A Novel Fragmentation-based Approach for Accurate Segmentation of Small-Sized Brain Tumors in MRI Images

Тип публикацииJournal Article
Дата публикации2025-03-27
scimago Q3
wos Q4
БС3
SJR0.314
CiteScore1.9
Impact factor1.1
ISSN15734056, 18756603
Краткое описание
Aims:

In the dynamic landscape of healthcare, integrating Artificial Intelligence paradigms has become essential for sophisticated brain image analysis, especially in tumor detection. This research addresses the need for heightened learning precision in handling sensitive medical images by introducing the Fragmented Segment Detection Technique.

Background:

The ever-evolving healthcare landscape demands advanced methods for brain image analysis, particularly in detecting tumors. This study responds to this need by introducing the Feature Segmentation and Detection Technique (FSDT), a novel approach designed to identify brain tumors precisely using MRI images. The focus is on enhancing detection accuracy, even for diminutive tumors. The primary objective of this study is to introduce and evaluate the efficacy of FSDT in identifying and sizing brain tumors through advanced medical image analysis. The proposed technique utilizes cross-section segmentation and pixel distribution analysis to improve detection accuracy, particularly in size-based tumor detection scenarios.

Methods:

The proposed technique commences by fragmenting the input through cross-section segmentation, enabling meticulous separation of pixel distribution in various sections. A Convolutional Neural Network then independently operates sequentially on the minimum and maximum representations. The segmented cross-section feature, exhibiting maximum accuracy, is employed in the neural network training process. Finetuning of the neural network optimizes feature distribution and pixel arrangements, specifically in consecutive size-based tumor detection scenarios.

Results:

The FSDT employs cross-sectional segmentation and pixel distribution analysis to enhance detection accuracy by leveraging a diverse dataset encompassing central nervous system CNS tumors. Comparative evaluations against existing methods, including ERV-Net, MRCNN, and ENet- B0, reveal FSDT's superiority in accuracy, training rate, analysis ratio, precision, recall, F1-score, and computational efficiency. The proposed technique demonstrates a remarkable 10.45% increase in accuracy, 14.12% in training rate, and a 10.78% reduction in analysis time.

Conclusion:

The proposed FSDT emerges as a promising solution for advancing the accurate identification and sizing of brain tumors through cutting-edge medical image analysis. The demonstrated improvements in accuracy, training rate, and analysis time showcase its potential for effective realworld healthcare applications.

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ГОСТ |
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Anjum M. et al. A Novel Fragmentation-based Approach for Accurate Segmentation of Small-Sized Brain Tumors in MRI Images // Current Medical Imaging Reviews. 2025. Vol. 21.
ГОСТ со всеми авторами (до 50) Скопировать
Anjum M., Shahab S., Ahmad S., Whangbo T. A Novel Fragmentation-based Approach for Accurate Segmentation of Small-Sized Brain Tumors in MRI Images // Current Medical Imaging Reviews. 2025. Vol. 21.
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TY - JOUR
DO - 10.2174/0115734056305784240821045425
UR - https://www.eurekaselect.com/240007/article
TI - A Novel Fragmentation-based Approach for Accurate Segmentation of Small-Sized Brain Tumors in MRI Images
T2 - Current Medical Imaging Reviews
AU - Anjum, Mohd
AU - Shahab, Sana
AU - Ahmad, Shabir
AU - Whangbo, Taegkeun
PY - 2025
DA - 2025/03/27
PB - Bentham Science Publishers Ltd.
VL - 21
SN - 1573-4056
SN - 1875-6603
ER -
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@article{2025_Anjum,
author = {Mohd Anjum and Sana Shahab and Shabir Ahmad and Taegkeun Whangbo},
title = {A Novel Fragmentation-based Approach for Accurate Segmentation of Small-Sized Brain Tumors in MRI Images},
journal = {Current Medical Imaging Reviews},
year = {2025},
volume = {21},
publisher = {Bentham Science Publishers Ltd.},
month = {mar},
url = {https://www.eurekaselect.com/240007/article},
doi = {10.2174/0115734056305784240821045425}
}