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一种通过端到端视觉Transformer-CNN架构检测脑肿瘤及其分类的新方法。

A novel approach for the detection of brain tumor and its classification via end-to-end vision transformer - CNN architecture.

作者信息

Chandraprabha K, Ganesan L, Baskaran K

机构信息

Department of Computer Science and Engineering, Alagappa Chettiar Government College of Engineering and Technology, Karaikudi, Tamil Nadu, India.

Department of Computer Science and Engineering (CSE), Alagappa Chettiar Government College of Engineering and Technology, Karaikudi, Tamil Nadu, India.

出版信息

Front Oncol. 2025 Mar 10;15:1508451. doi: 10.3389/fonc.2025.1508451. eCollection 2025.

Abstract

The diagnosis and treatment of brain tumors can be challenging. They are a main cause of central nervous system disorder and uncontrolled proliferation. Early detection is also very important to ensure that the intervention is successful and delayed diagnosis is a significant factor contributing to lower survival rates for specific types. This is because the doctors lack the necessary experience and expertise to carry out this procedure. Classification systems are required for the detection of brain tumor and Histopathology is a vital part of brain tumor diagnosis. Despite the numerous automated tools that have been used in this field, surgeons still need to manually generate annotations for the areas of interest in the images. The report presents a vision transformer that can analyze brain tumors utilizing the Convolution Neural Network framework. The study's goal is to create an image that can distinguish malignant tumors in the brain. The experiments are performed on a dataset of 4,855 image featuring various tumor classes. This model is able to achieve a 99.64% accuracy. It has a 95% confidence interval and a 99.42% accuracy rate. The proposed method is more accurate than current computer vision techniques which only aim to achieve an accuracy range between 95% and 98%. The results of our study indicate that the use of the ViT model could lead to better treatment and diagnosis of brain tumors. The models performance is evaluated according to various criteria, such as sensitivity, precision, recall, and specificity. The suggested technique demonstrated superior results over current methods. The research results reinforced the utilization of the ViT model for identifying brain tumors. The information it offers will serve as a basis for further research on this area.

摘要

脑肿瘤的诊断和治疗具有挑战性。它们是中枢神经系统紊乱和不受控制的细胞增殖的主要原因。早期检测对于确保干预成功也非常重要,而诊断延迟是导致特定类型脑肿瘤生存率降低的一个重要因素。这是因为医生缺乏进行该程序所需的经验和专业知识。脑肿瘤的检测需要分类系统,而组织病理学是脑肿瘤诊断的重要组成部分。尽管该领域已经使用了众多自动化工具,但外科医生仍需要手动为图像中的感兴趣区域生成注释。该报告提出了一种可以利用卷积神经网络框架分析脑肿瘤的视觉Transformer。该研究的目标是创建一种能够区分脑内恶性肿瘤的图像。实验是在一个包含4855张具有各种肿瘤类别的图像数据集上进行的。该模型能够达到99.64%的准确率。它有95%的置信区间和99.42%的准确率。所提出的方法比目前仅旨在达到95%至98%准确率范围的计算机视觉技术更准确。我们的研究结果表明,使用ViT模型可以带来更好的脑肿瘤治疗和诊断。根据敏感性、精确性、召回率和特异性等各种标准对模型性能进行评估。所建议的技术比当前方法显示出更好的结果。研究结果加强了ViT模型在识别脑肿瘤方面的应用。它提供的信息将作为该领域进一步研究的基础。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/4ad0/11930840/dd44504c1d51/fonc-15-1508451-g001.jpg

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