Classification of 3D-DWT Features of Brain Tumours with SVM

Mücahid Barstuğan
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Abstract

Brain tumours are one of the most challenging medical conditions to diagnose and treat. Accurate and timely classification of brain tumours is critical for effective treatment planning and patient management. Machine learning algorithms have shown great promise in improving the accuracy of brain tumour classification. This study implemented high-grade glioma (HGG) and low-grade glioma (LGG) classification on four different 3D-MRI (magnetic resonance imaging) scans (FLAIR, T1, T1c, T2). By using four different scans, 15 different combinations were created for classification process. 3D Discrete Wavelet Transform was used to transform tumour images for feature extraction stage. 36 different wavelet types were used for image transformation. First Order Statistics (mean, variance, kurtosis, skewness, entropy, energy) were extracted from transformed images of 36 wavelet types. Support Vector Machines (SVM) algorithm classified the FOS features that were obtained on BraTS 2017 dataset. The 2-fold, 5-fold, and 10-fold cross-validations are implemented and six metrics (sensitivity, specificity, accuracy, precision, F1-score, AUC) evaluated the performance of proposed method. Consequently, proposed method achieved remarkable scores of 95.23% (sensitivity), 78.81% (specificity), 90.89% (accuracy), 92.59% (precision), 93.89% (F1-score), and 87.02% (AUC) for HGG/LGG classification of 3D brain MRI data on T1+T1c+T2 combination by 2-fold cross validation.
基于SVM的脑肿瘤3D-DWT特征分类
脑肿瘤是诊断和治疗最具挑战性的疾病之一。准确和及时的脑肿瘤分类对于有效的治疗计划和患者管理至关重要。机器学习算法在提高脑肿瘤分类的准确性方面显示出巨大的希望。本研究通过四种不同的3D-MRI(磁共振成像)扫描(FLAIR, T1, T1c, T2)对高级别胶质瘤(HGG)和低级别胶质瘤(LGG)进行分类。通过使用四种不同的扫描,创建了15种不同的组合用于分类过程。采用三维离散小波变换对肿瘤图像进行特征提取。图像变换采用了36种不同的小波变换类型。从36种小波变换后的图像中提取一阶统计量(均值、方差、峰度、偏度、熵、能量)。支持向量机(SVM)算法对BraTS 2017数据集上获得的FOS特征进行分类。进行了2倍、5倍和10倍交叉验证,并使用6个指标(灵敏度、特异性、准确性、精密度、f1评分、AUC)评估了所提方法的性能。因此,该方法经2倍交叉验证,对T1+T1c+T2组合的3D脑MRI数据进行HGG/LGG分类,获得了95.23%(敏感性)、78.81%(特异性)、90.89%(准确性)、92.59%(精密度)、93.89% (f1评分)和87.02% (AUC)的显著评分。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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