Differentiating post-cancer from healthy tongue muscle coordination patterns during speech using deep learning

  • Woo J
  • Xing F
  • Prince J
  • et al.
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Abstract

The ability to differentiate post-cancer from healthy tongue muscle coordination patterns is necessary for the advancement of speech motor control theories and for the development of therapeutic and rehabilitative strategies. A deep learning approach is presented to classify two groups using muscle coordination patterns from magnetic resonance imaging (MRI). The proposed method uses tagged-MRI to track the tongue's internal tissue points and atlas-driven non-negative matrix factorization to reduce the dimensionality of the deformation fields. A convolutional neural network is applied to the classification task yielding an accuracy of 96.90%, offering the potential to the development of therapeutic or rehabilitative strategies in speech-related disorders.

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Woo, J., Xing, F., Prince, J. L., Stone, M., Green, J. R., Goldsmith, T., … El Fakhri, G. (2019). Differentiating post-cancer from healthy tongue muscle coordination patterns during speech using deep learning. The Journal of the Acoustical Society of America, 145(5), EL423–EL429. https://doi.org/10.1121/1.5103191

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