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

机译:大鼠糖尿病自动预测中的心率变异性时域特征

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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:糖尿病是一种非常常见的疾病,由高血糖症诊断。既定的诊断模式是借助手持式血糖仪分析血糖水平。如今,它也以影响多器官功能而闻名,尤其是心血管系统的微血管系统。本文提出了一种基于心率变异性(HRV)分析、人工神经网络(ANN)和支持向量机(SVM)的替代诊断系统。实验和数据记录已对10-12周龄和体重200 + / - 20克的雄性Wister大鼠进行。从对照组(n = 5)和链脲佐菌素诱导的糖尿病大鼠(n = 5)记录数字导联I心电图(ECG)数据。从60 s的ECG数据周期计算出9个时域线性HRV参数,用于反向传播ANN和SVM的训练和测试。总共计算了 526 个(334 个对照组和 192 个糖尿病患者)这样的数据集,用于测试 ANN 以识别糖尿病状况。ANN 已针对 9:5:1(输入:隐藏:输出神经元)架构进行了优化,优化的学习率参数为 0.02。通过该网络,可以实现 96.2% 的非常好的分类准确率。而使用 SVM 可以达到 95.2% 的类似精度。由于基于HRV参数的糖尿病疾病自动分类器的成功实施,可以开发一种基于心电图的无创在线预后系统,以准确和非侵入性地预测糖尿病状况。

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