利用增强卷积神经网络改进MRI图像中脑肿瘤的分割

IF 0.7 Q3 COMPUTER SCIENCE, THEORY & METHODS International Journal of Advanced Computer Science and Applications Pub Date : 2023-01-01 DOI:10.14569/ijacsa.2023.0140473
Kabirat Sulaiman Ayomide, T. N. M. Aris, M. Zolkepli
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引用次数: 3

摘要

实现精确的肿瘤分割是准确诊断的必要条件。由于脑肿瘤分割需要大量的训练过程,减少训练时间对于及时治疗至关重要。研究重点是利用卷积神经网络增强MRI图像中脑肿瘤的分割,并利用MATLAB的GoogLeNet、各向异性扩散滤波、形态学运算和扇形向量机对MRI图像进行训练,减少训练时间。所提出的方法将允许对大量MRI图像数据进行有效的分析和管理,尽早可行的早期诊断,并协助分类正常,良性或恶性患者病例。SVM分类器用于在MR切片中找到肿瘤发展的簇,识别肿瘤细胞,并评估似乎存在的肿瘤的大小,以便诊断脑肿瘤。使用来自Figshare的数据集对所提出的方法进行评估,该数据集包括T1-CE MRI模式拍摄的图像的冠状、矢状和轴向视图。提高了二维肿瘤检测和分割的准确性,实现了更多的三维检测,并在系统记录中实现了98%的平均分类准确率。最后,采用GoogLeNet深度学习算法与卷积神经网络支持向量机(convolutional Neural NetworkSupport Vector Machines, CNN-SVM)深度学习的混合方法,提高肿瘤分类的准确率。评价结果表明,所提出的技术比目前使用的技术有效得多。在未来,使用人工神经网络增强分割将有助于更早、更精确地检测脑肿瘤。脑肿瘤的早期发现可以使患者、医疗保健提供者和整个医疗保健系统受益。它可以降低与治疗晚期肿瘤相关的医疗成本,并使研究人员能够更好地了解这种疾病并开发更有效的治疗方法。关键词:mri脑肿瘤;各向异性;分割;支持向量机分类器;卷积神经网络
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Improving Brain Tumor Segmentation in MRI Images through Enhanced Convolutional Neural Networks
Achieving precise tumor segmentation is essential for accurate diagnosis. Since brain tumors segmentation require a significant training process, reducing the training time is critical for timely treatment. The research focuses on enhancing brain tumor segmentation in MRI images by using Convolutional Neural Networks and reducing training time by using MATLAB's GoogLeNet, anisotropic diffusion filtering, morphological operation, and sector vector machine for MRI images. The proposed method will allow for efficient analysis and management of enormous amounts of MRI image data, the earliest practicable early diagnosis, and assistance in the classification of normal, benign, or malignant patient cases. The SVM Classifier is used to find a cluster of tumors development in an MR slice, identify tumor cells, and assess the size of the tumor that appears to be present in order to diagnose brain tumors. The proposed method is evaluated using a dataset from Figshare that includes coronal, sagittal, and axial views of images taken with a T1-CE MRI modality. The accuracy of 2D tumor detection and segmentation are increased, enabling more 3D detection, and achieving a mean classification accuracy of 98% across system records. Finally, a hybrid approach of GoogLeNet deep learning algorithm and Convolution Neural NetworkSupport Vector Machines (CNN-SVM) deep learning is performed to increase the accuracy of tumor classification. The evaluations show that the proposed technique is significantly more effective than those currently in use. In the future, enhancement of the segmentation using artificial neural networks will help in the earlier and more precise detection of brain tumors. Early detection of brain tumors can benefit patients, healthcare providers, and the healthcare system as a whole. It can reduce healthcare costs associated with treating advanced stage tumors, and enables researchers to better understand the disease and develop more effective treatments. Keywords—MRI brain tumor; anisotropic; segmentation; SVM classifier; convolutional neural network
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来源期刊
CiteScore
2.30
自引率
22.20%
发文量
519
期刊介绍: IJACSA is a scholarly computer science journal representing the best in research. Its mission is to provide an outlet for quality research to be publicised and published to a global audience. The journal aims to publish papers selected through rigorous double-blind peer review to ensure originality, timeliness, relevance, and readability. In sync with the Journal''s vision "to be a respected publication that publishes peer reviewed research articles, as well as review and survey papers contributed by International community of Authors", we have drawn reviewers and editors from Institutions and Universities across the globe. A double blind peer review process is conducted to ensure that we retain high standards. At IJACSA, we stand strong because we know that global challenges make way for new innovations, new ways and new talent. International Journal of Advanced Computer Science and Applications publishes carefully refereed research, review and survey papers which offer a significant contribution to the computer science literature, and which are of interest to a wide audience. Coverage extends to all main-stream branches of computer science and related applications
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