Abstract

Background The T wave represents ECG repolarization, whose detection is required during myocardial ischemia, and the first significant change in the ECG signal is being observed in the ST segment followed by changes in other waves like P wave and QRS complex. To offer guidance in clinical diagnosis, decision-making, and daily mobile ECG monitoring, the T wave needs to be detected firstly. Recently, the sliding area-based method has received an increasing amount of attention due to its robustness and low computational burden. However, the parameter setting of the search window's boundaries in this method is not adaptive. Therefore, in this study, we proposed an improved sliding window area method with more adaptive parameter setting for T wave detection. Methods Firstly, k-means clustering was used in the annotated MIT QT database to generate three piecewise functions for delineating the relationship between the RR interval and the interval from the R peak to the T wave onset and that between the RR interval and the interval from the R peak to the T wave offset. Then, the grid search technique combined with 5-fold cross validation was used to select the suitable parameters' combination for the sliding window area method. Results With respect to onset detection in the QT database, F1 improved from 54.70% to 70.46% and 54.05% to 72.94% for the first and second electrocardiogram (ECG) channels, respectively. For offset detection, F1 also improved in both channels as it did in the European ST-T database. Conclusions F1 results from the improved algorithm version were higher than those from the traditional method, indicating a potentially useful application for the proposed method in ECG monitoring.

Highlights

  • Nowadays, an increase in the number of people suffering from heart diseases has been seen

  • In 2017, our team analyzed its efficiency in the QT database with a different evaluation index (F1 measure), and we found that there is still some space for further improvement since the parameter settings in the transitional sliding window area (SWA) method are not adaptive [34], and the parameters given by Zhang et al [31] and Song et al [32] are empiric values and there is no optimization step included

  • Our method got obviously better results when it is applied in T wave onsets detections

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Summary

Introduction

An increase in the number of people suffering from heart diseases has been seen. There are many classical methods for detecting QRS complex and most of the methods have been listed in [5], and the classical widely-used methods are parabolic fitting [6], neural-network-based method [7], and convolutional neural network [8]. Those methods for detecting the QRS complex have shown high sensitivity with positive predictivity (>99%) on the MIT-BIH arrhythmia database [9], which can provide powerful support for other waves’ detections

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