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A pattern-recognition approach for lead-selection in heartbeat detection | IEEE Conference Publication | IEEE Xplore

A pattern-recognition approach for lead-selection in heartbeat detection


Abstract:

In this work, we developed and evaluated an algorithm for selecting the most suitable lead for performing heartbeat detection in ECG signals. For the development and eval...Show More

Abstract:

In this work, we developed and evaluated an algorithm for selecting the most suitable lead for performing heartbeat detection in ECG signals. For the development and evaluation we used a public dataset of 927 multilead (2-12 leads) stress-test recordings, with manually reviewed heartbeat locations. The algorithm consists of a pattern-recognition block based on features calculated from the RR interval sequence, and a mixture of Gaussian classifier. This block estimates whether the heartbeat is correctly detected, ommited or incorrectly detected. With these estimations, a detection quality index is calculated from the sensitivity (S) and positive predictive value (P+) of each lead. With this quality index a decision is made to choose the best lead. Results show that the correct lead has been selected in 70% of the recordings, and in 93% of the recordings the best lead was among the top 3 leads with higher detection quality index. Finally, the selection of the lead with higher quality index produces a gross median S of 100%, with percentile 5 at 99.6, and a gross median P+ of 98.9%, with percentile 5 at 89.2. The algorithm was developed and evaluated using ECG signals, but could be used with other cardiovascular signals as well, being suitable for automatically selecting the best lead/signal, or sorting them for further analysis or manual correction.
Date of Conference: 07-10 September 2014
Date Added to IEEE Xplore: 19 February 2015
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Conference Location: Cambridge, MA, USA

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