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Published in: Journal of Nuclear Cardiology 4/2023

09-01-2023 | Arterial Diseases | ORIGINAL ARTICLE

Machine learning based model to diagnose obstructive coronary artery disease using calcium scoring, PET imaging, and clinical data

Authors: J. A. van Dalen, PhD, S. S. Koenders, MSc, R. J. Metselaar, MSc, B. N. Vendel, MD, D. J. Slotman, MSc, M. Mouden, MD, PhD, C. H. Slump, PhD, J. D. van Dijk, MSc, PhD, MBA

Published in: Journal of Nuclear Cardiology | Issue 4/2023

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Abstract

Introduction

Accurate risk stratification in patients with suspected stable coronary artery disease is essential for choosing an appropriate treatment strategy. Our aim was to develop and validate a machine learning (ML) based model to diagnose obstructive CAD (oCAD).

Method

We retrospectively have included 1007 patients without a prior history of CAD who underwent CT-based calcium scoring (CACS) and a Rubidium-82 PET scan. The entire dataset was split 4:1 into a training and test dataset. An ML model was developed on the training set using fivefold stratified cross-validation. The test dataset was used to compare the performance of expert readers to the model. The primary endpoint was oCAD on invasive coronary angiography (ICA).

Results

ROC curve analysis showed an AUC of 0.92 (95% CI 0.90-0.94) for the training dataset and 0.89 (95% CI 0.84-0.93) for the test dataset. The ML model showed no significant differences as compared to the expert readers (p ≥ 0.03) in accuracy (89% vs. 88%), sensitivity (68% vs. 69%), and specificity (92% vs. 90%).

Conclusion

The ML model resulted in a similar diagnostic performance as compared to expert readers, and may be deployed as a risk stratification tool for obstructive CAD. This study showed that utilization of ML is promising in the diagnosis of obstructive CAD.
Appendix
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Metadata
Title
Machine learning based model to diagnose obstructive coronary artery disease using calcium scoring, PET imaging, and clinical data
Authors
J. A. van Dalen, PhD
S. S. Koenders, MSc
R. J. Metselaar, MSc
B. N. Vendel, MD
D. J. Slotman, MSc
M. Mouden, MD, PhD
C. H. Slump, PhD
J. D. van Dijk, MSc, PhD, MBA
Publication date
09-01-2023
Publisher
Springer International Publishing
Published in
Journal of Nuclear Cardiology / Issue 4/2023
Print ISSN: 1071-3581
Electronic ISSN: 1532-6551
DOI
https://doi.org/10.1007/s12350-022-03166-3

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