Comparison of Machine Learning Methods for the Arterial Hypertension Diagnostics.
Vladimir S KublanovAnton Yu DolganovDavid BeloHugo GamboaPublished in: Applied bionics and biomechanics (2017)
The paper presents results of machine learning approach accuracy applied analysis of cardiac activity. The study evaluates the diagnostics possibilities of the arterial hypertension by means of the short-term heart rate variability signals. Two groups were studied: 30 relatively healthy volunteers and 40 patients suffering from the arterial hypertension of II-III degree. The following machine learning approaches were studied: linear and quadratic discriminant analysis, k-nearest neighbors, support vector machine with radial basis, decision trees, and naive Bayes classifier. Moreover, in the study, different methods of feature extraction are analyzed: statistical, spectral, wavelet, and multifractal. All in all, 53 features were investigated. Investigation results show that discriminant analysis achieves the highest classification accuracy. The suggested approach of noncorrelated feature set search achieved higher results than data set based on the principal components.
Keyphrases
- machine learning
- arterial hypertension
- heart rate variability
- deep learning
- big data
- artificial intelligence
- end stage renal disease
- heart rate
- newly diagnosed
- left ventricular
- convolutional neural network
- hiv infected
- peritoneal dialysis
- prognostic factors
- electronic health record
- atrial fibrillation
- ultrasound guided
- single molecule