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Comprehensive, Population-Based Sensitivity Analysis of a Two-Mass Vocal Fold Model

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  • Daniel Robertson
  • Matías Zañartu
  • Douglas Cook

Abstract

Previous vocal fold modeling studies have generally focused on generating detailed data regarding a narrow subset of possible model configurations. These studies can be interpreted to be the investigation of a single subject under one or more vocal conditions. In this study, a broad population-based sensitivity analysis is employed to examine the behavior of a virtual population of subjects and to identify trends between virtual individuals as opposed to investigating a single subject or model instance. Four different sensitivity analysis techniques were used in accomplishing this task. Influential relationships between model input parameters and model outputs were identified, and an exploration of the model’s parameter space was conducted. Results indicate that the behavior of the selected two-mass model is largely dominated by complex interactions, and that few input-output pairs have a consistent effect on the model. Results from the analysis can be used to increase the efficiency of optimization routines of reduced-order models used to investigate voice abnormalities. Results also demonstrate the types of challenges and difficulties to be expected when applying sensitivity analyses to more complex vocal fold models. Such challenges are discussed and recommendations are made for future studies.

Suggested Citation

  • Daniel Robertson & Matías Zañartu & Douglas Cook, 2016. "Comprehensive, Population-Based Sensitivity Analysis of a Two-Mass Vocal Fold Model," PLOS ONE, Public Library of Science, vol. 11(2), pages 1-19, February.
  • Handle: RePEc:plo:pone00:0148309
    DOI: 10.1371/journal.pone.0148309
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