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首页> 外文期刊>Journal of magnetic resonance imaging: JMRI >Support vector machine for breast cancer classification using diffusion‐weighted MRI histogram features: Preliminary study
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Support vector machine for breast cancer classification using diffusion‐weighted MRI histogram features: Preliminary study

机译:支持乳腺癌分类的向量机使用扩散加权MRI直方图特征:初步研究

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Background Diffusion‐weighted MRI (DWI) is currently one of the fastest developing MRI‐based techniques in oncology. Histogram properties from model fitting of DWI are useful features for differentiation of lesions, and classification can potentially be improved by machine learning. Purpose To evaluate classification of malignant and benign tumors and breast cancer subtypes using support vector machine (SVM). Study Type Prospective. SUBJECTS Fifty‐one patients with benign ( n ?=?23) and malignant ( n ?=?28) breast tumors (26 ER+, whereof six were HER2+). Field Strength/Sequence Patients were imaged with DW‐MRI (3T) using twice refocused spin‐echo echo‐planar imaging with echo time / repetition time (TR/TE)?=?9000/86 msec, 90 × 90 matrix size, 2 × 2?mm in‐plane resolution, 2.5?mm slice thickness, and 13 b‐values. Assessment Apparent diffusion coefficient (ADC), relative enhanced diffusivity (RED), and the intravoxel incoherent motion (IVIM) parameters diffusivity (D), pseudo‐diffusivity (D*), and perfusion fraction (f) were calculated. The histogram properties (median, mean, standard deviation, skewness, kurtosis) were used as features in SVM (10‐fold cross‐validation) for differentiation of lesions and subtyping. Statistical Tests Accuracies of the SVM classifications were calculated to find the combination of features with highest prediction accuracy. Mann–Whitney tests were performed for univariate comparisons. Results For benign versus malignant tumors, univariate analysis found 11 histogram properties to be significant differentiators. Using SVM, the highest accuracy (0.96) was achieved from a single feature (mean of RED), or from three feature combinations of IVIM or ADC. Combining features from all models gave perfect classification. No single feature predicted HER2 status of ER?+?tumors (univariate or SVM), although high accuracy (0.90) was achieved with SVM combining several features. Importantly, these features had to include higher‐order statistics (kurtosis and skewness), indicating the importance to account for heterogeneity. Data Conclusion Our findings suggest that SVM, using features from a combination of diffusion models, improves prediction accuracy for differentiation of benign versus malignant breast tumors, and may further assist in subtyping of breast cancer. Level of Evidence: 3 Technical Efficacy: Stage 3 J. Magn. Reson. Imaging 2018;47:1205–1216.
机译:背景技术扩散加权MRI(DWI)目前是发育中发育中发育中的最快基于MRI技术之一。 DWI模型拟合的直方图属性是分化病变的有用功能,并且可以通过机器学习来提高分类。用支持向量机(SVM)评估恶性肿瘤和乳腺癌亚型分类的目的。研究类型预期。受试者有五十一患者良性(N?= 23)和恶性(N?=?28)乳腺肿瘤(26 er +,六个是HER2 +)。现场强度/序列患者使用两次重新聚焦的旋转回波 - 平面成像与回声时间/重复时间(TR / TE)(TR / TE)进行成像(Tr / Te)= = 90/86毫秒,90×90矩阵大小2 ×2?mm面内分辨率,2.5?mm切片厚度和13b值。评估表观扩散系数(ADC),相对增强的扩散率(红色),以及膀胱克朗克隆的运动(IVIM)参数扩散性(D),伪扩散率(D *)和灌注分数(F)。直方图属性(中位数,平均值,标准偏差,斜纹度,Kurtosis)用作SVM(10倍交叉验证)中的特征,用于分化病变和亚型。计算SVM分类的统计测试精度,以找到具有最高预测精度的特征的组合。为单变量比较而进行曼恩惠特的测试。良性与恶性肿瘤的结果,单变量分析发现11个直方图属性是显着的差异化。使用SVM,从单个特征(红色)或来自IVIM或ADC的三种特征组合来实现最高精度(0.96)。组合所有型号的功能都具有完美的分类。没有单一特征预测ER 2的ER?+?肿瘤(单变量或SVM),尽管通过SVM结合了几个特征,实现了高精度(0.90)。重要的是,这些特征必须包括高阶统计(Kurttosis和歪斜),表明对异质性估算的重要性。数据结论我们的研究结果表明,使用来自扩散模型的组合的特征来提高良性乳腺肿瘤的分化的预测准确性,并且可以进一步帮助乳腺癌亚型。证据水平:3技术疗效:第3阶段J. MANG。恢复。 2018年成像; 47:1205-1216。

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