基于柔性分析小波变换的心电图信号识别2型糖尿病

Bhanupriya Mishra, Neelamshobha Nirala
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引用次数: 0

摘要

2型糖尿病(T2DM)是一种世界性的终身代谢性疾病。它会大大降低任何背负巨大经济负担的人的预期寿命。本研究旨在创造一种无创和经济的工具,用于使用心电图(ECG)信号自动检测T2DM。利用柔性解析小波变换将心电信号分解为可预测的子带,对心电信号进行评估。从每个子带提取统计特征和时域特征。采用不同的特征选择技术来获得最相关的特征。使用1 - r属性评估特征选择技术选择的前9个特征被输入到各种类型的机器学习分类器中。在测试的分类器中,精细k近邻分类器和可优化KNN分类器的平均准确率最高,分别为94.94%和94.61%。结果表明,该方法在常规应用中提供了一种有效的非侵入性T2DM检测方法。
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Identification of type-2 diabetes by electrocardiogram signal using flexible analytical wavelet transform
Type-2 diabetes mellitus (T2DM) is a lifelong metabolic disease with worldwide prevalence. It can drastically decrease the life expectancy of any subject with a huge economic burden. The present study aimed to create a non-invasive and economical tool for automatic detection of T2DM using electrocardiogram (ECG) signals. The flexible analytic wavelet transform is used to evaluate the ECG by decomposing it into predictable sub-bands. Statistical and time-domain features were extracted from each sub-band. Different feature selection techniques were applied to obtain the most relevant features. The top nine features, selected by using the one-R attribute eval feature selection technique, were fed into the various types of machine learning classifiers. In tested classifiers, the fine k-nearest neighbour and optimisable KNN classifiers have shown the highest average accuracy of 94.94% and 94.61% respectively. The results suggest that the proposed approach provides an efficient non-invasive T2DM detection method in regular applications.
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来源期刊
CiteScore
1.60
自引率
0.00%
发文量
73
期刊介绍: IJBET addresses cutting-edge research in the multi-disciplinary area of biomedical engineering and technology. Medical science incorporates scientific/technological advances combining to produce more accurate diagnoses, effective treatments with fewer side effects, and improved ability to prevent disease and provide superior-quality healthcare. A key field here is biomedical engineering/technology, offering a synthesis of physical, chemical, mathematical and computational sciences combined with engineering principles to enhance R&D in biology, medicine, behaviour, and health. Topics covered include Artificial organs Automated patient monitoring Advanced therapeutic and surgical devices Application of expert systems and AI to clinical decision making Biomaterials design Biomechanics of injury and wound healing Blood chemistry sensors Computer modelling of physiologic systems Design of optimal clinical laboratories Medical imaging systems Sports medicine.
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