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首页> 外文期刊>International Journal of Neuroscience >Primary central nervous system lymphoma and glioblastoma differentiation based on conventional magnetic resonance imaging by high-throughput SIFT features
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Primary central nervous system lymphoma and glioblastoma differentiation based on conventional magnetic resonance imaging by high-throughput SIFT features

机译:基于常规磁共振成像的高通量筛选特征,原发性中枢神经系统淋巴瘤和胶质母细胞瘤分化

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Purpose of the study: Due to the totally different therapeutic regimens needed for primary central nervous system lymphoma (PCNSL) and glioblastoma (GBM), accurate differentiation of the two diseases by noninvasive imaging techniques is important for clinical decision-making.Materials and methods: Thirty cases of PCNSL and 66 cases of GBM with conventional T1-contrast magnetic resonance imaging (MRI) were analyzed in this study. Convolutional neural networks was used to segment tumor automatically. A modified scale invariant feature transform (SIFT) method was utilized to extract three-dimensional local voxel arrangement information from segmented tumors. Fisher vector was proposed to normalize the dimension of SIFT features. An improved genetic algorithm (GA) was used to extract SIFT features with PCNSL and GBM discrimination ability. The data-set was divided into a cross-validation cohort and an independent validation cohort by the ratio of 2:1. Support vector machine with the leave-one-out cross-validation based on 20 cases of PCNSL and 44 cases of GBM was employed to build and validate the differentiation model.Results: Among 16,384 high-throughput features, 1356 features show significant differences between PCNSL and GBM with p 0.05 and 420 features with p 0.001. A total of 496 features were finally chosen by improved GA algorithm. The proposed method produces PCNSL vs. GBM differentiation with an area under the curve (AUC) curve of 99.1% (98.2%), accuracy 95.3% (90.6%), sensitivity 85.0% (80.0%) and specificity 100% (95.5%) on the cross-validation cohort (and independent validation cohort).Conclusions: Since the local voxel arrangement characterization provided by SIFT features, proposed method produced more competitive PCNSL and GBM differentiation performance by using conventional MRI than methods based on advanced MRI.
机译:该研究的目的:由于原发性中枢神经系统淋巴瘤(PCNSL)和胶质母细胞瘤(GBM)所需的完全不同的治疗方案,通过非侵入性成像技术的两种疾病的准确分化对于临床决策,这是对临床决策的重要性。本研究分析了具有常规T1-对比磁共振成像(MRI)的30例PCNSL和66例GBM病例。卷积神经网络用于自动分段肿瘤。用于从分段肿瘤中提取三维局部体素排列信息的修改规模不变特征变换(SIFT)方法。提出了Fisher载体,以使SIFT功能的尺寸标准化。改进的遗传算法(GA)用于提取具有PCNSL和GBM辨别能力的SIFT特征。数据集分为交叉验证队列和独立验证队员,比率为2:1。支持向量机带有休假式交叉验证的基于20个PCNSL和44例GBM案例来构建和验证差异化模型。结果:在16,384个高吞吐量功能中,1356个功能在PCNSL之间显示出显着差异和P&的GBM 0.05和420个具有p& 0.001。最终通过改进的GA算法最终选择了496个功能。所提出的方法产生PCNSL与GBM分化,曲线下的区域(AUC)曲线为99.1%(98.2%),精度为95.3%(90.6%),灵敏度85.0%(80.0%)和含量为100%(95.5%)在交叉验证队列(和独立验证队队)上.Conclusions:由于SIFT特征提供的本地体素排列表征,所提出的方法通过使用常规MRI基于高级MRI的方法产生更具竞争力的PCNSL和GBM分化性能。

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