用短期心率时间序列非线性分析识别糖尿病患者

S. Krivenko, A. Pulavskyi, S.A. Krivenko
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引用次数: 2

摘要

建议采用非侵入性方法识别2型糖尿病(T2DM)。该方法基于单导联心电图rr间隔短序列(~ 300点)的符号分析。为了获得初始符号序列,使用了4种不同的时间序列符号形成方法。利用具有线性核的支持向量机分类器进行有效符号的选择。其中最显著的符号成为带有RB F核的支持向量机模型的输入参数。该模型具有较高的效率,在测试集上的灵敏度为70-82%,特异性为73-77%。所提出的方法使用后验概率作为结果可靠性的标准,每个新样本都有一个类标签。所得模型的后验概率阈值为91%。研究表明,后验概率的使用既不影响也不提高预测的质量。当使用后验概率时,模型的灵敏度可提高到88%,特异性可提高到90%,对所有预测值的客观性可达50%。
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Identification of Diabetic Patients Using the Nonlinear Analysis of Short-Term Heart Rate Time Series
The non-invasive method for identifying the volunteers suffering from the type 2 diabetes mellitus (T2DM) is suggested. The method is based on the symbolic analysis of short series (∼300 points) of RR-intervals of a single-lead electrocardiogram. To obtain the initial symbol sequences, 4 different methods of formation of symbols from the time series were used. Using the SVM classifier with a linear kernel, a selection of significant symbols was made. The most significant symbols became the input parameters for the SVM model with RB F kernel. The model has shown high efficiency: the sensitivity on the test sets was 70-82%, and the specificity was 73-77%. The proposed method uses the posterior probability, which has been accompanied by a class label for each new sample, being a criterion of the results reliability. For the obtained model, the threshold value of the posterior probability was 91%. It has been shown that the use of the posterior probability does not impair or improve the quality of the forecast. While using the posterior probability, the sensitivity of the model can increase up to 88% and specificity can increase up to 90%, being objective for up to 50% of all predicted values.
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