遗传规划在高血压分类任务特征选择中的应用

Kublanov Vladimir, D. Anton, Gamboa Hugo
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引用次数: 6

摘要

本文探讨了遗传规划方法在高血压患者诊断任务中的可行性。为此,我们对两组相对健康的志愿者和II-III度高血压患者进行了包括倾斜试验在内的3期功能临床研究。研究重点分析了心率变异性信号的64个特征,并采用时域、频域(傅立叶和小波)和非线性方法进行了评价。比较了不同机器学习方法的性能:判别分析、最近邻、决策树和朴素贝叶斯。所有的计算都是在用Python编写的内部软件中执行的。遗传规划应用的结果表明,与之前在非相关特征空间上搜索的结果相比,分类精度有了显著提高。
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Genetic programming application for features selection in task of arterial hypertension classification
The paper investigates the possibilities of the genetic programming approach in task of arterial hypertension patients diagnosing. For this purpose, the 3-stage functional clinical study involving the tilt test was performed on two groups: relatively healthy volunteers and patients suffering from the arterial hypertension of II-III degree. The study was focused on the analysis of the 64 features of heart rate variability signals, evaluated by the time-domain, frequency-domain (Fourier and wavelet) and nonlinear methods. Performance of different machine learning approaches was compared: Discriminant Analysis, Nearest Neighbors, Decision Trees and Naive Bayes. All calculations were performed in the in-house software written on Python. The results of genetic programming application show the significant improvement of the classification accuracy over the previously obtained results of search on the non-correlated features space.
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