基于mri的脑肿瘤图像分割深度学习算法的发展。

Khaled Shal, M S Choudhry
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引用次数: 7

摘要

脑肿瘤纹理是神经放射学家从磁共振图像(mri)中提取最具挑战性的特征之一。高度异常的肿瘤如胶质瘤,由于其浸润性和快速扩散的性质,需要快速准确的诊断和医疗干预。因此,它们需要计算机辅助而不是人工方法。深度学习(DL)方法目前正在兴起,并已成为从股票市场分析到深空目标检测等多个领域的活跃研究领域。它们在脑肿瘤核磁共振特征提取方面具有很大的应用前景。卷积神经网络(CNN)架构是深度学习算法中最具影响力的家族之一,自首次成功以来,已经经历了深刻的变革。这提高了特征提取的质量和算法在各种脑肿瘤类型和等级上的通用性。本文综述了基于mri的脑肿瘤图像分割的解释和比较研究。首先,给出了研究背景和使用cnn进行脑MRI分割的典型流程链。其次,详细介绍了典型的CNN架构结构及其相对于其他机器学习算法的优势。为此目的提出的CNN架构被列举并根据其复杂性进行分类,然后使用考虑其使用的数据集的特定指标进行比较。
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Evolution of Deep Learning Algorithms for MRI-Based Brain Tumor Image Segmentation.

Brain tumor textures are among the most challenging features for neuroradiologists to extract from magnetic resonance images (MRIs). Exceptionally high-grade tumors such as gliomas require quick and precise diagnosis and medical intervention due to their infiltrative and fast-spreading nature. Therefore, they require computer assistance instead of manual methods. Deep learning (DL) methods are currently on the rise and have become an active field of research in several domains varying from stock market analysis to deep space object detection. They have very promising potential in brain tumor feature extraction from MRIs. Convolutional neural network (CNN) architectures, one of the most influential families of DL algorithms, have undergone a profound transformation since their first successes. This has led to increasing feature extraction quality and algorithm generalizability over various brain tumor types and grades. This review paper presents an explanatory and comparative survey on MRI-based brain tumor image segmentation. First, it provides the survey background and the typical process chain for brain MRI segmentation using CNNs. Second, it details the typical CNN architecture structure and its advantages over other machine learning algorithms. CNN architectures proposed for this purpose are enumerated and classified corresponding to their complexity, and then compared using specific metrics that consider the datasets they use.

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来源期刊
Critical Reviews in Biomedical Engineering
Critical Reviews in Biomedical Engineering Engineering-Biomedical Engineering
CiteScore
1.80
自引率
0.00%
发文量
25
期刊介绍: Biomedical engineering has been characterized as the application of concepts drawn from engineering, computing, communications, mathematics, and the physical sciences to scientific and applied problems in the field of medicine and biology. Concepts and methodologies in biomedical engineering extend throughout the medical and biological sciences. This journal attempts to critically review a wide range of research and applied activities in the field. More often than not, topics chosen for inclusion are concerned with research and practice issues of current interest. Experts writing each review bring together current knowledge and historical information that has led to the current state-of-the-art.
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