Literature DB >> 30010781

Development and validation of alternative cardiovascular risk prediction equations for population health planning: a routine health data linkage study of 1.7 million New Zealanders.

Suneela Mehta1, Rod Jackson1, Romana Pylypchuk1, Katrina Poppe1, Sue Wells1, Andrew J Kerr1,2.   

Abstract

Background: Cardiovascular disease (CVD) risk prediction equations are primarily used in clinical settings to inform individual risk management decisions. We sought to develop and validate alternative equations derived solely from linked routinely collected national health data that could be applied countrywide to inform population health planning.
Methods: Individual-level linkage of eight administrative health datasets identified all New Zealand residents aged 30-74 years in contact with publicly funded health services during 2006 with no previous hospitalizations for CVD or heart failure, and with complete data on eight pre-specified predictors. The linked health datasets encompassed demographic characteristics, hospitalizations, outpatient visits, primary care enrolment, primary care reimbursement, community laboratory requests, community pharmaceutical dispensing and mortality. Sex-specific Cox models were developed to estimate the risk of CVD death or hospitalization within 5 years and included sex, age, ethnicity, level of deprivation, diabetes, previous hospitalization for atrial fibrillation and baseline preventive pharmacotherapy (blood-pressure-lowering, lipid-lowering and antiplatelet/anticoagulant medications) as predictors. Calibration and discrimination were assessed in the whole cohort, in 15-year age bands, in different ethnic groups, in quintiles of deprivation, according to baseline dispensing of pharmacotherapy, and in regional sub-populations.
Results: First CVD events occurred in 62 031 of the 1 746 695 people during 8 526 024 person-years of follow-up (mean = 4.8 years). Median 5-year CVD risk was 1.1% in women and 2.6% in men. In both sexes, the risk equations were well calibrated throughout the risk range and had good risk discrimination in the national, regional and ethnic populations, within 15-year age bands, in deprivation quintiles and according to baseline medication dispensing. Conclusions: Robust policy-focused CVD risk equations can be developed solely from administrative health data to inform population health planning, and will complement CVD primary prevention at the individual level using clinical risk tools. Similar policy-focused equations could be replicated in countries and regions with linked administrative health datasets.

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Year:  2018        PMID: 30010781     DOI: 10.1093/ije/dyy137

Source DB:  PubMed          Journal:  Int J Epidemiol        ISSN: 0300-5771            Impact factor:   7.196


  5 in total

1.  Prediction of first cardiovascular disease event in 2.9 million individuals using Danish administrative healthcare data: a nationwide, registry-based derivation and validation study.

Authors:  Daniel Mølager Christensen; Matthew Phelps; Thomas Gerds; Morten Malmborg; Anne-Marie Schjerning; Jarl Emanuel Strange; Mohamad El-Chouli; Lars Bruun Larsen; Emil Fosbøl; Lars Køber; Christian Torp-Pedersen; Suneela Mehta; Rod Jackson; Gunnar Gislason
Journal:  Eur Heart J Open       Date:  2021-08-02

2.  Development and Validation of a Machine Learning Model Using Administrative Health Data to Predict Onset of Type 2 Diabetes.

Authors:  Mathieu Ravaut; Vinyas Harish; Hamed Sadeghi; Kin Kwan Leung; Maksims Volkovs; Kathy Kornas; Tristan Watson; Tomi Poutanen; Laura C Rosella
Journal:  JAMA Netw Open       Date:  2021-05-03

3.  Predicting cardiovascular risk from national administrative databases using a combined survival analysis and deep learning approach.

Authors:  Sebastiano Barbieri; Suneela Mehta; Billy Wu; Chrianna Bharat; Katrina Poppe; Louisa Jorm; Rod Jackson
Journal:  Int J Epidemiol       Date:  2022-06-13       Impact factor: 9.685

4.  Predicting adverse outcomes due to diabetes complications with machine learning using administrative health data.

Authors:  Mathieu Ravaut; Hamed Sadeghi; Kin Kwan Leung; Maksims Volkovs; Kathy Kornas; Vinyas Harish; Tristan Watson; Gary F Lewis; Alanna Weisman; Tomi Poutanen; Laura Rosella
Journal:  NPJ Digit Med       Date:  2021-02-12

5.  Data Resource: Vascular Risk in Adult New Zealanders (VARIANZ) datasets.

Authors:  S Mehta; R Jackson; D J Exeter; B P Wu; S Wells; A J Kerr
Journal:  Int J Popul Data Sci       Date:  2019-09-02
  5 in total

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