Abstract

BackgroundSerial electrocardiography aims to contribute to electrocardiogram (ECG) diagnosis by comparing the ECG under consideration with a previously made ECG in the same individual. Here, we present a novel algorithm to construct dedicated deep-learning neural networks (NNs) that are specialized in detecting newly emerging or aggravating existing cardiac pathology in serial ECGs.MethodsWe developed a novel deep-learning method for serial ECG analysis and tested its performance in detection of heart failure in post-infarction patients, and in the detection of ischemia in patients who underwent elective percutaneous coronary intervention. Core of the method is the repeated structuring and learning procedure that, when fed with 13 serial ECG difference features (intra-individual differences in: QRS duration; QT interval; QRS maximum; T-wave maximum; QRS integral; T-wave integral; QRS complexity; T-wave complexity; ventricular gradient; QRS-T spatial angle; heart rate; J-point amplitude; and T-wave symmetry), dynamically creates a NN of at most three hidden layers. An optimization process reduces the possibility of obtaining an inefficient NN due to adverse initialization.ResultsApplication of our method to the two clinical ECG databases yielded 3-layer NN architectures, both showing high testing performances (areas under the receiver operating curves were 84% and 83%, respectively).ConclusionsOur method was successful in two different clinical serial ECG applications. Further studies will investigate if other problem-specific NNs can successfully be constructed, and even if it will be possible to construct a universal NN to detect any pathologic ECG change.

Highlights

  • Serial electrocardiography aims to contribute to electrocardiogram (ECG) diagnosis by comparing the ECG under consideration with a previously made ECG in the same individual

  • Serial electrocardiography is defined as the comparison of a newly made ECG

  • Visual comparison of two ECGs is normally performed by cardiologists in order to evaluate the aggravation of a cardiac pathology, studies reporting systematic application of approaches developed for serial ECG analysis are still quite sporadic

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Summary

Introduction

Serial electrocardiography aims to contribute to electrocardiogram (ECG) diagnosis by comparing the ECG under consideration with a previously made ECG in the same individual. We present a novel algorithm to construct dedicated deep-learning neural networks (NNs) that are specialized in detecting newly emerging or aggravating existing cardiac pathology in serial ECGs. The standard 10-s 12-lead electrocardiogram (ECG) is a diagnostic cornerstone of medicine. Serial electrocardiography is defined as the comparison of a newly made ECG with a previously made one, to look for possible changes. These changes are either used to detect new pathology or to verify the efficacy of a specific therapy or intervention. Visual comparison of two ECGs is normally performed by cardiologists in order to evaluate the aggravation of a cardiac pathology, studies reporting systematic application of approaches developed for serial ECG analysis are still quite sporadic. Systematic serial ECG analysis has been previously applied to reveal pulmonary valve dysfunction in Fallot patients [1, 2] and to support the diagnosis of patients with suspected acute coronary syndrome [3]

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