首页> 外文期刊>Magnetic resonance imaging: An International journal of basic research and clinical applications >Computer-aided diagnosis of breast DCE-MRI using pharmacokinetic model and 3-D morphology analysis
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Computer-aided diagnosis of breast DCE-MRI using pharmacokinetic model and 3-D morphology analysis

机译:使用药代动力学模型和3D形态分析对乳腺DCE-MRI进行计算机辅助诊断

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Three-dimensional (3-D) dynamic contrast-enhanced magnetic resonance imaging (DCE-MRI) consists of a large number of images in different enhancement phases which are used to identify and characterize breast lesions. The purpose of this study was to develop a computer-assisted algorithm for tumor segmentation and characterization using both kinetic information and morphological features of 3-D breast DCE-MRI. An integrated color map created by intersecting kinetic and area under the curve (AUC) color maps was used to detect potential breast lesions, followed by the application of a region growing algorithm to segment the tumor. Modified fuzzy c-means clustering was used to identify the most representative kinetic curve of the whole segmented tumor, which was then characterized by using conventional curve analysis or pharmacokinetic model. The 3-D morphological features including shape features (compactness, margin, and ellipsoid fitting) and texture features (based on the grey level cooccurrence matrix) of the segmented tumor were obtained to characterize the lesion. One hundred and thirty-two biopsy-proven lesions (63 benign and 69 malignant) were used to evaluate the performance of the proposed computer-aided system for breast MRI. Five combined features including rate constant (k_(ep)), volume of plasma (v_p), energy (G_1), entropy (G_2), and compactness (C_1), had the best performance with an accuracy of 91.67% (121/132), sensitivity of 91.30% (63/69), specificity of 92.06% (58/63), and Az value of 0.9427. Combining the kinetic and morphological features of 3-D breast MRI is a potentially useful and robust algorithm when attempting to differentiate benign and malignant lesions.
机译:三维(3-D)动态对比增强磁共振成像(DCE-MRI)由处于不同增强阶段的大量图像组成,这些图像用于识别和表征乳腺病变。这项研究的目的是使用3D乳房DCE-MRI的动力学信息和形态特征,开发一种用于肿瘤分割和表征的计算机辅助算法。通过将动力学曲线和曲线下面积(AUC)颜色图相交而创建的综合颜色图用于检测潜在的乳腺病变,然后应用区域增长算法来分割肿瘤。改进的模糊c均值聚类法用于鉴定整个分割肿瘤的最具代表性的动力学曲线,然后通过常规曲线分析或药代动力学模型对其进行表征。获得了分割肿瘤的3-D形态特征,包括形状特征(紧凑性,边缘和椭球拟合)和纹理特征(基于灰度共生矩阵)以表征病变。 132例经活检证实的病变(63例良性和69例恶性)被用来评估所建议的乳腺MRI计算机辅助系统的性能。速率常数(k_(ep)),等离子体体积(v_p),能量(G_1),熵(G_2)和紧密度(C_1)这五个组合特征具有91.67%(121/132)的最佳性能。 ),敏感性91.30%(63/69),特异性92.06%(58/63)和Az值0.9427。尝试区分良性和恶性病变时,将3-D乳房MRI的动力学和形态学特征相结合是一种潜在有用且强大的算法。

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