Coronary artery disease is detectable by multi-slice computed tomography in most asymptomatic type 2 diabetic patients at high cardiovascular risk

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Abstract

Objective: Non-invasive testing often does not identify coronary artery disease (CAD) in diabetic subjects. This study was designed in order to examine the prevalence of CAD in a cohort of asymptomatic type 2 diabetic patients at high cardiovascular risk and negative nuclear imaging, using multi-slice computed tomography (MSCT) angiography. Methods: In total, 770 type 2 diabetic patients were screened from January 2008 through July 2010. Of these, 132 Caucasians with diabetic nephropathy and asymptomatic for angina were eligible for a cross-sectional study. Patients underwent MSCT after ischaemia was excluded by myocardial Single Photon Emission Computed Tomography (SPECT) at rest and after dynamic exercise. When obstructive plaques were found (≥50% lumen narrowing), patients were sent to conventional coronary angiography (CCA).Results: Six subjects were not included in the analysis because of motion artefacts. MSCT was positive for CAD in 114 patients (90%). Within patients with positive MSCT, 60 (48% of all) showed one or more obstructive plaques. CCA confirmed significant stenosis (≥50%) in 48 of these 60 patients (80%). Some 21 (35%) showed stenosis ≥75% and were submitted to the revascularisation procedure.Conclusion: MSCT seems to better identify CAD than myocardial SPECT in asymptomatic patients with type 2 diabetes and diabetic nephropathy. © SAGE Publications 2011.

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Nasti, R., Carbonara, O., Di Santo Stefano, M. L. M., Auriemma, R., Esposito, S., Picardi, G., … Sasso, F. C. (2012). Coronary artery disease is detectable by multi-slice computed tomography in most asymptomatic type 2 diabetic patients at high cardiovascular risk. Diabetes and Vascular Disease Research, 9(1), 10–17. https://doi.org/10.1177/1479164111426439

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