Data dependent random forest applied to screening for laryngeal disorders through analysis of sustained phonation: acoustic versus contact microphone.

Journal: Medical engineering & physics
Published Date:

Abstract

Comprehensive evaluation of results obtained using acoustic and contact microphones in screening for laryngeal disorders through analysis of sustained phonation is the main objective of this study. Aiming to obtain a versatile characterization of voice samples recorded using microphones of both types, 14 different sets of features are extracted and used to build an accurate classifier to distinguish between normal and pathological cases. We propose a new, data dependent random forests-based, way to combine information available from the different feature sets. An approach to exploring data and decisions made by a random forest is also presented. Experimental investigations using a mixed gender database of 273 subjects have shown that the perceptual linear predictive cepstral coefficients (PLPCC) was the best feature set for both microphones. However, the linear predictive coefficients (LPC) and linear predictive cosine transform coefficients (LPCTC) exhibited good performance in the acoustic microphone case only. Models designed using the acoustic microphone data significantly outperformed the ones built using data recorded by the contact microphone. The contact microphone did not bring any additional information useful for the classification. The proposed data dependent random forest significantly outperformed the traditional random forest.

Authors

  • A Verikas
    Department of Electric Power Systems, Kaunas University of Technology Studentu 50, LT-51368, Kaunas, Lithuania; IS-Lab, Halmstad University, Box 823, S-30118 Halmstad, Sweden. Electronic address: antanas.verikas@hh.se.
  • A Gelzinis
    Department of Electric Power Systems, Kaunas University of Technology Studentu 50, LT-51368, Kaunas, Lithuania. Electronic address: adas.gelzinis@ktu.lt.
  • E Vaiciukynas
    Department of Electric Power Systems, Kaunas University of Technology Studentu 50, LT-51368, Kaunas, Lithuania. Electronic address: evaldas.vaiciukynas@ktu.lt.
  • M Bacauskiene
    Department of Electric Power Systems, Kaunas University of Technology Studentu 50, LT-51368, Kaunas, Lithuania. Electronic address: marija.bacauskiene@ktu.lt.
  • J Minelga
    Department of Electric Power Systems, Kaunas University of Technology Studentu 50, LT-51368, Kaunas, Lithuania. Electronic address: jonasmin@gmail.com.
  • M HÃ¥llander
    IS-Lab, Halmstad University, Box 823, S-30118 Halmstad, Sweden. Electronic address: magnus.hallander@hh.se.
  • V Uloza
    Department of Otolaryngology, Lithuanian University of Health Sciences Eiveniu 2, LT-50009, Kaunas, Lithuania. Electronic address: virgilijus.ulozas@kmuk.lt.
  • E Padervinskis
    Department of Otolaryngology, Lithuanian University of Health Sciences Eiveniu 2, LT-50009, Kaunas, Lithuania. Electronic address: evaldas.padervinskis@kmuk.lt.