6533b871fe1ef96bd12d1956
RESEARCH PRODUCT
A multiple biomarker risk score for guiding clinical decisions using a decision curve approach.
Alun EvansVeikko SalomaaStefan BlankenbergTanja ZellerRenate B. SchnabelJohn YarnellOlli SaarelaFrank KeeAki S. HavulinnaKuulasmaa KariLaurence TiretMaria Hughessubject
AdultMalemedicine.medical_specialtyEpidemiologymedicine.drug_classBlood PressureDiseaseRisk AssessmentDecision Support TechniquesSex FactorsPredictive Value of TestsRisk FactorsInternal medicineTroponin INatriuretic Peptide BrainmedicineNatriuretic peptideHumansRisk thresholdProspective StudiesFramingham Risk Scorebusiness.industryTroponin IAge FactorsMiddle AgedPrognosisPeptide FragmentsSurgeryEuropeBlood pressureC-Reactive ProteinCholesterolCardiovascular DiseasesCohortBiomarker (medicine)FemaleCardiology and Cardiovascular MedicinebusinessBiomarkersdescription
Aims: We assessed whether a cardiovascular risk model based on classic risk factors (e.g. cholesterol, blood pressure) could refine disease prediction if it included novel biomarkers (C-reactive protein, N-terminal pro-B-type natriuretic peptide, troponin I) using a decision curve approach which can incorporate clinical consequences. Methods and results: We evaluated whether a model including biomarkers and classic risk factors could improve prediction of 10 year risk of cardiovascular disease (CVD; chronic heart disease and ischaemic stroke) against a classic risk factor model using a decision curve approach in two prospective MORGAM cohorts. This included 7739 men and women with 457 CVD cases from the FINRISK97 cohort; and 2524 men with 259 CVD cases from PRIME Belfast. The biomarker model improved disease prediction in FINRISK across the high-risk group (20⊟40%) but not in the intermediate risk group, at the 23% risk threshold net benefit was 0.0033 (95% CI 0.0013−0.0052). However, in PRIME Belfast the net benefit of decisions guided by the decision curve was improved across intermediate risk thresholds (10⊟20%). At pt = 10% in PRIME, the net benefit was 0.0059 (95% CI 0.0007⊟0.0112) with a net increase in 6 true positive cases per 1000 people screened and net decrease of 53 false positive cases per 1000 potentially leading to 5% fewer treatments in patients not destined for an event. Conclusion: The biomarker model improves 10-year CVD prediction at intermediate and high-risk thresholds and in particular, could be clinically useful at advising middle-aged European males of their CVD risk.
year | journal | country | edition | language |
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2011-07-20 | European journal of preventive cardiology |