Medical Imaging Centre, Tampere University Hospital, Post Box 2000, 33521 Tampere, Finland.
Acad Radiol. 2010 Feb;17(2):135-41. doi: 10.1016/j.acra.2009.08.012. Epub 2009 Nov 27.
This novel study aims to investigate texture parameters in distinguishing healthy breast tissue and breast cancer in breast magnetic resonance imaging (MRI). A specific aim was to identify possible differences in the texture characteristics of histological types (lobular and ductal) of invasive breast cancer and to determine the value of these differences for computer-assisted lesion classification.
Twenty patients (mean age 50.6 + or - SD 10.6; range 37-70 years), with histopathologically proven invasive breast cancer (10 lobular and 10 ductal) were included in this preliminary study. The median MRI lesion size was 25 mm (range, 7-60 mm). The selected T1-weighted precontrast, post-contrast, and subtracted images were analyzed and classified with texture analysis (TA) software MaZda and additional statistical tests were used for testing the parameters separability.
All classification methods employed were able to differentiate between cancer and healthy breast tissue and also invasive lobular and ductal carcinoma with classification accuracy varying between 80% and 100%, depending on the used imaging series and the type of region of interest. We found several parameters to be significantly different between the regions of interest studied. The co-occurrence matrix based parameters proved to be superior to other texture parameters used.
The results of this study indicate that MRI TA differentiates breast cancer from normal tissue and may be able to distinguish between two histological types of breast cancer providing more accurate characterization of breast lesions thereby offering a new tool for radiological analysis of breast MRI.
本研究旨在探讨磁共振成像(MRI)中纹理参数在鉴别健康乳腺组织与乳腺癌中的作用。本研究的具体目的是确定浸润性乳腺癌不同组织学类型(小叶性和导管性)的纹理特征是否存在差异,并确定这些差异对计算机辅助病变分类的价值。
本初步研究共纳入 20 例经组织病理学证实的浸润性乳腺癌患者(平均年龄 50.6±10.6 岁,范围 37-70 岁),其中包括 10 例小叶性乳腺癌和 10 例导管性乳腺癌。MRI 病变中位大小为 25mm(范围 7-60mm)。选择 T1 加权预对比、对比后和减影图像,使用纹理分析(TA)软件 MaZda 进行分析和分类,并使用额外的统计检验来测试参数的可分离性。
所有使用的分类方法均能够区分癌症与健康乳腺组织,也能够区分浸润性小叶性和导管性乳腺癌,分类准确率在 80%到 100%之间,具体取决于所使用的成像系列和感兴趣区的类型。我们发现,在研究的感兴趣区内,有几个参数存在显著差异。基于共生矩阵的参数明显优于其他使用的纹理参数。
本研究结果表明,MRI TA 可区分乳腺癌与正常组织,并且可能能够区分两种组织学类型的乳腺癌,从而更准确地对乳腺病变进行特征描述,为乳腺 MRI 的放射学分析提供新工具。