Self-Report Tool for Identification of Individuals With Coronary Atherosclerosis : The Swedish CardioPulmonary BioImage Study

Background: Coronary atherosclerosis detected by imaging is a marker of elevated cardiovascular risk. However, imaging involves large resources and exposure to radiation. The aim was, therefore, to test whether nonimaging data, specifically data that can be self-reported, could be used to identify i...

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Hauptverfasser: Bergström, Göran, Hagberg, Eva, Björnson, Elias, Adiels, Martin, Bonander, Carl, Strömberg, Ulf, Andersson, Jonas, Brunström, Mattias, Carlhäll, Carl-Johan, Engström, Gunnar, Erlinge, David, Goncalves, Isabel, Gummesson, Anders, Hagström, Emil, Hjelmgren, Ola, James, Stefan, Janzon, Magnus, Jonasson, Lena, Lind, Lars, Magnusson, Martin, Oskarsson, Viktor, Sundström, Johan, Svensson, Per, Söderberg, Stefan, Themudo, Raquel, Östgren, Carl Johan, Jernberg, Tomas
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Sprache:eng
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Zusammenfassung:Background: Coronary atherosclerosis detected by imaging is a marker of elevated cardiovascular risk. However, imaging involves large resources and exposure to radiation. The aim was, therefore, to test whether nonimaging data, specifically data that can be self-reported, could be used to identify individuals with moderate to severe coronary atherosclerosis. Methods and Results: We used data from the population-based SCAPIS (Swedish CardioPulmonary BioImage Study) in individuals with coronary computed tomography angiography (n=25 182) and coronary artery calcification score (n=28 701), aged 50 to 64 years without previous ischemic heart disease. We developed a risk prediction tool using variables that could be assessed from home (self-report tool). For comparison, we also developed a tool using variables from laboratory tests, physical examinations, and self-report (clinical tool) and evaluated both models using receiver operating characteristic curve analysis, external validation, and benchmarked against factors in the pooled cohort equation. The self-report tool (n=14 variables) and the clinical tool (n=23 variables) showed high-to-excellent discriminative ability to identify a segment involvement score >= 4 (area under the curve 0.79 and 0.80, respectively) and significantly better than the pooled cohort equation (area under the curve 0.76, P= 4 in the top 30% of the highest-risk individuals. Tools developed for coronary artery calcification score >= 100 performed similarly. Conclusions: We have developed a self-report tool that effectively identifies individuals with moderate to severe coronary atherosclerosis. The self-report tool may serve as prescreening tool toward a cost-effective computed tomography-based screening program for high-risk individuals.
DOI:10.1161/JAHA.124.034603