Fast Strain Estimation and Frame Selection in Ultrasound Elastography using Machine Learning
Abdelrahman Zayed, Hassan Rivaz

TL;DR
This paper introduces PCA-GLUE, a machine learning-based method that significantly accelerates tissue displacement estimation in ultrasound elastography and improves frame pair selection for better strain imaging.
Contribution
The paper presents a novel PCA-GLUE approach that speeds up displacement estimation by over 10 times and introduces an MLP classifier for optimal frame pair selection.
Findings
PCA-GLUE reduces computation time by more than 10 times.
The method achieves accurate displacement estimation comparable to existing techniques.
An effective MLP classifier predicts suitable frame pairs for strain estimation.
Abstract
Ultrasound Elastography aims to determine the mechanical properties of the tissue by monitoring tissue deformation due to internal or external forces. Tissue deformations are estimated from ultrasound radio frequency (RF) signals and are often referred to as time delay estimation (TDE). Given two RF frames I1 and I2, we can compute a displacement image which shows the change in the position of each sample in I1 to a new position in I2. Two important challenges in TDE include high computational complexity and the difficulty in choosing suitable RF frames. Selecting suitable frames is of high importance because many pairs of RF frames either do not have acceptable deformation for extracting informative strain images or are decorrelated and deformation cannot be reliably estimated. Herein, we introduce a method that learns 12 displacement modes in quasi-static elastography by performing…
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Taxonomy
TopicsUltrasound Imaging and Elastography · Photoacoustic and Ultrasonic Imaging · Elasticity and Material Modeling
