基于MRI的胶质瘤低级别和高级别检测与分类

Qurat ul Ain, Iqra Duaa, Komal Haroon, Faisal Amin, Muhammad Zia ur Rehman
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引用次数: 3

摘要

脑肿瘤是人类已知的扩散速度最快的肿瘤之一。最严重、最危险的肿瘤是脑瘤。然而,如果早期诊断,脑肿瘤患者有更高的生存机会,这要感谢简单和廉价的治疗。放射科专家、设备和活组织检查是诊断脑肿瘤的传统方法。事实证明,机器学习为早期识别脑肿瘤提供了更准确的前沿方法,避免了昂贵的诊断和不必要的活检,并协助放射科医生。利用机器学习方法,本研究提出了一种脑肿瘤分类和分割技术,分为HGG和LGG (High-Grade Glioma & Low-Grade Glioma)。人工智能方法面临的最不灵活和最具创新性的挑战之一是利用图像处理和机器学习进行医学诊断。该项目涉及MRI脑图像的预处理、边缘检测、分割、特征提取和分类。采用中值滤波对图像进行预处理,并在边缘检测阶段采用精细边缘检测,以检测精度最佳的边缘检测器。然后,采用k均值聚类技术对MR图像进行分割。然而,提取了一些重要的特征,包括用于纹理识别的GLCM特征。最后,在分类阶段,使用支持向量机(SVM)和k近邻(KNN)分类器。在使用这些分类器后,我们将肿瘤区分为HGG或LGG。为了确定大脑的MRI图像是否有肿瘤,并将其分类为HGG或LGG,应用了机器学习方法。目的是通过采用机器学习方法,开发一个能够更好地从MRI图像中检测肿瘤的系统,作为实时工具使用。在现有的BRATS 2019数据集上使用MATLAB环境对所提出的方法进行了验证。然后,为了说明支持向量机和KNN分类器的性能,经常使用混淆矩阵。SVM分类器的最大准确率达到92%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
MRI Based Glioma Detection and Classification into Low-grade and High-Grade Gliomas
Brain tumors are one of the most rapidly spreading types of tumors known to humans. The worst and most dangerous type of tumor is a brain tumor. However, if diagnosed early, patients with brain tumors have a higher chance of survival acknowledgments to simple and inexpensive treatments. Expert radiologists, equipment, and biopsies are used in the traditional method of diagnosing a brain tumor. Machine learning has proved to deliver cutting-edge methods for early identification of brain tumors with better accuracies, avoiding costly diagnoses and unnecessary biopsies and assisting radiologists. Using a machine learning approach, this study proposes a technique for brain tumor classification and segmentation as HGG and LGG (High-Grade Glioma & Low-Grade Glioma). One of the most inflexible and innovative challenges confronting artificial intelligence approaches is medical diagnostics utilizing image processing and machine learning. The project involves the preprocessing, edge detection, segmentation, feature extraction, and classification of MRI brain images. The preprocessing is implemented by using median filter and canny edge detection is adapted in edge detection stage to inspect the best performing edge detector in terms of accuracy. Then, the MR image is segmented by K-means clustering technique. However, some of the important features are extracted including GLCM features for texture identification. Finally, in the classification phase, the Support Vector Machine (SVM) and k-nearest neighbors (KNN) classifiers are used. After using these classifiers, we distinguished the tumors as HGG or LGG. To determine whether an MRI image of the brain has a tumor and to classify as HGG or LGG, a machine learning methodology is applied. The aim is to develop a system with better tumor detection from MRI images to be used as a tool in real time by employing machine learning approach. The proposed method is validated using the MATLAB environment on the available BRATS 2019 dataset. Then, to illustrate the performance of SVM and KNN classifiers, a confusion matrix is frequently used. The SVM classifier achieves a maximum accuracy of 92%.
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