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首页> 外文期刊>Journal of magnetic resonance imaging: JMRI >Radiomics strategy for glioma grading using texture features from multiparametric MRI
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Radiomics strategy for glioma grading using texture features from multiparametric MRI

机译:使用Multiparametric MRI纹理特征的胶质瘤分级的辐射瘤策略

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摘要

Background Accurate glioma grading plays an important role in the clinical management of patients and is also the basis of molecular stratification nowadays. Purpose/Hypothesis To verify the superiority of radiomics features extracted from multiparametric MRI to glioma grading and evaluate the grading potential of different MRI sequences or parametric maps. Study Type Retrospective; radiomics. Population A total of 153 patients including 42, 33, and 78 patients with Grades II, III, and IV gliomas, respectively. Field Strength/Sequence 3.0T MRI/T 1 ‐weighted images before and after contrast‐enhanced, T 2 ‐weighted, multi‐b‐value diffusion‐weighted and 3D arterial spin labeling images. Assessment After multiparametric MRI preprocessing, high‐throughput features were derived from patients' volumes of interests (VOIs). The support vector machine‐based recursive feature elimination was adopted to find the optimal features for low‐grade glioma (LGG) vs. high‐grade glioma (HGG), and Grade III vs. IV glioma classification tasks. Then support vector machine (SVM) classifiers were established using the optimal features. The accuracy and area under the curve (AUC) was used to assess the grading efficiency. Statistical Tests Student's t‐ test or a chi‐square test were applied on different clinical characteristics to confirm whether intergroup significant differences exist. Results Patients' ages between LGG and HGG groups were significantly different ( P ??0.01). For each patient, 420 texture and 90 histogram parameters were derived from 10 VOIs of multiparametric MRI. SVM models were established using 30 and 28 optimal features for classifying LGGs from HGGs and grades III from IV, respectively. The accuracies/AUCs were 96.8%/0.987 for classifying LGGs from HGGs, and 98.1%/0.992 for classifying grades III from IV, which were more promising than using histogram parameters or using the single sequence MRI. Data Conclusion Texture features were more effective for noninvasively grading gliomas than histogram parameters. The combined application of multiparametric MRI provided a higher grading efficiency. The proposed radiomic strategy could facilitate clinical decision‐making for patients with varied glioma grades. Level of Evidence: 3 Technical Efficacy: Stage 2 J. Magn. Reson. Imaging 2018;48:1518–1528
机译:背景技术精确的胶质瘤分级在患者的临床管理中起着重要作用,也是如今的分子分层的基础。目的/假设验证从多次MRI提取到胶质瘤分级的放射性瘤特征的优越性,评估不同MRI序列或参数映射的分级电位。研究类型回顾;辐射族。人口共有153名患者,包括42,33和78名患者II级,III和IV型胶质瘤。场强/序列3.0T MRI / T 1-之后的对比增强,T 2-重量,多B值扩散加权和3D动脉旋转标记图像之前和之后的重量图像。多次MRI预处理后评估,高通量特征来自患者的兴趣册(VOIS)。采用支持向量机的递归特征消除来查找低级胶质瘤(LGG)与高等胶质瘤(HGG)的最佳特征,以及III级与IV胶质瘤分类任务。然后使用最佳功能建立支持向量机(SVM)分类器。曲线下(AUC)下的精度和面积用于评估分级效率。统计测试学生的T-Test或Chi-Square测试应用于不同的临床特征,以确认是否存在综合差异。结果LGG和HGG组之间的患者的年龄显着不同(p?&?0.01)。对于每位患者,420个纹理和90个直方图参数源自多次MRI的10 VOI。使用30和28个最佳特征建立了SVM模型,用于分别从IV的Hggs和III等级III分别分类LGG。精度/ AUC为96.8%/ 0.987,用于分类来自HGGs的LGG,98.1%/ 0.992用于分类III等级III,其比使用直方图参数或使用单个序列MRI更有希望。数据结论纹理特征比直方图参数更有效地分级胶质瘤。多射频MRI的综合应用提供了更高的分级效率。所提出的射出策略可以促进患有多种胶质瘤等级的患者的临床决策。证据水平:3技术疗效:第2阶段J. MANG。恢复。 2018年成像; 48:1518-1528

著录项

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  • 作者单位

    Department of Radiology &

    Functional and Molecular Imaging Key Lab of Shaanxi ProvinceTangdu;

    Department of Radiology &

    Functional and Molecular Imaging Key Lab of Shaanxi ProvinceTangdu;

    Department of Biomedical EngineeringMilitary Medical University of PLA Airforce (Fourth Military;

    Department of Radiology &

    Functional and Molecular Imaging Key Lab of Shaanxi ProvinceTangdu;

    Department of Radiology &

    Functional and Molecular Imaging Key Lab of Shaanxi ProvinceTangdu;

    Department of Radiology &

    Functional and Molecular Imaging Key Lab of Shaanxi ProvinceTangdu;

    Department of Radiology &

    Functional and Molecular Imaging Key Lab of Shaanxi ProvinceTangdu;

    Department of Radiology &

    Functional and Molecular Imaging Key Lab of Shaanxi ProvinceTangdu;

    Department of Radiology &

    Functional and Molecular Imaging Key Lab of Shaanxi ProvinceTangdu;

    Department of Radiology &

    Functional and Molecular Imaging Key Lab of Shaanxi ProvinceTangdu;

    Department of Radiology &

    Functional and Molecular Imaging Key Lab of Shaanxi ProvinceTangdu;

    Department of Radiology &

    Functional and Molecular Imaging Key Lab of Shaanxi ProvinceTangdu;

    Department of Radiology &

    Functional and Molecular Imaging Key Lab of Shaanxi ProvinceTangdu;

    Department of Radiology &

    Functional and Molecular Imaging Key Lab of Shaanxi ProvinceTangdu;

    Department of Radiology &

    Functional and Molecular Imaging Key Lab of Shaanxi ProvinceTangdu;

    Department of Radiology &

    Functional and Molecular Imaging Key Lab of Shaanxi ProvinceTangdu;

    Student BrigadeMilitary Medical University of PLA Airforce (Fourth Military Medical University;

    Student BrigadeMilitary Medical University of PLA Airforce (Fourth Military Medical University;

    Department of Radiology &

    Functional and Molecular Imaging Key Lab of Shaanxi ProvinceTangdu;

    Department of Radiology &

    Functional and Molecular Imaging Key Lab of Shaanxi ProvinceTangdu;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 诊断学;
  • 关键词

    glioma grading; multiparametric MRI; radiomics; texture feature; SVM;

    机译:胶质瘤分级;多游射线MRI;辐射瘤;纹理特征;SVM;

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