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使用 K 均值聚类和带有合成数据增强的深度学习进行分类的脑肿瘤分割。

Brain tumor segmentation using K-means clustering and deep learning with synthetic data augmentation for classification.

机构信息

Artificial Intelligence and Data Analytics Lab, CCIS Prince Sultan University, Riyadh, Saudi Arabia.

Department of Computer Science, Islamia College University, Peshawar, Pakistan.

出版信息

Microsc Res Tech. 2021 Jul;84(7):1389-1399. doi: 10.1002/jemt.23694. Epub 2021 Feb 1.

DOI:10.1002/jemt.23694
PMID:33524220
Abstract

Image processing plays a major role in neurologists' clinical diagnosis in the medical field. Several types of imagery are used for diagnostics, tumor segmentation, and classification. Magnetic resonance imaging (MRI) is favored among all modalities due to its noninvasive nature and better representation of internal tumor information. Indeed, early diagnosis may increase the chances of being lifesaving. However, the manual dissection and classification of brain tumors based on MRI is vulnerable to error, time-consuming, and formidable task. Consequently, this article presents a deep learning approach to classify brain tumors using an MRI data analysis to assist practitioners. The recommended method comprises three main phases: preprocessing, brain tumor segmentation using k-means clustering, and finally, classify tumors into their respective categories (benign/malignant) using MRI data through a finetuned VGG19 (i.e., 19 layered Visual Geometric Group) model. Moreover, for better classification accuracy, the synthetic data augmentation concept i s introduced to increase available data size for classifier training. The proposed approach was evaluated on BraTS 2015 benchmarks data sets through rigorous experiments. The results endorse the effectiveness of the proposed strategy and it achieved better accuracy compared to the previously reported state of the art techniques.

摘要

图像处理在医学领域的神经科医生临床诊断中起着重要作用。有几种类型的图像用于诊断、肿瘤分割和分类。磁共振成像(MRI)因其非侵入性和更好地表示内部肿瘤信息而在所有模态中受到青睐。事实上,早期诊断可能会增加挽救生命的机会。然而,基于 MRI 的脑肿瘤的手动解剖和分类容易出错,而且耗时费力。因此,本文提出了一种基于深度学习的方法,使用 MRI 数据分析来协助医生对脑肿瘤进行分类。建议的方法包括三个主要阶段:预处理、使用 k-均值聚类的脑肿瘤分割,以及最后使用经过微调的 VGG19(即 19 层视觉几何组)模型通过 MRI 数据将肿瘤分类到各自的类别(良性/恶性)。此外,为了提高分类准确性,引入了合成数据扩充概念,以增加分类器训练的可用数据量。通过严格的实验,在 BraTS 2015 基准数据集上评估了所提出的方法。结果证实了所提出策略的有效性,并且与之前报道的最新技术相比,它实现了更好的准确性。

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