Early non-invasive diagnosis of Ischemic Heart Disease (IHD) can often be challenging. HRV features have a potentially important role in risk stratification for subjects with suspected heart disease. However , there is no consensus on the HRV preprocessing steps, particularly on how to properly treat ectopic beats.We aimed to investigate the performance of the models for classification of early IHD versus healthy subjects (HC) based on HRV features extracted from signals excluding ectopic beats and based on the same features extracted from the signals that contain both ectopic and normal heartbeats. This study encompassed 385 subjects (170 IHD and 215 HC). The models were produced by logistic regression method considering two sets of HRV features obtained by two preprocessing approaches. The results showed that the model with the input features from HRV signals including normal and ectopic beats presented a higher classification accuracy (72.7%) than the model based on features extracted only from normal heart beats (67.8%). In addition, the evaluation of the feature importance by analysis of produced nomograms and observed significant differences between features extracted with two preprocessing approaches, showed also that the exclusion of the ectopic beats modifies the features' discriminatory power between HC and IHD.
Does Ectopic Beats Bring More Discriminatory Information to Diagnose Ischemic Heart Disease?
Iscra, Katerina
;Miladinović, Aleksandar;Ajcevic, Miloš;Restivo, Luca;Kresevic, Simone;Merlo, Marco;Sinagra, Gianfranco;Accardo, Agostino
2022-01-01
Abstract
Early non-invasive diagnosis of Ischemic Heart Disease (IHD) can often be challenging. HRV features have a potentially important role in risk stratification for subjects with suspected heart disease. However , there is no consensus on the HRV preprocessing steps, particularly on how to properly treat ectopic beats.We aimed to investigate the performance of the models for classification of early IHD versus healthy subjects (HC) based on HRV features extracted from signals excluding ectopic beats and based on the same features extracted from the signals that contain both ectopic and normal heartbeats. This study encompassed 385 subjects (170 IHD and 215 HC). The models were produced by logistic regression method considering two sets of HRV features obtained by two preprocessing approaches. The results showed that the model with the input features from HRV signals including normal and ectopic beats presented a higher classification accuracy (72.7%) than the model based on features extracted only from normal heart beats (67.8%). In addition, the evaluation of the feature importance by analysis of produced nomograms and observed significant differences between features extracted with two preprocessing approaches, showed also that the exclusion of the ectopic beats modifies the features' discriminatory power between HC and IHD.Pubblicazioni consigliate
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