Literature DB >> 33331795

Oxynet: A collective intelligence that detects ventilatory thresholds in cardiopulmonary exercise tests.

A Zignoli1,2,3, A Fornasiero2,4, P Rota5, V Muollo6, L A Peyré-Tartaruga7, D A Low8, F Y Fontana9, D Besson10,11, M Pühringer12, S Ring-Dimitriou12, L Mourot13,14.   

Abstract

The problem of the automatic determination of the first and second ventilatory thresholds (VT1 and VT2) from cardiopulmonary exercise test (CPET) still leads to controversy. The reliability of the gold standard methodology (i.e. expert visual inspection) feeds into the debate and several authors call for more objective automatic methods to be used in the clinical practice. In this study, we present a framework based on a collaborative approach, where a web-application was used to crowd-source a large number (1245) of CPET data of individuals with different aerobic fitness. The resulting database was used to train and test an artificial intelligence (i.e. a convolutional neural network) algorithm. This automatic classifier is currently implemented in another web-application and was used to detect the ventilatory thresholds in the available CPET. A total of 206 CPET were used to evaluate the accuracy of the estimations against the expert opinions. The neural network was able to detect the ventilatory thresholds with an average mean absolute error of 178 (198) mlO2/min (11.1%, r = 0.97) and 144 (149) mlO2/min (6.1%, r = 0.99), for VT1 and VT2 respectively. The performance of the neural network in detecting VT1 deteriorated in case of individuals with poor aerobic fitness. Our results suggest the potential for a collective intelligence system to outperform isolated experts in ventilatory thresholds detection. However, the inclusion of a larger number of VT1 examples certified by a community of experts will be likely needed before the abilities of this collective intelligence can be translated into the clinical use of CPET.

Entities:  

Keywords:  Automatic methods; artificial intelligence; deep learning; machine learning

Mesh:

Year:  2021        PMID: 33331795     DOI: 10.1080/17461391.2020.1866081

Source DB:  PubMed          Journal:  Eur J Sport Sci        ISSN: 1536-7290            Impact factor:   4.050


  4 in total

1.  Oxygen uptake efficiency slope in healthy normal weight young males: an applicable framework for calculation and interpretation.

Authors:  Lavinia Falcioni; Laura Guidetti; Carlo Baldari; Maria Chiara Gallotta; Marco Meucci
Journal:  PeerJ       Date:  2022-07-13       Impact factor: 3.061

2.  A Reappraisal of Ventilatory Thresholds in Wheelchair Athletes With a Spinal Cord Injury: Do They Really Exist?

Authors:  Julia Kathrin Baumgart; Gertjan Ettema; Katy E Griggs; Victoria Louise Goosey-Tolfrey; Christof Andreas Leicht
Journal:  Front Physiol       Date:  2021-11-26       Impact factor: 4.566

3.  Enhancing instantaneous oxygen uptake estimation by non-linear model using cardio-pulmonary physiological and motion signals.

Authors:  Zhao Wang; Qiang Zhang; Ke Lan; Zhicheng Yang; Xiaolin Gao; Anshuo Wu; Yi Xin; Zhengbo Zhang
Journal:  Front Physiol       Date:  2022-08-25       Impact factor: 4.755

Review 4.  Detecting Metabolic Thresholds from Nonlinear Analysis of Heart Rate Time Series: A Review.

Authors:  Giovanna Zimatore; Maria Chiara Gallotta; Matteo Campanella; Piotr H Skarzynski; Giuseppe Maulucci; Cassandra Serantoni; Marco De Spirito; Davide Curzi; Laura Guidetti; Carlo Baldari; Stavros Hatzopoulos
Journal:  Int J Environ Res Public Health       Date:  2022-10-05       Impact factor: 4.614

  4 in total

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