Deep neural network classification of in vivo burn injuries with different etiologies using terahertz time-domain spectral imaging

  • Osman O
  • Harris Z
  • Khani M
  • et al.
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Abstract

Thermal injuries can occur due to direct exposure to hot objects or liquids, flames, electricity, solar energy and several other sources. If the resulting injury is a deep partial thickness burn, the accuracy of a physician’s clinical assessment is as low as 50-76% in determining the healing outcome. In this study, we show that the Terahertz Portable Handheld Spectral Reflection (THz-PHASR) Scanner combined with a deep neural network classification algorithm can accurately differentiate between partial-, deep partial-, and full-thickness burns 1-hour post injury, regardless of the etiology, scanner geometry, or THz spectroscopy sampling method (ROC-AUC = 91%, 88%, and 86%, respectively). The neural network diagnostic method simplifies the classification process by directly using the pre-processed THz spectra and removing the need for any hyperspectral feature extraction. Our results show that deep learning methods based on THz time-domain spectroscopy (THz-TDS) measurements can be used to guide clinical treatment plans based on objective and accurate classification of burn injuries.

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Osman, O. B., Harris, Z. B., Khani, M. E., Zhou, J. W., Chen, A., Singer, A. J., & Hassan Arbab, M. (2022). Deep neural network classification of in vivo burn injuries with different etiologies using terahertz time-domain spectral imaging. Biomedical Optics Express, 13(4), 1855. https://doi.org/10.1364/boe.452257

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