首页> 外文期刊>Medical Physics >Computer-aided diagnosis for dynamic contrast-enhanced breast MRI of mass-like lesions using a multiparametric model combining a selection of morphological, kinetic, and spatiotemporal features.
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Computer-aided diagnosis for dynamic contrast-enhanced breast MRI of mass-like lesions using a multiparametric model combining a selection of morphological, kinetic, and spatiotemporal features.

机译:使用多参数模型结合形态学,动力学和时空特征的选择,对肿块样病变进行动态对比增强乳腺MRI的计算机辅助诊断。

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Dynamic contrast-enhanced magnetic resonance imaging (DCE-MRI) is a radiological tool for the detection and discrimination of breast lesions. The aim of this study is to evaluate a computer-aided diagnosis (CAD) system for discriminating malignant from benign breast lesions at DCE-MRI by the combined use of morphological, kinetic, and spatiotemporal lesion features.Fifty-four malignant and 19 benign breast lesions in 51 patients were retrospectively evaluated. Images were acquired at two centers at 1.5?T. Mass-like lesions were automatically segmented after image normalization and elastic coregistration of contrast-enhanced frames. For each lesion, a set of 28 3D features were extracted: ten morphological (related to shape, margins, and internal enhancement distribution); nine kinetic (computed from signal-to-time curves); and nine spatiotemporal (related to the variation of the signal between adjacent frames). A support vector machine (SVM) was trained with feature subsets selected by a genetic search. Best subsets were composed of the most frequent features selected by majority rule. The performance was measured by receiver operator characteristics analysis with a stratified tenfold cross-validation and bootstrap method for confidence intervals.SVM training by the three separated classes of features resulted in an area under the curve (AUC) of 0.90 ± 0.04 (mean ± standard deviation), 0.87 ± 0.06, and 0.86 ± 0.06 for morphological, kinetic, and spatiotemporal feature, respectively. Combined training with all 28 features resulted in AUC of 0.96 ± 0.02 obtained with a selected feature subset composed by two morphological, one kinetic, and two spatiotemporal features.Quantitative combination of morphological, kinetic, and spatiotemporal features is feasible and provides a higher discriminating power than using the three different classes of features separately.
机译:动态对比增强磁共振成像(DCE-MRI)是用于检测和区分乳腺病变的放射学工具。这项研究的目的是评估计算机辅助诊断(CAD)系统,通过结合形态,动力学和时空病变特征在DCE-MRI上鉴别恶性和良性乳腺病变.54例恶性和19例良性乳腺对51例患者的病灶进行回顾性评估。在1.5?T的两个中心采集图像。图像归一化和增强对比度的框架的弹性增强后,会自动分割肿块样病变。对于每个病变,提取了28个3D特征集:十个形态特征(与形状,边缘和内部增强分布有关);第二个形态特征与形状有关。九种动力学(根据信号时间曲线计算);和九个时空(与相邻帧之间的信号变化有关)。用遗传搜索选择的特征子集训练了支持向量机(SVM)。最佳子集由多数规则选择的最常见特征组成。通过分层十倍交叉验证和自举方法对置信区间进行接收机操作员特征分析来测量性能。通过三个分离的特征类别进行的SVM训练得到的曲线下面积(AUC)为0.90±0.04(平均值±标准)形态,动力学和时空特征分别为0.87±0.06和0.86±0.06。结合所有28种特征的训练得到的AUC为0.96±0.02,且选定的特征子集由两种形态,一种动力学和两种时空特征组成。形态,动力学和时空特征的定量组合是可行的,并提供更高的判别力而不是分别使用三种不同类别的功能。

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