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Application of MR morphologic, diffusion tensor, and perfusion imaging in the classification of brain tumors using machine learning scheme

机译:MR形态学,扩散张量和灌注成像在使用机器学习方案脑肿瘤分类中的应用

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PurposeWhile MRI is the modality of choice for the assessment of patients with brain tumors, differentiation between various tumors based on their imaging characteristics might be challenging due to overlapping imaging features. The purpose of this study was to apply a machine learning scheme using basic and advanced MR sequences for distinguishing different types of brain tumors.MethodsThe study cohort included 141 patients (41 glioblastoma, 38 metastasis, 50 meningioma, and 12 primary central nervous system lymphoma). A computer-assisted classification scheme, combining morphologic MRI, perfusion MRI, and DTI metrics, was developed and used for tumor classification. The proposed multistep scheme consists of pre-processing, ROI definition, features extraction, feature selection, and classification. Feature subset selection was performed using support vector machines (SVMs). Classification performance was assessed by leave-one-out cross-validation. Given an ROI, the entire classification process was done automatically via computer and without any human intervention.ResultsA binary hierarchical classification tree was chosen. In the first step, selected features were chosen for distinguishing glioblastoma from the remaining three classes, followed by separation of meningioma from metastasis and PCNSL, and then to discriminate PCNSL from metastasis. The binary SVM classification accuracy, sensitivity and specificity for glioblastoma, metastasis, meningiomas, and primary central nervous system lymphoma were 95.7, 81.6, and 91.2%; 92.7, 95.1, and 93.6%; 97, 90.8, and 58.3%; and 91.5, 90, and 96.9%, respectively.ConclusionA machine learning scheme using data from anatomical and advanced MRI sequences resulted in high-performance automatic tumor classification algorithm. Such a scheme can be integrated into clinical decision support systems to optimize tumor classification.
机译:目的的MRI是评估脑肿瘤患者的选择的方式,基于其成像特性的各种肿瘤之间的分化可能由于重叠的成像特征而挑战。本研究的目的是利用基本和高级MR序列应用机器学习方案,以区分不同类型的脑肿瘤。方法包括141名患者(41胶质母细胞瘤,38种转移,50个脑膜瘤和12个初级中枢神经系统淋巴瘤) 。开发了一种计算机辅助分类方案,组合形态学MRI,灌注MRI和DTI度量,并用于肿瘤分类。所提出的MultiSep方案包括预处理,ROI定义,特征提取,特征选择和分类。使用支持向量机(SVM)执行特征子集选择。通过休假交叉验证评估分类性能。给定ROI,通过计算机自动完成整个分类过程,没有任何人为干预。选择二进制层次分类树。在第一步中,选择选定的特征来区分胶质母细胞瘤,其剩余的三种类别,然后从转移和PCNSL分离脑膜瘤,然后从转移中区分PCNS1。胶质母细胞瘤,转移,脑膜瘤和原发性中枢神经系统淋巴瘤的二元SVM分类准确度,敏感性和特异性为95.7,81.6和91.2%; 92.7,95.1和93.6%; 97,90.8和58.3%;分别为91.5,90和96.9%。结论机器学习方案,使用来自解剖学和先进的MRI序列的数据导致高性能自动肿瘤分类算法。这种方案可以集成到临床决策支持系统中以优化肿瘤分类。

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