Ultra-fast ultrasound blood flow velocimetry for carotid artery with deep learning.

Journal: Artificial intelligence in medicine
PMID:

Abstract

Accurate measurement of blood flow velocity is important for the prevention and early diagnosis of atherosclerosis. However, due to the uncertainty of parameter settings, the autocorrelation velocimetry methods based on clutter filtering are prone to incorrectly filter out the near-wall blood flow signal, resulting in poor velocimetric accuracy. In addition, the Doppler coherent compounding acts as a low-pass filter, which also leads to low values of blood flow velocity estimated by the above methods. Motivated by this status quo, here we propose a deep learning estimator that combines clutter filtering and blood flow velocimetry based on the adaptive property of one-dimensional convolutional neural network (1DCNN). The estimator is operated by first extracting the blood flow signal from the original Doppler echo signal through an affine transformation of the 1D convolution, and then converting the extracted signal into the desired blood flow velocity using a linear transformation function. The effectiveness of the proposed method is verified by simulation as well as in vivo carotid artery data. Compared with typical velocimetry methods such as high-pass filtering (HPF) and singular value decomposition (SVD), the results show that the normalized root means square error (NRMSE) obtained by 1DCNN is reduced by 54.99 % and 53.50 % for forward blood flow velocimetry, and 70.99 % and 69.50 % for reverse blood flow velocimetry, respectively. Consistently, the in vivo measurements demonstrate that the goodness-of-fit of the proposed estimator is improved by 8.72 % and 4.74 % for five subjects. Moreover, the estimation time consumed by 1DCNN is greatly reduced, which costs only 2.91 % of the time of HPF and 12.83 % of the time of SVD. In conclusion, the proposed estimator is a better alternative to the current blood flow velocimetry, and is capable of providing more accurate diagnosis information for vascular diseases in clinical applications.

Authors

  • Bingbing He
    Department of Electronic Engineering, Information School, Yunnan University, Kunming, Yunnan 650091, China.
  • Jian Lei
    Department of Electronic Engineering, Information School, Yunnan University, Kunming 650091, China.
  • Xun Lang
    Department of Electronic Engineering, Information School, Yunnan University, Kunming, Yunnan 650091, China.
  • Zhiyao Li
    The Third Affiliated Hospital of Kunming Medical University, Kunming, Yunnan 650031, China.
  • Wang Cui
    Department of Electronic Engineering, Information School, Yunnan University, Kunming 650091, China.
  • Yufeng Zhang