| Literature DB >> 35029537 |
David Thivel1, Alice Corteval2, Jean-Marie Favreau1, Emmanuel Bergeret1, Ludovic Samalin3, Frédéric Costes3, Farouk Toumani1, Christian Dualé3, Bruno Pereira3, Alain Eschalier3, Nicole Fearnbach4, Martine Duclos3, Anne Tournadre3.
Abstract
Methods to measure physical activity and sedentary behaviors typically quantify the amount of time devoted to these activities. Among patients with chronic diseases, these methods can provide interesting behavioral information, but generally do not capture detailed body motion and fine movement behaviors. Fine detection of motion may provide additional information about functional decline that is of clinical interest in chronic diseases. This perspective paper highlights the need for more developed and sophisticated tools to better identify and track the decomposition, structuration, and sequencing of the daily movements of humans. The primary goal is to provide a reliable and useful clinical diagnostic and predictive indicator of the stage and evolution of chronic diseases, in order to prevent related comorbidities and complications among patients. ©David Thivel, Alice Corteval, Jean-Marie Favreau, Emmanuel Bergeret, Ludovic Samalin, Frédéric Costes, Farouk Toumani, Christian Dualé, Bruno Pereira, Alain Eschalier, Nicole Fearnbach, Martine Duclos, Anne Tournadre. Originally published in the Journal of Medical Internet Research (https://www.jmir.org), 14.01.2022.Entities:
Keywords: decomposition; fine body motion; indicator; movement behaviors; sequencing; structuration
Mesh:
Year: 2022 PMID: 35029537 PMCID: PMC8800083 DOI: 10.2196/32362
Source DB: PubMed Journal: J Med Internet Res ISSN: 1438-8871 Impact factor: 5.428
Figure 1Schematic flow chart of the E-Mob project from Phase 1 (detailed identification of signals from different trackers, specific to predetermined body movements) to Phase 2 (training of the deep neural network) and then Phase 3 (2-step individualization process).