机器学习技术在外周脉冲形态分类中的作用

N. Patil, Sushma N Bhat, Janisha Christopher, Rameshwari Abhane, Uttam Rajaram Bagal, Gajanan D. Nagare
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引用次数: 0

摘要

外周脉搏记录是一种非常重要和必不可少的非侵入性工具,被医生广泛用于各种疾病的诊断。在给定的个体中,脉冲的形态可以看作是时间的函数,也可以看作是个体与个体之间的函数。在不同的疾病条件下,外周脉搏的形态模式存在许多差异,这导致了准确诊断的困难。使用基于阻抗体积描记术原理设计的外周脉冲分析仪从桡动脉中提取外周脉冲波形作为时间序列数据。它最早由尼奥贝尔在19世纪中期引入,并由库比切克进一步改进。它包括通过测量作为时间函数的电阻抗来记录瞬时血容量。因此,近几年来,外周脉冲形态的研究受到了研究者的广泛关注。生理变异性是过去二十年中为客观评估自主神经功能和评估严重疾病(即心肌梗死、糖尿病神经病变等)的预后而增加的最新研究之一。除了在世界范围内研究的心率变异性外,很少有研究人员研究血压变异性和外周血流量变异性。在这个计算机时代,人工智能和机器学习技术变得越来越重要,不同类型的算法被用于从径向脉冲的体积描记观测中识别隐藏模式,如支持向量机以及清晰和模糊聚类。八种模式被分类,产率为80%-90%,有助于诊断心肌梗死、肺结核、冠状动脉疾病、肝硬化和支气管哮喘等疾病。本文简要介绍了机器学习技术在外围脉冲形态分类中的应用。
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Role of machine learning techniques in classification of peripheral pulse morphology
Recording of peripheral pulse serves as a very important and essential non-invasive tool used widely by doctors for the diagnosis of various diseases. The morphology of pulse is seen to vary as a function of time in a given individual and also from individual to individual. There are many variations in morphological patterns of peripheral pulse in different disease conditions, which lead to difficulty in accurate diagnosis. The peripheral pulse waveforms are extracted from radial arteries as time series data using a peripheral pulse analyzer which is designed on the principle of impedance plethysmography. It was first introduced by Nyober in the mid-nineteen hundreds and ameliorated further by Kubicek. It involves the recording of the instantaneous blood volume by the measurement of electrical impedance as a function of time. Therefore, the study of peripheral pulse morphology has gained much attention in the past few years among researchers. Physiological variability is one of the recent investigations added during the last two decades for the objective assessment of autonomic function and the assessment of prognosis in severe sicknesses namely myocardial infarction, diabetic neuropathy, etc. In addition to heart rate variability studied worldwide, few researchers have studied blood pressure variability and peripheral blood flow variability. In this computer era, artificial intelligence and machine learning techniques have become more important day-by-day, and different types of algorithms were used for the identification of hidden patterns from plethysmographic observations on the radial pulse such as support vector machine as well as crisp and fuzzy clustering. Eight patterns were classified with a yield of 80%–90% and helped with the diagnosis of disorders such as myocardial infarction, pulmonary tuberculosis, coronary artery disorders, cirrhosis of the liver, and bronchial asthma. This paper briefly describes the use of machine learning techniques for the classification of peripheral pulse morphologies.
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