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Depth-Sensing-Based Algorithm for Chest Morphology Assessment in Children with Cerebral Palsy.

Olivera Tomašević1, Aleksandra Ivančić2, Luka Mejić1

  • 1Faculty of Technical Sciences, University of Novi Sad, 21000 Novi Sad, Serbia.

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|September 14, 2024
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Summary

This study developed a depth-sensing method to track chest changes during physical therapy. The reliable algorithm accurately measures chest morphology, aiding rehabilitation progress evaluation.

Keywords:
chest mobilitychildren with cerebral palsydepth-sensingpatient morphologypoint-cloud datawavelet transformation

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Area of Science:

  • Biomedical Engineering
  • Rehabilitation Science
  • Medical Imaging

Background:

  • Assessing chest morphology changes is crucial for physical therapy effectiveness.
  • Breathing causes periodic morphological variations, complicating accurate measurements.
  • Existing methods may lack the precision to capture subtle chest changes.

Purpose of the Study:

  • To introduce a depth-sensing approach for tracking relative morphological changes in patients' chests.
  • To develop robust algorithms for analyzing chest morphology during physical therapy.
  • To validate the reliability and reproducibility of the proposed measurement technique.

Main Methods:

  • Utilized depth-sensing technology for continuous chest recording.
  • Extracted morphological parameters from transverse cross-sections (CSs) at maximal and minimal chest volumes (inspiration/expiration).
  • Assessed measurement reliability using the coefficient of variation (CV) and reproducibility through two-session recordings.

Main Results:

  • Mean CV for CS depth values was <2%; mean CV for CS area was <1%, indicating high reliability.
  • Statistical analysis confirmed no significant difference between two measurement sessions, supporting reproducibility.
  • The algorithm successfully evaluated chest mobility during quiet breathing, showing consistent results across sessions.

Conclusions:

  • The proposed depth-sensing algorithm is a reliable and reproducible tool for monitoring chest morphology.
  • This method can effectively evaluate the impact of physical therapy and rehabilitation exercises on chest changes.
  • The findings support the clinical utility of this approach in patient monitoring and treatment assessment.