The Neural Frontier of Future Medical Imaging: A Review of Deep Learning for Brain Tumor Detection.

IF 2.7 Q3 IMAGING SCIENCE & PHOTOGRAPHIC TECHNOLOGY
Tarek Berghout
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引用次数: 0

Abstract

Brain tumor detection is crucial in medical research due to high mortality rates and treatment challenges. Early and accurate diagnosis is vital for improving patient outcomes, however, traditional methods, such as manual Magnetic Resonance Imaging (MRI) analysis, are often time-consuming and error-prone. The rise of deep learning has led to advanced models for automated brain tumor feature extraction, segmentation, and classification. Despite these advancements, comprehensive reviews synthesizing recent findings remain scarce. By analyzing over 100 research papers over past half-decade (2019-2024), this review fills that gap, exploring the latest methods and paradigms, summarizing key concepts, challenges, datasets, and offering insights into future directions for brain tumor detection using deep learning. This review also incorporates an analysis of previous reviews and targets three main aspects: feature extraction, segmentation, and classification. The results revealed that research primarily focuses on Convolutional Neural Networks (CNNs) and their variants, with a strong emphasis on transfer learning using pre-trained models. Other methods, such as Generative Adversarial Networks (GANs) and Autoencoders, are used for feature extraction, while Recurrent Neural Networks (RNNs) are employed for time-sequence modeling. Some models integrate with Internet of Things (IoT) frameworks or federated learning for real-time diagnostics and privacy, often paired with optimization algorithms. However, the adoption of eXplainable AI (XAI) remains limited, despite its importance in building trust in medical diagnostics. Finally, this review outlines future opportunities, focusing on image quality, underexplored deep learning techniques, expanding datasets, and exploring deeper learning representations and model behavior such as recurrent expansion to advance medical imaging diagnostics.

由于高死亡率和治疗难题,脑肿瘤检测在医学研究中至关重要。早期准确诊断对改善患者预后至关重要,然而,传统方法(如手动磁共振成像(MRI)分析)往往耗时且容易出错。深度学习的兴起催生了用于自动脑肿瘤特征提取、分割和分类的先进模型。尽管取得了这些进展,但综合最新研究成果的全面综述仍然很少。本综述通过分析过去半个世纪(2019-2024 年)的 100 多篇研究论文,填补了这一空白,探讨了最新的方法和范例,总结了关键概念、挑战和数据集,并对使用深度学习进行脑肿瘤检测的未来方向提出了见解。本综述还结合了对以往综述的分析,主要针对三个方面:特征提取、分割和分类。研究结果表明,研究主要集中在卷积神经网络(CNN)及其变体,重点强调使用预训练模型的迁移学习。其他方法,如生成对抗网络(GANs)和自动编码器,被用于特征提取,而循环神经网络(RNNs)被用于时序建模。有些模型集成了物联网(IoT)框架或联合学习,用于实时诊断和隐私保护,通常还搭配优化算法。然而,尽管可解释人工智能(XAI)在建立医疗诊断信任方面非常重要,但其应用仍然有限。最后,本综述概述了未来的机遇,重点关注图像质量、未充分探索的深度学习技术、扩展数据集,以及探索深度学习表示法和模型行为(如循环扩展),以推进医学影像诊断。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Journal of Imaging
Journal of Imaging Medicine-Radiology, Nuclear Medicine and Imaging
CiteScore
5.90
自引率
6.20%
发文量
303
审稿时长
7 weeks
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