结合PCA-ADE的DieT Transformer模型用于高级多类型脑肿瘤的分类

Mohammad Amin , Khalid M.O. Nahar , Hasan Gharaibeh , Ahmad Nasayreh , Neda'a Alsalmanc , Alaa Alomar , Majd Malkawi , Noor Alqasem , Aseel Smerat , Raed Abu Zitar , Shawd Nusier , Absalom E. Ezugwu , Laith Abualigah
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引用次数: 0

摘要

早期准确诊断脑肿瘤对改善患者预后和优化治疗策略至关重要。长期脑损伤是脑内恶性或非恶性组织异常增殖的结果。核磁共振成像是检测脑肿瘤最常用的方法之一。专业人士在进行核磁共振过滤(MRI过滤是增强核磁共振扫描以供放射科医生解释的过程)后对患者进行身体评估,以确定他们是否患有脑肿瘤。由于不同的专家使用不同的框架对相同的MRI图像做出判断,他们的分析可能会产生相互矛盾的结果。此外,仅仅检测肿瘤是不够的。不一致的诊断可能导致治疗延误,影响生存率和护理质量。诊断病人的肿瘤也很重要,这样治疗才能尽快开始。在本研究中,我们利用一种前沿的方法研究了脑肿瘤的多类别分类,包括使用DieT Transformer模型从图像中提取特征,使用PCA进行降维,以及使用ADE算法进行特征选择。该模型在该出版物中被称为ADE_DieT,准确率为96.09%。此外,本文还分析了各种预训练模型的性能,包括MobileNetV3、NasNet、ResNet50、VGG16、VGG19和DeiT。提出的方法通过使用MRI数据帮助快速准确地识别脑肿瘤,缩短了临床医生手动诊断所需的时间。在肿瘤学中,这很重要,因为它允许早期治疗。将ADE_DieT集成到临床工作流程中可以通过缩短诊断时间和增强诊断一致性来支持放射科医生。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
DieT Transformer model with PCA-ADE integration for advanced multi-class brain tumor classification
Early and accurate diagnosis of brain tumors is crucial to improving patient outcomes and optimizing treatment strategies. Long-term brain injury results from aberrant proliferation of either malignant or nonmalignant tissues in the brain. MRIs, or magnetic resonance imaging, are one of the most used approaches for detecting brain tumors. Professionals physically evaluate people after they have had MRI filtering, the process of enhancing MRI scans for radiologist interpretation, to establish if they have a brain tumor. Because different specialists use different frames to make judgments on the same MRI image, their analyses may yield contradictory results. Furthermore, simply detecting a tumor is insufficient. Inconsistent diagnoses can lead to delays in treatment, impacting survival rates and quality of care. It is also crucial to diagnose the patient's tumor so that treatment can begin as soon as possible. In this research, we investigate the multi-class classification of brain tumors utilizing a cutting-edge methodology that includes feature extraction from pictures using the DieT Transformer model, dimensionality reduction with PCA, and feature selection using the ADE algorithm. The proposed model, known in the publication as ADE_DieT, obtained an accuracy of 96.09 %. In addition, this article analyzes the performance of various pre-trained models, including MobileNetV3, NasNet, ResNet50, VGG16, VGG19, and DeiT. The proposed approach shortens the time required for manual diagnosis by clinicians by assisting in the rapid and accurate identification of brain tumors using MRI data. In oncology, this is important since it allows for early treatment. Integrating ADE_DieT into clinical workflows can support radiologists by reducing diagnosis time and enhancing diagnostic consistency.
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来源期刊
Intelligence-based medicine
Intelligence-based medicine Health Informatics
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