Deep-learning-based separation of shallow and deep layer blood flow rates in diffuse correlation spectroscopy

  • Nakabayashi M
  • Liu S
  • Broti N
  • et al.
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Abstract

Diffuse correlation spectroscopy faces challenges concerning the contamination of cutaneous and deep tissue blood flow. We propose a long short-term memory network to directly quantify the flow rates of shallow and deep-layer tissues. By exploiting the different contributions of shallow and deep-layer flow rates to auto-correlation functions, we accurately predict the shallow and deep-layer flow rates (RMSE = 0.047 and 0.034 ml/min/100 g of simulated tissue, R 2 = 0.99 and 0.99, respectively) in a two-layer flow phantom experiment. This approach is useful in evaluating the blood flow responses of active muscles, where both cutaneous and deep-muscle blood flow increase with exercise.

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Nakabayashi, M., Liu, S., Broti, N. M., Ichinose, M., & Ono, Y. (2023). Deep-learning-based separation of shallow and deep layer blood flow rates in diffuse correlation spectroscopy. Biomedical Optics Express, 14(10), 5358. https://doi.org/10.1364/boe.498693

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