利用基于枢轴范围适应度量表的机器学习模型从心电图信号预测心律失常、房颤

IF 0.8 Q4 ROBOTICS
S. Jyothi, Geetanjali Nelloru
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引用次数: 0

摘要

目的对具有室性心律失常和心房颤动(中风和心源性猝死的早期标志物)的患者以及良性受试者进行心电图研究。为了识别心脏异常,心电图信号分析心脏的电活动,并以波形的形式显示输出。必须尽快发现患有这些疾病的患者。当手动检查时,ECG信号可能是困难的、耗时的并且会受到观察者之间的可变性的影响。设计/方法/方法在复杂的非线性心电图数据中,心律失常的形式多种多样,难以区分。使用计算机辅助决策支持系统(CAD)可能是有益的。使用CAD可以快速、准确、可重复和客观地对心律失常进行分类,CAD使用机器学习算法来识别心律的微小变化。使用这种方法可以对心肌梗死进行分类和检测。作者希望在更少的计算时间内以更准确的结果对心律失常进行分类,作为主要目标。本文利用信号和轴的特征及其关联n图作为特征,对该领域进行了重要的补充。使用基准数据集作为多标签多重交叉验证的输入,进行了实验研究。发现该数据集被用作当代模型交叉验证的输入,由此产生的交叉验证指标已与其他当代模型的性能指标进行了权衡。由于所提出的模型具有高灵敏度和特异性,很少出现误报。原创性/价值交叉验证的结果意义重大。在特异性、敏感性和决策准确性方面,所提出的模型优于其他当代模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting arrhythmia, atrial fibrillation from electrocardiogram signals using Pivot Range Fitness Scale-Based Machine Learning Model
PurposePatients having ventricular arrhythmias and atrial fibrillation, that are early markers of stroke and sudden cardiac death, as well as benign subjects are all studied using the electrocardiogram (ECG). In order to identify cardiac anomalies, ECG signals analyse the heart's electrical activity and show output in the form of waveforms. Patients with these disorders must be identified as soon as possible. ECG signals can be difficult, time-consuming and subject to inter-observer variability when inspected manually.Design/methodology/approachThere are various forms of arrhythmias that are difficult to distinguish in complicated non-linear ECG data. It may be beneficial to use computer-aided decision support systems (CAD). It is possible to classify arrhythmias in a rapid, accurate, repeatable and objective manner using the CAD, which use machine learning algorithms to identify the tiny changes in cardiac rhythms. Cardiac infractions can be classified and detected using this method. The authors want to categorize the arrhythmia with better accurate findings in even less computational time as the primary objective. Using signal and axis characteristics and their association n-grams as features, this paper makes a significant addition to the field. Using a benchmark dataset as input to multi-label multi-fold cross-validation, an experimental investigation was conducted.FindingsThis dataset was used as input for cross-validation on contemporary models and the resulting cross-validation metrics have been weighed against the performance metrics of other contemporary models. There have been few false alarms with the suggested model's high sensitivity and specificity.Originality/valueThe results of cross validation are significant. In terms of specificity, sensitivity, and decision accuracy, the proposed model outperforms other contemporary models.
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来源期刊
CiteScore
3.50
自引率
0.00%
发文量
21
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