|کد مقاله||کد نشریه||سال انتشار||مقاله انگلیسی||ترجمه فارسی||نسخه تمام متن|
|975120||1480151||2015||10 صفحه PDF||سفارش دهید||دانلود رایگان|
• New complexity metrics derived from nonadditive entropy are proposed.
• Proposed metrics are more consistent with physiological complexity concept.
• Proposed metrics outperformed classical multiscale entropy.
• Results reinforce the hypothesis that multiscale mechanisms are degraded in AF.
• Results suggest that low scale mechanisms are the most affected in CHF.
Physiologic complexity is an important concept to characterize time series from biological systems, which associated to multiscale analysis can contribute to comprehension of many complex phenomena. Although multiscale entropy has been applied to physiological time series, it measures irregularity as function of scale. In this study we purpose and evaluate a set of three complexity metrics as function of time scales. Complexity metrics are derived from nonadditive entropy supported by generation of surrogate data, i.e. SDiffqmax, qmax and qzero. In order to access accuracy of proposed complexity metrics, receiver operating characteristic (ROC) curves were built and area under the curves was computed for three physiological situations. Heart rate variability (HRV) time series in normal sinus rhythm, atrial fibrillation, and congestive heart failure data set were analyzed. Results show that proposed metric for complexity is accurate and robust when compared to classic entropic irregularity metrics. Furthermore, SDiffqmax is the most accurate for lower scales, whereas qmax and qzero are the most accurate when higher time scales are considered. Multiscale complexity analysis described here showed potential to assess complex physiological time series and deserves further investigation in wide context.
Journal: Physica A: Statistical Mechanics and its Applications - Volume 422, 15 March 2015, Pages 143–152