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Heart rate variability time domain features in automated prediction of diabetes in rat

机译:心率变异性时域特性自动预测糖尿病的老鼠

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摘要

Diabetes is a very common occurring disease, diagnosed by hyperglycemia. The established mode of diagnosis is the analysis of blood glucose level with the help of a hand-held glucometer. Nowadays, it is also known for affecting multi-organ functions, particularly the microvasculature of the cardiovascular system. In this work, an alternative diagnostic system based on the heart rate variability (HRV) analysis and artificial neural network (ANN) and support vector machine (SVM) have been proposed. The experiment and data recording has been performed on male Wister rats of 10-12 week of age and 200 +/- 20 gm of weight. The digital lead-I electrocardiogram (ECG) data are recorded from control (n = 5) and Streptozotocin-induced diabetic rats (n = 5). Nine time-domain linear HRV parameters are computed from 60 s of ECG data epochs and used for the training and testing of backpropagation ANN and SVM. Total 526 (334 Control and 192 diabetics) such datasets are computed for the testing of ANN for the identification of the diabetic conditions. The ANN has been optimized for architecture 9:5:1 (Input: hidden: output neurons, respectively) with the optimized learning rate parameter at 0.02. With this network, a very good classification accuracy of 96.2% is achieved. While similar accuracy of 95.2% is attained using SVM. Owing to the successful implementation of HRV parameters based automated classifiers for diabetic conditions, a non-invasive, ECG based online prognostic system can be developed for accurate and non-invasive prediction of the diabetic condition.
机译:糖尿病是一种很常见的疾病,发生诊断的高血糖。血糖的诊断分析的帮助下手持glucometer水平。现在,它也影响多器官功能,特别是心血管系统的微脉管系统。这项工作,另一种诊断系统在心率变异性(HRV)分析人工神经网络(ANN)和支持向量机(SVM)方法。实验和数据记录已经完成在男性威斯特200年10 - 12周的年龄和老鼠20 + / -通用汽车的重量。心电图(ECG)数据记录控制(n = 5)和体外实验糖尿病大鼠(n = 5)。九时域线性的HRV从60年代的心电图数据参数计算时代,用于训练和测试反向传播人工神经网络和支持向量机。控制和192糖尿病患者)这样的数据集安的测试计算糖尿病条件下的识别。安9:5:1已经优化体系结构(分别为输入:隐藏:输出神经元)用优化的学习速率参数0.02. 分类精度达到96.2%。而获得使用相似的精度95.2%支持向量机。HRV基于参数的自动分类器糖尿病条件下,非侵入性,基于心电图在线预测系统可以开发准确的和非侵入性的预测糖尿病状态。

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