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Automatic Segmentation for Analysis of Murine Cardiac Ultrasound and Photoacoustic Image Data Using Deep Learning.

Authors :
Leyba, Katherine A.
Chan, Hayley
Loesch, Olivia
Belec, Salomé
Sicard, Pierre
Goergen, Craig J.
Source :
Ultrasound in Medicine & Biology. Aug2024, Vol. 50 Issue 8, p1292-1297. 6p.
Publication Year :
2024

Abstract

Although there are methods to identify regions of interest (ROIs) from echocardiographic images of myocardial tissue, they are often time-consuming and difficult to create when image quality is poor. Further, while myocardial strain from ultrasound (US) images can be estimated, US alone cannot obtain functional information, such as oxygen saturation (sO 2). Photoacoustic (PA) imaging, however, can be used to quantify sO 2 levels within tissue non-invasively. Here, we leverage deep learning methods to improve segmentation of the anterior wall of the left ventricle and apply both strain and oxygen saturation analysis via segmentation of murine US and PA images. Data revealed that training on US/PA images using a U-Net deep neural network can be used to create reproducible ROIs of the anterior wall of the left ventricle in a murine image dataset. Accuracy and Dice score metrics were used to evaluate performance of the neural network on each image type. We report an accuracy of 97.3% and Dice score of 0.84 for ultrasound, 95.6% and 0.73 for photoacoustic, and 96.5% and 0.81 for combined ultrasound and photoacoustic images. Rapid segmentation via such methods can assist in quantification of strain and oxygenation. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
03015629
Volume :
50
Issue :
8
Database :
Academic Search Index
Journal :
Ultrasound in Medicine & Biology
Publication Type :
Academic Journal
Accession number :
177944666
Full Text :
https://doi.org/10.1016/j.ultrasmedbio.2024.05.001