Classifying work rate from heart rate measurements using an adaptive neuro-fuzzy inference system.

Journal: Applied ergonomics
PMID:

Abstract

In a new approach based on adaptive neuro-fuzzy inference systems (ANFIS), field heart rate (HR) measurements were used to classify work rate into four categories: very light, light, moderate, and heavy. Inter-participant variability (physiological and physical differences) was considered. Twenty-eight participants performed Meyer and Flenghi's step-test and a maximal treadmill test, during which heart rate and oxygen consumption (VO2) were measured. Results indicated that heart rate monitoring (HR, HRmax, and HRrest) and body weight are significant variables for classifying work rate. The ANFIS classifier showed superior sensitivity, specificity, and accuracy compared to current practice using established work rate categories based on percent heart rate reserve (%HRR). The ANFIS classifier showed an overall 29.6% difference in classification accuracy and a good balance between sensitivity (90.7%) and specificity (95.2%) on average. With its ease of implementation and variable measurement, the ANFIS classifier shows potential for widespread use by practitioners for work rate assessment.

Authors

  • Ahmet Kolus
    Department of Systems Engineering, King Fahd University of Petroleum & Minerals, Dhahran, Saudi Arabia. Electronic address: akolus@kfupm.edu.sa.
  • Daniel Imbeau
    Department of Mathematics and Industrial Engineering, Polytechnique Montréal, Montréal, Canada.
  • Philippe-Antoine Dubé
    Department of Mathematics and Industrial Engineering, Polytechnique Montréal, Montréal, Canada.
  • Denise Dubeau
    Direction de la recherche forestière, Ministère des Forêts, de la Faune et des Parcs, Québec, Canada.