Integration of clinical and imaging data to predict the presence of coronary artery disease with the use of neural networks
AIMTo establish proof of the principle that a computer-based neural network method can be employed that will enhance diagnostic accuracy vis-à-vis image analysis alone in the interpretation of treadmill exercise tests performed in conjunction with myocardial perfusion imaging. MATERIALS AND METHODSO...
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Veröffentlicht in: | Coronary artery disease 2004-11, Vol.15 (7), p.427-434 |
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Sprache: | eng |
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Zusammenfassung: | AIMTo establish proof of the principle that a computer-based neural network method can be employed that will enhance diagnostic accuracy vis-à-vis image analysis alone in the interpretation of treadmill exercise tests performed in conjunction with myocardial perfusion imaging.
MATERIALS AND METHODSOne-hundred-and-two patients underwent myocardial perfusion imaging in association with the standard Bruce protocol. Twenty objective parameters describing each patientʼs exercise physiology, general clinical status and image appearance were used to train an artificial neural network. Classification accuracy of the neural network and clinical interpretation was determined by coronary angiography. We evaluated the ability of the neural network to integrate clinical, exercise and imaging data to determine the likelihood of coronary artery disease and compared these results with an optimized method of clinical image interpretation, which made use of all available clinical, angiographic and stress test data.
RESULTSThe artificial neural network had a sensitivity of 88% and a specificity of 65% for detection of ischemic heart disease and was comparable to that of the optimized clinical method (sensitivity 80%, specificity 69%). Incorporation of clinical and exercise data significantly improved the predictive accuracy of the network compared to a network based on image data alone (P |
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ISSN: | 0954-6928 1473-5830 |
DOI: | 10.1097/00019501-200411000-00010 |