Image-Based Metrics in Ultrasound for Estimation of Global Speed-of-Sound
Journal:
arXiv
Published Date:
Mar 18, 2025
Abstract
Accurate speed-of-sound (SoS) estimation is crucial for ultrasound image
formation, yet conventional systems often rely on an assumed value for imaging.
While several methods exist for SoS estimation, they typically depend on
complex physical models of acoustic propagation. We propose to leverage
conventional image analysis techniques and metrics, as a novel and simple
approach to estimate tissue SoS. We study eleven metrics in three categories
for assessing image quality, image similarity and multi-frame variation, by
testing them in numerical simulations and phantom experiments. Among
single-frame image quality metrics, conventional Focus and our proposed
Smoothed Threshold Tenengrad metrics achieved satisfactory accuracy, however
only when applied to compounded images. Image quality metrics were largely
surpassed by various image comparison metrics, which exhibited errors
consistently under 8 m/s even applied to a single pair of images. Particularly,
Mean Square Error is a computationally efficient alternative for global
estimation. Mutual Information and Correlation are found to be robust to
processing small image segments, making them suitable, e.g., for multi-layer
SoS estimation. The above metrics do not require access to raw channel data as
they can operate on post-beamformed data, and in the case of image quality
metrics they can operate on B-mode images, given that the beamforming SoS can
be controlled for beamforming using a multitude of values. These image analysis
based SoS estimation methods offer a computationally efficient and
data-accessible alternative to conventional physics-based methods, with
potential extensions to layered or local SoS imaging.