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使用机器学习、卷积神经网络、胶囊神经网络和视觉变换器进行脑肿瘤诊断并应用于磁共振成像:一项综述。

Brain Tumor Diagnosis Using Machine Learning, Convolutional Neural Networks, Capsule Neural Networks and Vision Transformers, Applied to MRI: A Survey.

作者信息

Akinyelu Andronicus A, Zaccagna Fulvio, Grist James T, Castelli Mauro, Rundo Leonardo

机构信息

NOVA Information Management School (NOVA IMS), Universidade NOVA de Lisboa, Campus de Campolide, 1070-312 Lisboa, Portugal.

Department of Computer Science and Informatics, University of the Free State, Phuthaditjhaba 9866, South Africa.

出版信息

J Imaging. 2022 Jul 22;8(8):205. doi: 10.3390/jimaging8080205.

DOI:10.3390/jimaging8080205
PMID:35893083
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC9331677/
Abstract

Management of brain tumors is based on clinical and radiological information with presumed grade dictating treatment. Hence, a non-invasive assessment of tumor grade is of paramount importance to choose the best treatment plan. Convolutional Neural Networks (CNNs) represent one of the effective Deep Learning (DL)-based techniques that have been used for brain tumor diagnosis. However, they are unable to handle input modifications effectively. Capsule neural networks (CapsNets) are a novel type of machine learning (ML) architecture that was recently developed to address the drawbacks of CNNs. CapsNets are resistant to rotations and affine translations, which is beneficial when processing medical imaging datasets. Moreover, Vision Transformers (ViT)-based solutions have been very recently proposed to address the issue of long-range dependency in CNNs. This survey provides a comprehensive overview of brain tumor classification and segmentation techniques, with a focus on ML-based, CNN-based, CapsNet-based, and ViT-based techniques. The survey highlights the fundamental contributions of recent studies and the performance of state-of-the-art techniques. Moreover, we present an in-depth discussion of crucial issues and open challenges. We also identify some key limitations and promising future research directions. We envisage that this survey shall serve as a good springboard for further study.

摘要

脑肿瘤的管理基于临床和放射学信息,假定的分级决定治疗方案。因此,对肿瘤分级进行非侵入性评估对于选择最佳治疗方案至关重要。卷积神经网络(CNN)是基于深度学习(DL)的有效技术之一,已用于脑肿瘤诊断。然而,它们无法有效地处理输入的变化。胶囊神经网络(CapsNets)是一种新型的机器学习(ML)架构,最近被开发出来以解决CNN的缺点。CapsNets对旋转和平移具有抗性,这在处理医学成像数据集时很有帮助。此外,最近有人提出基于视觉Transformer(ViT)的解决方案来解决CNN中的长程依赖问题。本综述全面概述了脑肿瘤分类和分割技术,重点介绍了基于ML、CNN、CapsNet和ViT的技术。该综述突出了近期研究的基本贡献和当前最先进技术的性能。此外,我们对关键问题和开放挑战进行了深入讨论。我们还确定了一些关键限制和有前景的未来研究方向。我们设想本综述将成为进一步研究的良好跳板。

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