Biomarkers for cardiovascular risk prediction in people with type 2 diabetes
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Abstract
Introduction: Type 2 diabetes continues to be one of the most common non-communicable
diseases worldwide and complications due to type 2 diabetes, such as cardiovascular disease
(CVD) can cause severe disability and even death. Despite advances in the development and
validation of cardiovascular risk scores, those used in clinical practice perform inadequately
for people with type 2 diabetes. Research has suggested that particular non-traditional
biomarkers and novel omics data may provide additional value to risk scores over-and-above
traditional predictors.
Aims: To determine whether a small panel of non-traditional biomarkers improve prediction
models based on a current cardiovascular risk score (QRISK2), either individually or in
combination, in people with type 2 diabetes. Furthermore, to investigate a set of 228
metabolites and their associations with CVD, independent of well-established cardiovascular
risk factors, in order to identify potential new predictors of CVD for future research.
Methods: Analyses used the Edinburgh Type 2 Diabetes Study (ET2DS), a prospective
cohort of 1066 men and women with type 2 diabetes aged 60-75 years at baseline.
Participants were followed for eight years, during which time 205 had a cardiovascular event.
Additionally, for omics analyses, four cohorts from the UCL-LSHTM-Edinburgh-Bristol
(UCLEB) consortium were combined with the ET2DS. Across all studies, 1005 (44.73%)
participants had CVD at baseline or experienced a cardiovascular event during follow-up.
Results: In the ET2DS, higher levels of high sensitivity cardiac troponin (hs-cTnT) and N-terminal
pro-brain natriuretic peptide (NT-proBNP) and lower levels of ankle brachial
pressure index (ABI) were associated with incident cardiovascular events, independent of
QRISK2 and pre-existing cardiovascular disease (odds ratios per one SD increase in
biomarker 1.35 (95% CI: 1.13, 1.61), 1.23 (1.02, 1.49) and 0.86 (0.73, 1.00) respectively).
The addition of each biomarker to a model including just QRISK2 variables improved the c-statistic,
with the biggest increase for hs-cTnT (from 0.722 (0.681, 0.763) to 0.732 (0.690,
0.774)). When multiple biomarkers were considered in combination, the greatest c-statistic
was found for a model which included ABI, hs-cTnT and gamma-glutamyl transpeptidase
(0.740 (0.699, 0.781)).
In the combined cohorts from the UCLEB consortium, a small number of high-density
lipoprotein (HDL) particles were found to be significantly associated with CVD:
concentration of medium HDL particles, total lipids in medium HDL, phospholipids in
medium HDL and phospholipids in small HDL. These associations persisted after adjustment
for a range of traditional cardiovascular risk factors including age, sex, blood pressure,
smoking and HDL to total cholesterol ratio.
Conclusions: In older people with type 2 diabetes, a range of non-traditional biomarkers
increased predictive ability for cardiovascular events over-and-above the commonly used
QRISK2 score, and a combination of biomarkers may provide the best improvement.
Furthermore, a small number of novel omics biomarkers were identified which may further
improve risk scores or provide better prediction than traditional lipid measurements such as
HDL cholesterol.
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