MAET-SAM: Magneto-Acousto-Electrical Tomography segmentation network based on the segment anything model

Magneto-Acousto-Electrical Tomography (MAET) is a hybrid imaging method that combines advantages of ultrasound imaging and electrical impedance tomography to image the electrical conductivity of biological tissues. In practical applications, different tissue or disease organization display various c...

Full description

Bibliographic Details
Published in:Mathematical Biosciences and Engineering
Main Authors: Shuaiyu Bu, Yuanyuan Li, Guoqiang Liu, Yifan Li
Format: Article
Language:English
Published: AIMS Press 2025-02-01
Subjects:
Online Access:https://www.aimspress.com/article/doi/10.3934/mbe.2025022
_version_ 1849717019434287104
author Shuaiyu Bu
Yuanyuan Li
Guoqiang Liu
Yifan Li
author_facet Shuaiyu Bu
Yuanyuan Li
Guoqiang Liu
Yifan Li
author_sort Shuaiyu Bu
collection DOAJ
container_title Mathematical Biosciences and Engineering
description Magneto-Acousto-Electrical Tomography (MAET) is a hybrid imaging method that combines advantages of ultrasound imaging and electrical impedance tomography to image the electrical conductivity of biological tissues. In practical applications, different tissue or disease organization display various conductivity traits. However, the conductivity map consists of overlapping signals measured at multiple locations, the reconstruction results are affected by noise, which results in blurred reconstruction boundaries, low contrast, and irregular artifact distributions. To improve the image resolution and reduce noise of MAET, a dataset of conductivity maps reconstructed from MAET was established, dubbed MAET-IMAGE. Based on this dataset, we proposed a MAET tomography segmentation network based on the Segment Anything Model (SAM), termed as MAET-SAM. Specifically, we froze the encoder weights of SAM to extract rich feature information of image and design, an adaptive decoder with no prompts. In the end, an end-to-end segmentation model for specific MAET images with MAET-IMAGE was proposed. Qualitative and quantitative experiments demonstrated that MAET-SAM outperformed traditional segmentation methods and segmentation models with initial weights in terms of MAET image segmentation performance, bringing new breakthroughs and advancements to the field of medical imaging analysis and clinical diagnosis.
format Article
id doaj-art-48dde490685d49a7b76b6a0b68984e7a
institution Directory of Open Access Journals
issn 1551-0018
language English
publishDate 2025-02-01
publisher AIMS Press
record_format Article
spelling doaj-art-48dde490685d49a7b76b6a0b68984e7a2025-08-20T01:54:34ZengAIMS PressMathematical Biosciences and Engineering1551-00182025-02-0122358560310.3934/mbe.2025022MAET-SAM: Magneto-Acousto-Electrical Tomography segmentation network based on the segment anything modelShuaiyu Bu0Yuanyuan Li1Guoqiang Liu2Yifan Li3State Grid Beijing Electric Power Company, Beijing 100031, ChinaInstitute of Electrical Engineering, Chinese Academy of Sciences, Beijing 100190, ChinaInstitute of Electrical Engineering, Chinese Academy of Sciences, Beijing 100190, ChinaChina Railway Communication and Signal Survey & Design Co., Beijing 100036, ChinaMagneto-Acousto-Electrical Tomography (MAET) is a hybrid imaging method that combines advantages of ultrasound imaging and electrical impedance tomography to image the electrical conductivity of biological tissues. In practical applications, different tissue or disease organization display various conductivity traits. However, the conductivity map consists of overlapping signals measured at multiple locations, the reconstruction results are affected by noise, which results in blurred reconstruction boundaries, low contrast, and irregular artifact distributions. To improve the image resolution and reduce noise of MAET, a dataset of conductivity maps reconstructed from MAET was established, dubbed MAET-IMAGE. Based on this dataset, we proposed a MAET tomography segmentation network based on the Segment Anything Model (SAM), termed as MAET-SAM. Specifically, we froze the encoder weights of SAM to extract rich feature information of image and design, an adaptive decoder with no prompts. In the end, an end-to-end segmentation model for specific MAET images with MAET-IMAGE was proposed. Qualitative and quantitative experiments demonstrated that MAET-SAM outperformed traditional segmentation methods and segmentation models with initial weights in terms of MAET image segmentation performance, bringing new breakthroughs and advancements to the field of medical imaging analysis and clinical diagnosis.https://www.aimspress.com/article/doi/10.3934/mbe.2025022maetimage segmentationsegment anything model (sam)
spellingShingle Shuaiyu Bu
Yuanyuan Li
Guoqiang Liu
Yifan Li
MAET-SAM: Magneto-Acousto-Electrical Tomography segmentation network based on the segment anything model
maet
image segmentation
segment anything model (sam)
title MAET-SAM: Magneto-Acousto-Electrical Tomography segmentation network based on the segment anything model
title_full MAET-SAM: Magneto-Acousto-Electrical Tomography segmentation network based on the segment anything model
title_fullStr MAET-SAM: Magneto-Acousto-Electrical Tomography segmentation network based on the segment anything model
title_full_unstemmed MAET-SAM: Magneto-Acousto-Electrical Tomography segmentation network based on the segment anything model
title_short MAET-SAM: Magneto-Acousto-Electrical Tomography segmentation network based on the segment anything model
title_sort maet sam magneto acousto electrical tomography segmentation network based on the segment anything model
topic maet
image segmentation
segment anything model (sam)
url https://www.aimspress.com/article/doi/10.3934/mbe.2025022
work_keys_str_mv AT shuaiyubu maetsammagnetoacoustoelectricaltomographysegmentationnetworkbasedonthesegmentanythingmodel
AT yuanyuanli maetsammagnetoacoustoelectricaltomographysegmentationnetworkbasedonthesegmentanythingmodel
AT guoqiangliu maetsammagnetoacoustoelectricaltomographysegmentationnetworkbasedonthesegmentanythingmodel
AT yifanli maetsammagnetoacoustoelectricaltomographysegmentationnetworkbasedonthesegmentanythingmodel