A systematic review of lightweight transformer models for medical image segmentation

Finding, assessing, and synthesizing studies on lightweight transformer models for medical picture segmentation is the goal of this SLR. Accuracy and efficiency in medical image processing and analysis are becoming more and more crucial as the amount of medical data increases. It has been demonstrat...

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Main Authors: Mangkunegara Iis Setiawan, Setyawati Martyarini Budi, Purwono, Aboobaider Burhanuddin bin Mohd
Format: Article
Language:English
Published: EDP Sciences 2025-01-01
Series:BIO Web of Conferences
Online Access:https://www.bio-conferences.org/articles/bioconf/pdf/2025/03/bioconf_ichbs2025_01036.pdf
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author Mangkunegara Iis Setiawan
Setyawati Martyarini Budi
Purwono
Aboobaider Burhanuddin bin Mohd
author_facet Mangkunegara Iis Setiawan
Setyawati Martyarini Budi
Purwono
Aboobaider Burhanuddin bin Mohd
author_sort Mangkunegara Iis Setiawan
collection DOAJ
description Finding, assessing, and synthesizing studies on lightweight transformer models for medical picture segmentation is the goal of this SLR. Accuracy and efficiency in medical image processing and analysis are becoming more and more crucial as the amount of medical data increases. It has been demonstrated that lightweight transformer models have a lot of promise for producing precise and quick outcomes while using fewer computer resources. Several lightweight transformer models for medical picture segmentation have been examined in this paper. The findings demonstrate that, in comparison to traditional techniques, these models offer notable gains in medical image segmentation accuracy and efficiency. The need for improved generalization and testing on a wider range of datasets are among the difficulties noted. To overcome these obstacles and broaden the use of lightweight transformer models in diverse medical settings, more investigation is required. As a result, this review offers significant insights for future research and helpful advice for researchers and practitioners in creating and deploying lightweight transformer models for medical image segmentation.
format Article
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institution Kabale University
issn 2117-4458
language English
publishDate 2025-01-01
publisher EDP Sciences
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series BIO Web of Conferences
spelling doaj-art-bd7b5164c12143f78ed828d60996c35c2025-02-05T10:42:50ZengEDP SciencesBIO Web of Conferences2117-44582025-01-011520103610.1051/bioconf/202515201036bioconf_ichbs2025_01036A systematic review of lightweight transformer models for medical image segmentationMangkunegara Iis Setiawan0Setyawati Martyarini Budi1Purwono2Aboobaider Burhanuddin bin Mohd3Faculty of Social Sciences, Universitas Harapan BangsaFaculty of Health Sciences, Universitas Harapan BangsaFaculty of Social Sciences, Universitas Harapan BangsaFaculty of Information and Communication Technology, Universitas Teknikal MalaysiaFinding, assessing, and synthesizing studies on lightweight transformer models for medical picture segmentation is the goal of this SLR. Accuracy and efficiency in medical image processing and analysis are becoming more and more crucial as the amount of medical data increases. It has been demonstrated that lightweight transformer models have a lot of promise for producing precise and quick outcomes while using fewer computer resources. Several lightweight transformer models for medical picture segmentation have been examined in this paper. The findings demonstrate that, in comparison to traditional techniques, these models offer notable gains in medical image segmentation accuracy and efficiency. The need for improved generalization and testing on a wider range of datasets are among the difficulties noted. To overcome these obstacles and broaden the use of lightweight transformer models in diverse medical settings, more investigation is required. As a result, this review offers significant insights for future research and helpful advice for researchers and practitioners in creating and deploying lightweight transformer models for medical image segmentation.https://www.bio-conferences.org/articles/bioconf/pdf/2025/03/bioconf_ichbs2025_01036.pdf
spellingShingle Mangkunegara Iis Setiawan
Setyawati Martyarini Budi
Purwono
Aboobaider Burhanuddin bin Mohd
A systematic review of lightweight transformer models for medical image segmentation
BIO Web of Conferences
title A systematic review of lightweight transformer models for medical image segmentation
title_full A systematic review of lightweight transformer models for medical image segmentation
title_fullStr A systematic review of lightweight transformer models for medical image segmentation
title_full_unstemmed A systematic review of lightweight transformer models for medical image segmentation
title_short A systematic review of lightweight transformer models for medical image segmentation
title_sort systematic review of lightweight transformer models for medical image segmentation
url https://www.bio-conferences.org/articles/bioconf/pdf/2025/03/bioconf_ichbs2025_01036.pdf
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