Literature DB >> 35840774

Machine learning-enabled quantitative ultrasound techniques for tissue differentiation.

Shufan Yang1,2, Sandy Cochran1, Hannah Thomson3.   

Abstract

PURPOSE: Quantitative ultrasound (QUS) infers properties about tissue microstructure from backscattered radio-frequency ultrasound data. This paper describes how to implement the most practical QUS parameters using an ultrasound research system for tissue differentiation.
METHODS: This study first validated chicken liver and gizzard muscle as suitable acoustic phantoms for human brain and brain tumour tissues via measurement of the speed of sound and acoustic attenuation. A total of thirteen QUS parameters were estimated from twelve samples, each using data obtained with a transducer with a frequency of 5-11 MHz. Spectral parameters, i.e., effective scatterer diameter and acoustic concentration, were calculated from the backscattered power spectrum of the tissue, and echo envelope statistics were estimated by modelling the scattering inside the tissue as a homodyned K-distribution, yielding the scatterer clustering parameter α and the structure parameter κ. Standard deviation and higher-order moments were calculated from the echogenicity value assigned in conventional B-mode images.
RESULTS: The k-nearest neighbours algorithm was used to combine those parameters, which achieved 94.5% accuracy and 0.933 F1-score.
CONCLUSION: We were able to generate classification parametric images in near-real-time speed as a potential diagnostic tool in the operating room for the possible use for human brain tissue characterisation.
© 2022. The Author(s).

Entities:  

Keywords:  Binary classifier; Machine learning; Parametric imaging; Quantitative ultrasound; Tissue characterisation; Ultrasound phantoms

Year:  2022        PMID: 35840774     DOI: 10.1007/s10396-022-01230-6

Source DB:  PubMed          Journal:  J Med Ultrason (2001)        ISSN: 1346-4523            Impact factor:   1.878


  1 in total

Review 1.  The Art of Intraoperative Glioma Identification.

Authors:  Zoe Z Zhang; Lisa B E Shields; David A Sun; Yi Ping Zhang; Matthew A Hunt; Christopher B Shields
Journal:  Front Oncol       Date:  2015-07-30       Impact factor: 6.244

  1 in total

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