Journal article
Disease Delineation for Multiple Sclerosis, Friedreich Ataxia, and Healthy Controls Using Supervised Machine Learning on Speech Acoustics
BG Schultz, Z Joukhadar, U Nattala, MDM Quiroga, G Noffs, S Rojas, H Reece, A Van Der Walt, AP Vogel
IEEE Transactions on Neural Systems and Rehabilitation Engineering | IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC | Published : 2023
Abstract
Neurodegenerative disease often affects speech. Speech acoustics can be used as objective clinical markers of pathology. Previous investigations of pathological speech have primarily compared controls with one specific condition and excluded comorbidities. We broaden the utility of speech markers by examining how multiple acoustic features can delineate diseases. We used supervised machine learning with gradient boosting (CatBoost) to delineate healthy speech from speech of people with multiple sclerosis or Friedreich ataxia. Participants performed a diadochokinetic task where they repeated alternating syllables. We subjected 74 spectral and temporal prosodic features from the speech recordi..
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Awarded by National Health and Medical Research Council
Funding Acknowledgements
This work was undertaken in collaboration with the Melbourne Data Analytics Platform(MDAP) at The University of Melbourne. Data collection for the multiple sclerosis group was supported by a National Health and Medical Research Council (NHMRC) Project grant (#108546). Adam P. Vogel was supported by a NHMRC Fellowship (#1135683) and an Australian Research Council Future Fellowship (#220100253).(Corresponding author: Benjamin G. Schultz.)