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首页> 外文期刊>Applied Soft Computing >A package-SFERCB-'Segmentation, feature extraction, reduction and classification analysis by both SVM and ANN for brain tumors'
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A package-SFERCB-'Segmentation, feature extraction, reduction and classification analysis by both SVM and ANN for brain tumors'

机译:SFERCB软件包-“通过SVM和ANN对脑肿瘤进行分割,特征提取,归约和分类分析”

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摘要

The objective of this experimentation is to develop an interactive CAD system for assisting radiologists in multiclass brain tumor classification. The study is performed on a diversified dataset of 428 post contrast T1-weighted MR images of 55 patients and publically available dataset of 260 post contrast T1-weighted MR images of 10 patients. The first dataset includes primary brain tumors such as Astrocytoma (AS), Glioblastoma Multiforme (GBM), childhood tumor-Medulloblastoma (MED) and Meningioma (MEN), along with secondary tumor-Metastatic (MET). The second dataset consists of Astrocytoma (AS), Low Grade Glioma (LGL) and Meningioma (MEN). The tumor regions are marked by content based active contour (CBAC) model. The regions are than saved as segmented regions of interest (SROIs). 71 intensity and texture feature set is extracted from these SROIs. The features are specifically selected based on the pathological details of brain tumors provided by the radiologist. Genetic Algorithm (GA) selects the set of optimal features from this input set. Two hybrid machine learning models are implemented using GA with support vector machine (SVM) and artificial neural network (ANN) (GA-SVM and GA-ANN) and are tested on two different datasets. GA-SVM is proposed for finding preliminary probability in identifying tumor class and GA-ANN is used for confirmation of accuracy. Test results of the first dataset show that the GA optimization technique has enhanced the overall accuracy of SVM from 79.3% to 91.7% and of ANN from 75.6% to 94.9%. Individual class accuracies delivered by GA-SVM are: AS-89.8%, GBM-83.3%, MED-95.6%, MEN-91.8%, and MET-97.1%. Individual class accuracies delivered by GA-ANN classifier are: AS-96.6%, GBM-86.6%, MED-93.3%, MEN-96%, MET-100%. Similar results are obtained for the second dataset. The overall accuracy of SVM has increased from 80.8% to 89% and that of ANN has increased from 77.5% to 94.1%. Individual class accuracies delivered by GA-SVM are: AS-85.3%, LGL-88.8%, MEN-93%. Individual class accuracies delivered by GA-ANN classifier are: AS-92.6%, LGL-94.4%, MED-95.3%. It is observed from the experiments that GA-ANN classifier has provided better results than GA-SVM. Further, it is observed that along with providing finer results, GA-SVM provides advantage in speed whereas GA-ANN provides advantage in accuracy. The combined results from both the classifiers will benefit the radiologists in forming a better decision for classifying brain tumors. (C) 2016 Elsevier B.V. All rights reserved.
机译:本实验的目的是开发一种交互式CAD系统,以协助放射科医生进行多类脑肿瘤分类。这项研究是在55个患者的428个对比后T1加权MR图像和10个患者的260个对比T1加权MR图像的公开数据集上进行的。第一个数据集包括原发性脑肿瘤,例如星形细胞瘤(AS),多形胶质母细胞瘤(GBM),儿童期肿瘤-髓母细胞瘤(MED)和脑膜瘤(MEN),以及继发性肿瘤-转移瘤(MET)。第二个数据集由星形细胞瘤(AS),低度胶质瘤(LGL)和脑膜瘤(MEN)组成。肿瘤区域由基于内容的活动轮廓(CBAC)模型标记。然后将区域保存为分段的感兴趣区域(SROI)。从这些SROI中提取了71个强度和纹理特征集。这些特征是根据放射科医生提供的脑肿瘤的病理细节专门选择的。遗传算法(GA)从该输入集中选择最佳特征集。使用支持向量机(SVM)和人工神经网络(ANN)(GA-SVM和GA-ANN)的GA实现了两种混合机器学习模型,并在两个不同的数据集上进行了测试。提出了GA-SVM用于寻找识别肿瘤类别的初步可能性,GA-ANN用于确认准确性。第一个数据集的测试结果表明,GA优化技术已将SVM的整体准确性从79.3%提高到91.7%,将ANN的整体准确性从75.6%提高到94.9%。 GA-SVM提供的各个类别的准确性为:AS-89.8%,GBM-83.3%,MED-95.6%,MEN-91.8%和MET-97.1%。 GA-ANN分类器提供的个别类别准确性为:AS-96.6%,GBM-86.6%,MED-93.3%,MEN-96%,MET-100%。对于第二个数据集获得了相似的结果。 SVM的整体准确性从80.8%提高到89%,而ANN的整体准确性从77.5%增加到94.1%。 GA-SVM提供的个人舱位准确度为:AS-85.3%,LGL-88.8%,MEN-93%。 GA-ANN分类器提供的个别类别准确性为:AS-92.6%,LGL-94.4%,MED-95.3%。从实验中观察到,GA-ANN分类器比GA-SVM提供了更好的结果。此外,观察到,除了提供更好的结果外,GA-SVM还提供了速度方面的优势,而GA-ANN提供了准确性方面的优势。两种分类器的综合结果将使放射科医生受益,从而形成更好的脑肿瘤分类决策。 (C)2016 Elsevier B.V.保留所有权利。

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