| Literature DB >> 31591509 |
Ye Zhu1,2, Kristi M Swanson1, Ricardo L Rojas3, Zhen Wang1,4, Jennifer L St Sauver1,5, Sue L Visscher1, Larry J Prokop6, Suzette J Bielinski5, Liewei Wang7, Richard Weinshilboum7, Bijan J Borah8,9.
Abstract
PURPOSE: To examine the evidence on the cost-effectiveness of implementing pharmacogenomics (PGx) in cardiovascular disease (CVD) care.Entities:
Keywords: cardiovascular disease; cost-effectiveness; disease management; economic evaluation; pharmacogenomics
Mesh:
Substances:
Year: 2019 PMID: 31591509 PMCID: PMC7056639 DOI: 10.1038/s41436-019-0667-y
Source DB: PubMed Journal: Genet Med ISSN: 1098-3600 Impact factor: 8.822
Fig. 1Flowchart of the literature screening. *Exclusion criteria: 1) non-english study. 2) full text not available. 3) article types: conference paper/abstract, comment, review, short survey, editorial, note, letter, legal case, congress, newspaper articles, book chapter, guideline, erratum, study protocols. 4) not relevant to pharmacogenomics, e.g. genetic diagnostic testing, 5) no economic evaluation, 6) not cardiovascular diseases, 7) intervention not applied to human subjects.
Summary of study characteristics and strategies (N = 46)
| Study characteristics | |
|---|---|
| Year | |
| 2004–2008 | 5 (11%) |
| 2009–2013 | 15 (33%) |
| 2014–2018 | 26 (56%) |
| Countrya | |
| United States | 21 (46%) |
| Netherlands | 6 (13%) |
| Canada | 4 (9%) |
| Australia | 2 (4%) |
| Other countries/regionsb | 10 (22%) |
| No statement | 3 (7%) |
| Disease diagnosis or indication | |
| Acute coronary syndrome (ACS) | 13 (28%) |
| Atrial fibrillation (AF) | 14 (30%) |
| Other diseases/patient subgroupsc | 13 (28%) |
| No statement | 6 (13%) |
| Drug category (associated genes) | |
| P2Y12 inhibitors ( | 16 (35%) |
| Antithrombotic ( | 20 (43%) |
| ACEIs ( | 2 (4%) |
| Statin (and ezetimibe) ( | 4 (9%) |
| Drug panels | 2 (4%) |
| Othersd | 2 (4%) |
| Testing timing | |
| After treatment plan made | 42 (91%) |
| After treatment started | 2 (4%) |
| Pre-emptive | 1 (2%) |
| No statement | 1 (2%) |
| Funding support | |
| Public | 17 (37%) |
| Nonprofit organization (NPO) | 2 (4%) |
| Private | 5 (11%) |
| Combinationse | 7 (15%) |
| None | 7 (15%) |
| No statement | 8 (17%) |
| Cohort type | |
| Hypothetical | 41 (89%) |
| Observational | 1 (2%) |
| Randomized controlled trial | 4 (9%) |
| Perspective | |
| Payerf | 18 (39%) |
| Health-care provider | 8 (17%) |
| Societal | 4 (9%) |
| Health-care system | 10 (22%) |
| No statement | 6 (13%) |
| Time horizon | |
| Lifetime | 17 (37%) |
| ≥20 years | 8 (17%) |
| 3–10 years | 2 (4.3%) |
| ≤3 years | 13 (28%) |
| Othersg | 2 (4%) |
| No statement | 4 (9%) |
| Type of analysis | |
| Cost–utility analysis | 43 (93%) |
| Cost–benefit analysis | 1 (2%) |
| Othersh | 2 (4%) |
| Patient age range | |
| ≥60 years old | 22 (48%) |
| <60 years old | 5 (11%) |
| Not specified | 19 (41%) |
This table included all the studies while some categories did not add up to 100% due to rounding.
ACEIs angiotensin-converting enzyme inhibitors.
aThe country of the study target population.
bOther countries/regions including Serbia, China, Croatia, Europe, Korea, New Zealand, Slovenia, Thailand, UK, UK and Sweden, United States and Canada. Each had one study reported.
cOther diseases or subgroups defined in the studies including arterial sclerosis cardiovascular disease, acute ischemic stroke, chronic heart disease, chronic heart failure, cardiovascular disease (general), coronary artery disease, stable coronary artery disease, hypertension, ST-elevated myocardial infarction, stroke, and acute myocardial infarction. Two studies limited analysis to those undergoing specific procedures (mechanical heart valve replacement and percutaneous coronary intervention (PCI)).
dOther drug categories: ivabradine and diuretics.
eCombinations of funding support including public and NPO, private and NPO, public and private.
fPayer perspective including both public payer and private payer.
gStudy follow-up time was designed from a certain starting date to finishing date, and varied for each individual.
hOther types including descriptive summary and simulation estimation of costs.
Fig. 2Cost categories included in the study. Costs included in the studies were categorized into these major types: pharmacogenomics (PGx) testing, other types of testing (e.g., international normalized ratio [INR] monitoring, platelet function tests), medications (e.g., warfarin, clopidogrel), event-related costs (e.g., bleeding, stroke), postevent-related costs (long-term management costs), no-events costs (medical care costs for patients without adverse events), all-cause costs (any costs occurred after the treatment was initiated), and indirect costs (e.g., transportation, food). Several studies did not report the cost categories used in the calculation.
Evidence map of study conclusions regarding the cost-effectiveness of PGx-guided testing
ACEl angiotensin-converting enzyme inhibitor, NOAC novel oral anticoagulant, PGx pharmacogenomics.
aThe size of the pie chart reflects the number of studies captured, and the shaded area reflects the proportion of studies that reported PGx-guided treatments to be cost-effective. Cells that are empty suggest that no evidence was found for the drug from the corresponding perspective.
bCoumarin derivatives, including phenprocoumon and acenocoumarol.
cIncludes direct factor Xa inhibitors (apixaban, rivaroxaban, darexaban, edoxaban), direct thrombin inhibitors (dabigatran).
Fig. 3Comparison of cost-effectiveness with selected study characteristics. a Perspectives held in the studies, including payer (both public and private), provider, societal, and health-care system. Studies that did not report the perspectives used were categorized as no statement. b Funding support types. Combination types included private + public, public + nonprofit organization (NPO), and private + NPO. c Country/regions of the study population. Other countries/regions included Serbia, China, Croatia, Europe, Korea, New Zealand, Slovenia, Thailand, UK, UK and Sweden, United States and Canada. PGx pharmacogenomics.