Low-Cost 3-D Flow Estimation of Blood With Clutter

作者:Wei Siyuan*; Yang Ming; Zhou Jian; Sampson Richard; Kripfgans Oliver D; Fowlkes J Brian; Wenisch Thomas F; Chakrabarti Chaitali
来源:IEEE Transactions on Ultrasonics, Ferroelectrics, and Frequency Control, 2017, 64(5): 772-784.
DOI:10.1109/TUFFC.2017.2676091

摘要

Volumetric flow rate estimation is an important ultrasound medical imaging modality that is used for diagnosing cardiovascular diseases. Flow rates are obtained by integrating velocity estimates over a cross-sectional plane. Speckle tracking is a promising approach that overcomes the angle dependency of traditional Doppler methods, but suffers from poor lateral resolution. Recent work improves lateral velocity estimation accuracy by reconstructing a synthetic lateral phase (SLP) signal. However, the estimation accuracy of such approaches is compromised by the presence of clutter. Eigen-based clutter filtering has been shown to be effective in removing the clutter signal; but it is computationally expensive, precluding its use at high volume rates. In this paper, we propose low-complexity schemes for both velocity estimation and clutter filtering. We use a two-tiered motion estimation scheme to combine the low complexity sum-of-absolute-difference and SLP methods to achieve subpixel lateral accuracy. We reduce the complexity of eigen-based clutter filtering by processing in subgroups and replacing singular value decomposition with less compute-intensive power iteration and subspace iteration methods. Finally, to improve flow rate estimation accuracy, we use kernel power weighting when integrating the velocity estimates. We evaluate our method for fast-and slow-moving clutter for beam-to-flow angles of 90 degrees and 60 degrees using Field II simulations, demonstrating high estimation accuracy across scenarios. For instance, for a beam-to-flow angle of 90 degrees and fast-moving clutter, our estimation method provides a bias of -8.8% and standard deviation of 3.1% relative to the actual flow rate.

  • 出版日期2017-5