Analysing and improving the diagnosis of ischaemic heart disease with machine learning

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Ischaemic heart disease is one of the world’s most important causes of mortality, so improvements and rationalization of diagnostic procedures would be very useful. The four diagnostic levels consist of evaluation of signs and symptoms of the disease and ECG (electrocardiogram) at rest, sequential ECG testing during the controlled exercise, myocardial scintigraphy, and finally coronary angiography (which is considered to be the reference method). Machine learning methods may enable objective interpretation of all available results for the same patient and in this way may increase the diagnostic accuracy of each step. We conducted many experiments with various learning algorithms and achieved the performance level comparable to that of clinicians. We also extended the algorithms to deal with non-uniform misclassification costs in order to perform ROC analysis and control the trade-off between sensitivity and specificity. The ROC analysis shows significant improvements of sensitivity and specificity compared to the performance of the clinicians. We further compare the predictive power of standard tests with that of machine learning techniques and show that it can be significantly improved in this way.

论文关键词:Machine learning,Ishaemic heart disease,Cost-sensitive learning, ROC analysis,Feature subset selection

论文评审过程:Received 22 November 1997, Revised 7 May 1998, Accepted 7 July 1998, Available online 24 March 1999.

论文官网地址:https://doi.org/10.1016/S0933-3657(98)00063-3