Latif Ghazanfar, Bashar Abul, Awang Iskandar D N F, Mohammad Nazeeruddin, Brahim Ghassen Ben, Alghazo Jaafar M
Computer Science Department, Prince Mohammad Bin Fahd University, Al Khobar, Saudi Arabia.
Université du Québec a Chicoutimi, 555 boulevard de l'Université, Chicoutimi, Saguenay, QC, G7H2B1, Canada.
Med Biol Eng Comput. 2023 Jan;61(1):45-59. doi: 10.1007/s11517-022-02687-w. Epub 2022 Nov 2.
Early detection and diagnosis of brain tumors are essential for early intervention and eventually successful treatment plans leading to either a full recovery or an increase in the patient lifespan. However, diagnosis of brain tumors is not an easy task since it requires highly skilled professionals, making this procedure both costly and time-consuming. The diagnosis process relying on MR images gets even harder in the presence of similar objects in terms of their density, size, and shape. No matter how skilled professionals are, their task is still prone to human error. The main aim of this work is to propose a system that can automatically classify and diagnose glioma brain tumors into one of the four tumor types: (1) necrosis, (2) edema, (3) enhancing, and (4) non-enhancing. In this paper, we propose a combined texture discrete wavelet transform (DWT) and statistical features based on the first- and second-order features for the accurate classification and diagnosis of multiclass glioma tumors. Four well-known classifiers, namely, support vector machines (SVM), random forest (RF), multilayer perceptron (MLP), and naïve Bayes (NB), are used for classification. The BraTS 2018 dataset is used for the experiments, and with the combined DWT and statistical features, the RF classifier achieved the highest average accuracy whether for separated modalities or combined modalities. The highest average accuracy of 89.59% and 90.28% for HGG and LGG, respectively, was reported in this paper. It has also been observed that the proposed method outperforms similar existing methods reported in the extant literature.
脑肿瘤的早期检测和诊断对于早期干预以及最终制定成功的治疗方案至关重要,这些方案能够带来完全康复或延长患者寿命。然而,脑肿瘤的诊断并非易事,因为它需要高技能的专业人员,这使得该过程既 costly 又耗时。在存在密度、大小和形状相似物体的情况下,依靠磁共振图像的诊断过程变得更加困难。无论专业人员多么熟练,他们的任务仍然容易出现人为错误。这项工作的主要目的是提出一种系统,该系统可以将胶质瘤脑肿瘤自动分类并诊断为四种肿瘤类型之一:(1) 坏死,(2) 水肿,(3) 强化,和 (4) 非强化。在本文中,我们基于一阶和二阶特征提出了一种结合纹理离散小波变换 (DWT) 和统计特征的方法,用于多类胶质瘤肿瘤的准确分类和诊断。使用了四种著名的分类器,即支持向量机 (SVM)、随机森林 (RF)、多层感知器 (MLP) 和朴素贝叶斯 (NB) 进行分类。实验使用了 BraTS 2018 数据集,并且结合 DWT 和统计特征,无论是对于分离的模态还是组合的模态,RF 分类器都实现了最高的平均准确率。本文分别报告了 HGG 和 LGG 的最高平均准确率,分别为 89.59% 和 90.28%。还观察到,所提出的方法优于现有文献中报道的类似现有方法。