Automatic Frame Selection Using MLP Neural Network in Ultrasound Elastography
Abdelrahman Zayed, Hassan Rivaz

TL;DR
This paper presents an MLP-based method for automatically selecting optimal RF frame pairs in ultrasound elastography to improve strain image quality, trained on in-vivo data and tested on diverse datasets.
Contribution
Introduces a novel MLP classifier for automatic frame selection in elastography, enhancing strain image quality over traditional frame-picking methods.
Findings
Higher quality strain images achieved with the proposed method.
Fast testing phase of 1.9 ms for frame selection.
Effective on both in-vivo and phantom datasets.
Abstract
Ultrasound elastography estimates the mechanical properties of the tissue from two Radio-Frequency (RF) frames collected before and after tissue deformation due to an external or internal force. This work focuses on strain imaging in quasi-static elastography, where the tissue undergoes slow deformations and strain images are estimated as a surrogate for elasticity modulus. The quality of the strain image depends heavily on the underlying deformation, and even the best strain estimation algorithms cannot estimate a good strain image if the underlying deformation is not suitable. Herein, we introduce a new method for tracking the RF frames and selecting automatically the best possible pair. We achieve this by decomposing the axial displacement image into a linear combination of principal components (which are calculated offline) multiplied by their corresponding weights. We then use the…
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