Machine learning based pervasive analytics for ECG signal analysis

IF 0.6 Q4 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS International Journal of Pervasive Computing and Communications Pub Date : 2021-07-29 DOI:10.1108/ijpcc-03-2021-0080
Aarathi S., Vasundra S.
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Abstract

Purpose Pervasive analytics act as a prominent role in computer-aided prediction of non-communicating diseases. In the early stage, arrhythmia diagnosis detection helps prevent the cause of death suddenly owing to heart failure or heart stroke. The arrhythmia scope can be identified by electrocardiogram (ECG) report. Design/methodology/approach The ECG report has been used extensively by several clinical experts. However, diagnosis accuracy has been dependent on clinical experience. For the prediction methods of computer-aided heart disease, both accuracy and sensitivity metrics play a remarkable part. Hence, the existing research contributions have optimized the machine-learning approaches to have a great significance in computer-aided methods, which perform predictive analysis of arrhythmia detection. Findings In reference to this, this paper determined a regression heuristics by tridimensional optimum features of ECG reports to perform pervasive analytics for computer-aided arrhythmia prediction. The intent of these reports is arrhythmia detection. From an empirical outcome, it has been envisioned that the project model of this contribution is more optimal and added a more advantage when compared to existing or contemporary approaches. Originality/value In reference to this, this paper determined a regression heuristics by tridimensional optimum features of ECG reports to perform pervasive analytics for computer-aided arrhythmia prediction. The intent of these reports is arrhythmia detection. From an empirical outcome, it has been envisioned that the project model of this contribution is more optimal and added a more advantage when compared to existing or contemporary approaches.
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基于机器学习的心电信号普适分析
目的普适分析在非传染性疾病的计算机辅助预测中发挥着重要作用。在早期阶段,心律失常的诊断检测有助于防止因心力衰竭或心脏中风而突然死亡。心律失常的范围可以通过心电图(ECG)报告来识别。设计/方法学/方法心电图报告已被许多临床专家广泛使用。然而,诊断的准确性依赖于临床经验。在计算机辅助心脏病预测方法中,准确性指标和敏感性指标都起着重要作用。因此,现有的研究贡献优化了机器学习方法,使其在计算机辅助方法中具有重要意义,可以对心律失常检测进行预测分析。基于此,本文确定了一种基于心电报告三维最优特征的回归启发式方法,用于计算机辅助心律失常预测的普适分析。这些报告的目的是心律失常检测。从实证结果来看,与现有的或当代的方法相比,这种贡献的项目模型更加优化,并且增加了更多的优势。独创性/价值参考此,本文确定了一种利用心电报告的三维最优特征进行回归启发式分析的方法,用于计算机辅助心律失常预测。这些报告的目的是心律失常检测。从实证结果来看,与现有的或当代的方法相比,这种贡献的项目模型更加优化,并且增加了更多的优势。
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来源期刊
International Journal of Pervasive Computing and Communications
International Journal of Pervasive Computing and Communications COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS-
CiteScore
6.60
自引率
0.00%
发文量
54
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