An integrated diabetic index using heart rate variability signal features for diagnosis of diabetes
- 1 February 2013
- journal article
- research article
- Published by Taylor & Francis in Computer Methods in Biomechanics and Biomedical Engineering
- Vol. 16 (2) , 222-234
- https://doi.org/10.1080/10255842.2011.616945
Abstract
Electrocardiogram (ECG) signals are difficult to interpret, and clinicians must undertake a long training process to learn to diagnose diabetes from subtle abnormalities in these signals. To facilitate these diagnoses, we have developed a technique based on the heart rate variability signal obtained from ECG signals. This technique uses digital signal processing methods and, therefore, automates the detection of diabetes from ECG signals. In this paper, we describe the signal processing techniques that extract features from heart rate (HR) signals and present an analysis procedure that uses these features to diagnose diabetes. Through statistical analysis, we have identified the correlation dimension, Poincaré geometry properties (SD2), and recurrence plot properties (REC, DET, L mean) as useful features. These features differentiate the HR data of diabetic patients from those of patients who do not have the illness, and have been validated by using the AdaBoost classifier with the perceptron weak learner (yielding a classification accuracy of 86%). We then developed a novel diabetic integrated index (DII) that is a combination of these nonlinear features. The DII indicates whether a particular HR signal was taken from a person with diabetes. This index aids the automatic detection of diabetes, thereby allowing a more objective assessment and freeing medical professionals for other tasks.Keywords
This publication has 35 references indexed in Scilit:
- Cost-Effective and Non-Invasive Automated Benign & Malignant Thyroid Lesion Classification in 3D Contrast-Enhanced Ultrasound Using Combination of Wavelets and Textures: A Class of ThyroScan™ AlgorithmsTechnology in Cancer Research & Treatment, 2011
- Automatic identification of cardiac health using modeling techniques: A comparative studyInformation Sciences, 2008
- Computer-based analysis of cardiac state using entropies, recurrence plots and Poincare geometryJournal of Medical Engineering & Technology, 2008
- Heart rate variability: a reviewMedical & Biological Engineering & Computing, 2006
- Comparison of fast Fourier transform and autoregressive spectral analysis for the study of heart rate variability in diabetic patientsInternational Journal of Cardiology, 2005
- Pulse rate variability is not a surrogate for heart rate variabilityClinical Science, 1999
- Boosting a Weak Learning Algorithm by MajorityInformation and Computation, 1995
- Autonomic neuropathy, QT interval lengthening, and unexpected deaths in male diabetic patientsDiabetologia, 1991
- Increased Intraoperative Cardiovascular Morbidity in Diabetics with Autonomic NeuropathyAnesthesiology, 1989
- Recurrence Plots of Dynamical SystemsEurophysics Letters, 1987