Abstract

BackgroundRisk prediction models are commonly used in practice to inform decisions on patients’ treatment. Uncertainty around risk scores beyond the confidence interval is rarely explored. We conducted an uncertainty analysis of the QRISK prediction tool to evaluate the robustness of individual risk predictions with varying modelling decisions.MethodsWe derived a cohort of patients eligible for cardiovascular risk prediction from the Clinical Practice Research Datalink (CPRD) with linked hospitalisation and mortality records (N = 3,855,660). Risk prediction models were developed using the methods reported for QRISK2 and 3, before adjusting for additional risk factors, a secular trend, geographical variation in risk and the method for imputing missing data when generating a risk score (model A–model F). Ten-year risk scores were compared across the different models alongside model performance metrics.ResultsWe found substantial variation in risk on the individual level across the models. The 95 percentile range of risks in model F for patients with risks between 9 and 10% according to model A was 4.4–16.3% and 4.6–15.8% for females and males respectively. Despite this, the models were difficult to distinguish using common performance metrics (Harrell’s C ranged from 0.86 to 0.87). The largest contributing factor to variation in risk was adjusting for a secular trend (HR per calendar year, 0.96 [0.95–0.96] and 0.96 [0.96–0.96]). When extrapolating to the UK population, we found that 3.8 million patients may be reclassified as eligible for statin prescription depending on the model used. A key limitation of this study was that we could not assess the variation in risk that may be caused by risk factors missing from the database (such as diet or physical activity).ConclusionsRisk prediction models that use routinely collected data provide estimates strongly dependent on modelling decisions. Despite this large variability in patient risk, the models appear to perform similarly according to standard performance metrics. Decision-making should be supplemented with clinical judgement and evidence of additional risk factors. The largest source of variability, a secular trend in CVD incidence, can be accounted for and should be explored in more detail.

Highlights

  • Risk prediction models are commonly used in practice to inform decisions on patients’ treatment

  • For models B–F, we provide histograms to illustrate the distribution of risks for patients from the same group, report the 2.5– 97.5 percentile range for each group and report the proportion of patients from each group with a risk above or below 10%, which is the threshold for being eligible for a statin prescription in England [4]

  • Sensitivity analyses We found a large effect of a secular trend in cardiovascular disease (CVD) incidence, resulting in 56% of the patients from the 2016 cohort to be reclassified from above to below the statin treatment threshold of 10%

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Summary

Introduction

Risk prediction models are commonly used in practice to inform decisions on patients’ treatment. Risk prediction models have become an important part of clinical decision-making They provide a quick and simple way to assess a patient’s risk of a given disease or particular event which can guide treatment. There have been recent initiatives of promoting public use of similar tools with completing of online questionnaires and provision of individual estimates of ‘Heart Age’ [5, 6]. This has resulted in considerable publicity and concern as four-fifths of those that participated were found to have a heart age which exceeded their chronological age [7, 8], when in reality this is probably not true. The public availability of these algorithms contradicts the NICE guidance, which emphasises the approximate nature of these algorithms when applied to a specific patient and the need for interpreting the risk scores alongside informed clinical judgement [4]

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