Mobile GPU-based implementation of automatic analysis method for long-term ECG

Abstract Background Long-term electrocardiogram (ECG) is one of the important diagnostic assistant approaches in capturing intermittent cardiac arrhythmias. Combination of miniaturized wearable holters and healthcare platforms enable people to have their cardiac condition monitored at home. The high...

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Main Authors: Xiaomao Fan, Qihang Yao, Ye Li, Runge Chen, Yunpeng Cai
Format: Article
Language:English
Published: BMC 2018-05-01
Series:BioMedical Engineering OnLine
Subjects:
Online Access:http://link.springer.com/article/10.1186/s12938-018-0487-3
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spelling doaj-ec7486f5020d4ca0b55b6320314d3a5e2020-11-24T21:38:49ZengBMCBioMedical Engineering OnLine1475-925X2018-05-0117111710.1186/s12938-018-0487-3Mobile GPU-based implementation of automatic analysis method for long-term ECGXiaomao Fan0Qihang Yao1Ye Li2Runge Chen3Yunpeng Cai4Shenzhen Institutes of Advanced Technology, Chinese Academy of SciencesShenzhen Institutes of Advanced Technology, Chinese Academy of SciencesShenzhen Institutes of Advanced Technology, Chinese Academy of SciencesShenzhen Institutes of Advanced Technology, Chinese Academy of SciencesShenzhen Institutes of Advanced Technology, Chinese Academy of SciencesAbstract Background Long-term electrocardiogram (ECG) is one of the important diagnostic assistant approaches in capturing intermittent cardiac arrhythmias. Combination of miniaturized wearable holters and healthcare platforms enable people to have their cardiac condition monitored at home. The high computational burden created by concurrent processing of numerous holter data poses a serious challenge to the healthcare platform. An alternative solution is to shift the analysis tasks from healthcare platforms to the mobile computing devices. However, long-term ECG data processing is quite time consuming due to the limited computation power of the mobile central unit processor (CPU). Methods This paper aimed to propose a novel parallel automatic ECG analysis algorithm which exploited the mobile graphics processing unit (GPU) to reduce the response time for processing long-term ECG data. By studying the architecture of the sequential automatic ECG analysis algorithm, we parallelized the time-consuming parts and reorganized the entire pipeline in the parallel algorithm to fully utilize the heterogeneous computing resources of CPU and GPU. Results The experimental results showed that the average executing time of the proposed algorithm on a clinical long-term ECG dataset (duration 23.0 ± 1.0 h per signal) is 1.215 ± 0.140 s, which achieved an average speedup of 5.81 ± 0.39× without compromising analysis accuracy, comparing with the sequential algorithm. Meanwhile, the battery energy consumption of the automatic ECG analysis algorithm was reduced by 64.16%. Excluding energy consumption from data loading, 79.44% of the energy consumption could be saved, which alleviated the problem of limited battery working hours for mobile devices. Conclusion The reduction of response time and battery energy consumption in ECG analysis not only bring better quality of experience to holter users, but also make it possible to use mobile devices as ECG terminals for healthcare professions such as physicians and health advisers, enabling them to inspect patient ECG recordings onsite efficiently without the need of a high-quality wide-area network environment.http://link.springer.com/article/10.1186/s12938-018-0487-3Automatic ECG analysisParallel computingMobile GPUEnergy consumption
collection DOAJ
language English
format Article
sources DOAJ
author Xiaomao Fan
Qihang Yao
Ye Li
Runge Chen
Yunpeng Cai
spellingShingle Xiaomao Fan
Qihang Yao
Ye Li
Runge Chen
Yunpeng Cai
Mobile GPU-based implementation of automatic analysis method for long-term ECG
BioMedical Engineering OnLine
Automatic ECG analysis
Parallel computing
Mobile GPU
Energy consumption
author_facet Xiaomao Fan
Qihang Yao
Ye Li
Runge Chen
Yunpeng Cai
author_sort Xiaomao Fan
title Mobile GPU-based implementation of automatic analysis method for long-term ECG
title_short Mobile GPU-based implementation of automatic analysis method for long-term ECG
title_full Mobile GPU-based implementation of automatic analysis method for long-term ECG
title_fullStr Mobile GPU-based implementation of automatic analysis method for long-term ECG
title_full_unstemmed Mobile GPU-based implementation of automatic analysis method for long-term ECG
title_sort mobile gpu-based implementation of automatic analysis method for long-term ecg
publisher BMC
series BioMedical Engineering OnLine
issn 1475-925X
publishDate 2018-05-01
description Abstract Background Long-term electrocardiogram (ECG) is one of the important diagnostic assistant approaches in capturing intermittent cardiac arrhythmias. Combination of miniaturized wearable holters and healthcare platforms enable people to have their cardiac condition monitored at home. The high computational burden created by concurrent processing of numerous holter data poses a serious challenge to the healthcare platform. An alternative solution is to shift the analysis tasks from healthcare platforms to the mobile computing devices. However, long-term ECG data processing is quite time consuming due to the limited computation power of the mobile central unit processor (CPU). Methods This paper aimed to propose a novel parallel automatic ECG analysis algorithm which exploited the mobile graphics processing unit (GPU) to reduce the response time for processing long-term ECG data. By studying the architecture of the sequential automatic ECG analysis algorithm, we parallelized the time-consuming parts and reorganized the entire pipeline in the parallel algorithm to fully utilize the heterogeneous computing resources of CPU and GPU. Results The experimental results showed that the average executing time of the proposed algorithm on a clinical long-term ECG dataset (duration 23.0 ± 1.0 h per signal) is 1.215 ± 0.140 s, which achieved an average speedup of 5.81 ± 0.39× without compromising analysis accuracy, comparing with the sequential algorithm. Meanwhile, the battery energy consumption of the automatic ECG analysis algorithm was reduced by 64.16%. Excluding energy consumption from data loading, 79.44% of the energy consumption could be saved, which alleviated the problem of limited battery working hours for mobile devices. Conclusion The reduction of response time and battery energy consumption in ECG analysis not only bring better quality of experience to holter users, but also make it possible to use mobile devices as ECG terminals for healthcare professions such as physicians and health advisers, enabling them to inspect patient ECG recordings onsite efficiently without the need of a high-quality wide-area network environment.
topic Automatic ECG analysis
Parallel computing
Mobile GPU
Energy consumption
url http://link.springer.com/article/10.1186/s12938-018-0487-3
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