Applied Sciences (Mar 2025)

Towards an Automatic Recognition of Artifacts and Features in Plethysmographic Traces

  • Alessandro Breccia,
  • Marco Chiloiro,
  • Riccardo Lui,
  • Konstantinos Panagiotakis,
  • Gianfranco Paternò,
  • Antonino Proto,
  • Angelo Taibi,
  • Alberto Zucchetta

DOI
https://doi.org/10.3390/app15063187
Journal volume & issue
Vol. 15, no. 6
p. 3187

Abstract

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A plethysmograph is a device that quantitatively assesses volumetric variations in an organ or the entire body, typically resulting from fluctuations in blood flow. In this study, a strain-gauge sensor that measures changes in the volume of the neck was used to detect the the cerebral venous outflow in the internal jugular veins. The resulting electronic signal was susceptible to several external factors, complicating the identification of relevant features. A reliable analysis of the waveform, without the need for a manual intervention to analyze the data, is of paramount importance to provide real-time analysis of the vital parameters of the patient. In this work, we demonstrate that specifically designed neural networks can detect artifacts in plethysmographic traces and identify the most important features in the signal with reasonable accuracy, eliminating the need to perform these tasks manually for each patient.

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