학술논문

Machine Learning Approaches for Quantitative Viscoelastic Response (QVisR) Ultrasound
Document Type
Conference
Source
2020 IEEE International Ultrasonics Symposium (IUS) Ultrasonics Symposium (IUS),2020 IEEE International. :1-3 Sep, 2020
Subject
Bioengineering
Fields, Waves and Electromagnetics
Signal Processing and Analysis
Viscosity
Ultrasonic imaging
Force
Machine learning
Elasticity
Predictive models
Acoustics
Acoustic Radiation Force (ARF)
Viscoelastic Response (VisR)
Viscoelasticity
Elastography
Machine Learning
Language
ISSN
1948-5727
Abstract
We present a quantitative extension of Viscoelastic Response (VisR) ultrasound that estimates shear elastic and viscous moduli from on-axis VisR displacement profiles in silico. Isotropic, homogeneous, linearly viscoelastic materials ranging from 1.57-33.33 kPa shear elasticity and 0.0033-2.34 Pa.s shear viscosity subject to a VisR beamsequence at 26 focal depths were simulated. Multi-target regression machine learning models were used to estimate shear elasticity and shear viscosity given the displacement profile, focal depth, and axial depth. The best performing models achieve a shear elasticity RMSE of 0.29 kPa and a shear viscosity RMSE of 0.13 Pa.s when predictions were made on the test set. These results suggest that machine learning methods can be used to quantitatively estimate viscoelasticity from VisR displacement profiles.