Litcius/Paper detail

Detecting Metabolic Thresholds from Nonlinear Analysis of Heart Rate Time Series: A Review

Giovanna Zimatore, Maria Chiara Gallotta, M. Campanella, Piotr H. Skarżyński, Giuseppe Maulucci, Cassandra Serantoni, Marco De Spirito, Davide Curzi, Laura Guidetti, Carlo Baldari, Stavros Hatzopoulos

2022International Journal of Environmental Research and Public Health19 citationsDOIOpen Access PDF

Abstract

Heart rate time series are widely used to characterize physiological states and athletic performance. Among the main indicators of metabolic and physiological states, the detection of metabolic thresholds is an important tool in establishing training protocols in both sport and clinical fields. This paper reviews the most common methods, applied to heart rate (HR) time series, aiming to detect metabolic thresholds. These methodologies have been largely used to assess energy metabolism and to identify the appropriate intensity of physical exercise which can reduce body weight and improve physical fitness. Specifically, we focused on the main nonlinear signal evaluation methods using HR to identify metabolic thresholds with the purpose of identifying a method which can represent a useful tool for the real-time settings of wearable devices in sport activities. While the advantages and disadvantages of each method, and the possible applications, are presented, this review confirms that the nonlinear analysis of HR time series represents a solid, robust and noninvasive approach to assess metabolic thresholds.

Topics & Concepts

Computer scienceMetabolic rateWearable computerHeart rateSeries (stratigraphy)Nonlinear systemMedicineBiologyPaleontologyEmbedded systemBlood pressureQuantum mechanicsInternal medicinePhysicsRadiologyHeart Rate Variability and Autonomic ControlCardiovascular and exercise physiologyNon-Invasive Vital Sign Monitoring