From Speech to Sonography: Spectral Networks for Ultrasound Microstructure Classification.

Journal: IEEE transactions on bio-medical engineering
Published Date:

Abstract

The frequency dependence of backscattered radiofrequency (RF) signals produced by ultrasound scanners carries rich information related to the tissue microstructure (i.e., scatterer size, attenuation). This information can be sue to classify tissues based on microstructural changes associated to disease onset and progression. Conventional convolutional neural networks (CNNs) can learn this information directly from radio-frequency (RF) data, but they often struggle to achieve adequate frequency selectivity. This increases model complexity and convergence time, and limits generalization. To overcome these challenges, SincNet, originally developed for speech processing, was adapted to classify RF data based on differences in frequency properties. Rather than learning every filter coefficient, SincNet only learns each filter's low frequency and bandwidth, dramatically reducing the number of parameters and improving frequency resolution. For model interpretability, a GradientWeighted Filter Contribution is introduced, which highlights the importance of spectral bands. The approach was validated on three datasets: simulated data with different scatterer sizes, experimental phantom data, and in vivo data of rats which were fed a methionine and choline- deficient diet to develop liver steatosis, inflammation, and fibrosis. The modified SincNet consistently achieved the best results in material/tissue classifications.

Authors

  • Ali K Z Tehrani
  • An Tang
    Centre de recherche du Centre hospitalier de l'Université de Montréal (CRCHUM), Montreal, Canada.
  • Mirco Ravanelli
  • Guy Cloutier
  • Iman Rafati
  • Bich Ngoc Nguyen
  • Quoc-Huy Trinh
  • Ivan Rosado-Mendez
    Instituto de Fisica, Universidad Nacional Autónoma de México, Mexico City, Mexico.
  • Hassan Rivaz

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