet in an unprecedented manner. Data sharing navigation may prove problematic. The present manuscript addresses these issues and concludes a need for further guidance to be provided to prescribers by professional bodies to aid in the consideration of such complexities and guide translation of scientific knowledge to personalised clinical action, thereby striving to improve patient care. Additionally, technologic infrastructure equipped to handle such large complex data must be adapted to pharmacogenomics and made user friendly for prescribers and patients alike.Entities:
Keywords: Mendelian randomisation; Pharmacogenomics; Risk scores; Therapeutics
Mesh:
Year: 2021 PMID: 33528719 PMCID: PMC7851637 DOI: 10.1007/s10557-021-07149-3
Source DB: PubMed Journal: Cardiovasc Drugs Ther ISSN: 0920-3206 Impact factor: 3.727
Fig. 1Overview of PGx pillars and tools in supporting translation to clinical prescribing
Cardiovascular drug-gene pairs with actionable therapeutic recommendations in a pharmacogenomics guideline
| Drug | Gene | Guideline | PharmGKB evidence | |||
|---|---|---|---|---|---|---|
| CPIC | DPWG | CPNDS | RNPGx | |||
| Acenocoumarol | ✓ | ✓ | Level 1A | |||
| ✓ | Level 1B | |||||
| Atorvastatin | ✓ | Level 3 | ||||
| Clopidogrel | ✓ | ✓ | ✓ | Level 1A | ||
| Daunorubicin and Doxorubicin | ✓ | Level 3 | ||||
| ✓ | Level 3 | |||||
| ✓ | Level 3 | |||||
| Flecainide | ✓ | Level 2A | ||||
| Fluindione | ✓ | Level 3 | ||||
| ✓ | ND | |||||
| Metoprolol | ✓ | Level 2A | ||||
| Phenprocoumon | ✓ | Level 1A | ||||
| Propafenone | ✓ | Level 2A | ||||
| Simvastatin | ✓ | ✓ | ✓ | Level 1A | ||
| Warfarin | ✓ | ✓ | ✓ | ✓ | Level 1A | |
| ✓ | ✓ | ✓ | ✓ | Level 1A | ||
| ✓ | Level 1A | |||||
| rs12777823 | ✓ | Level 1A | ||||
Extended from Dávila-Fajardo et al. [6]
CPIC, the Clinical Implementation Pharmacogenetics Consortium; CPNDS, the Canadian Pharmacogenomics Network for Drug Safety; DPWG, the Royal Dutch Association for the Advancement of Pharmacy-Pharmacogenetics Working Group; ND, not done; RNPGx, the French National Network of Pharmacogenetics
PharmGKB levels of evidence range from 1A (e.g. drug-variant pair is in a CPIC or medical society-endorsed pharmacogenomics guideline) to 4 (evidence based on a case report, non-significant study or in vitro evidence only) [7]