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动态乳腺MRI中信号强度时间过程的聚类分析:无监督矢量量化有助于评估乳腺钼靶小病变吗?

Cluster analysis of signal-intensity time course in dynamic breast MRI: does unsupervised vector quantization help to evaluate small mammographic lesions?

作者信息

Leinsinger Gerda, Schlossbauer Thomas, Scherr Michael, Lange Oliver, Reiser Maximilian, Wismüller Axel

机构信息

Institute for Clinical Radiology University of Munich, Ziemssenstr, 1 80336 Munich, Germany.

出版信息

Eur Radiol. 2006 May;16(5):1138-46. doi: 10.1007/s00330-005-0053-9. Epub 2006 Jan 18.

DOI:10.1007/s00330-005-0053-9
PMID:16418862
Abstract

We examined whether neural network clustering could support the characterization of diagnostically challenging breast lesions in dynamic magnetic resonance imaging (MRI). We examined 88 patients with 92 breast lesions (51 malignant, 41 benign). Lesions were detected by mammography and classified Breast Imaging and Reporting Data System (BIRADS) III (median diameter 14 mm). MRI was performed with a dynamic T1-weighted gradient echo sequence (one precontrast and five postcontrast series). Lesions with an initial contrast enhancement >or=50% were selected with semiautomatic segmentation. For conventional analysis, we calculated the mean initial signal increase and postinitial course of all voxels included in a lesion. Secondly, all voxels within the lesions were divided into four clusters using minimal-free-energy vector quantization (VQ). With conventional analysis, maximum accuracy in detecting breast cancer was 71%. With VQ, a maximum accuracy of 75% was observed. The slight improvement using VQ was mainly achieved by an increase of sensitivity, especially in invasive lobular carcinoma and ductal carcinoma in situ (DCIS). For lesion size, a high correlation between different observers was found (R(2) = 0.98). VQ slightly improved the discrimination between malignant and benign indeterminate lesions (BIRADS III) in comparison with a standard evaluation method.

摘要

我们研究了神经网络聚类是否有助于在动态磁共振成像(MRI)中对具有诊断挑战性的乳腺病变进行特征描述。我们对88例患有92个乳腺病变(51个恶性,41个良性)的患者进行了研究。病变通过乳腺钼靶检查发现,并分类为乳腺影像报告和数据系统(BIRADS)III级(中位直径14毫米)。采用动态T1加权梯度回波序列进行MRI检查(一个造影前和五个造影后系列)。通过半自动分割选择初始对比增强≥50%的病变。对于传统分析,我们计算了病变内所有体素的平均初始信号增加和初始后过程。其次,使用最小自由能矢量量化(VQ)将病变内的所有体素分为四类。采用传统分析,检测乳腺癌的最大准确率为71%。采用VQ,观察到的最大准确率为75%。使用VQ的轻微改善主要是通过提高敏感性实现的,尤其是在浸润性小叶癌和原位导管癌(DCIS)中。对于病变大小,不同观察者之间发现高度相关(R(2)=0.98)。与标准评估方法相比,VQ在区分恶性和良性不确定病变(BIRADS III)方面略有改善。

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基于相互连接性分析(MCA)的人类大脑非线性功能连接网络恢复:收敛交叉映射与非度量聚类
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Characterizing Trabecular Bone structure for Assessing Vertebral Fracture Risk on Volumetric Quantitative Computed Tomography.在容积定量计算机断层扫描上表征小梁骨结构以评估椎体骨折风险
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