Moradi Mehdi, Mahdavi S Sara, Nir Guy, Mohareri Omid, Koupparis Anthony, Gagnon Louis-Olivier, Fazli Ladan, Casey Rowan G, Ischia Joseph, Jones Edward C, Goldenberg S Larry, Salcudean Septimiu E
University of British Columbia, Vancouver, British Columbia V6T 1Z4, Canada.
British Columbia Cancer Agency, Vancouver, British Columbia V5Z 4E6, Canada.
Med Phys. 2014 Jul;41(7):073505. doi: 10.1118/1.4884226.
Ultrasound-based solutions for diagnosis and prognosis of prostate cancer are highly desirable. The authors have devised a method for detecting prostate cancer using a vibroelastography (VE) system developed in our group and a tissue classification approach based on texture analysis of VE images.
The VE method applies wide-band mechanical vibrations to the tissue. Here, the authors report on the use of this system for cancer detection and show that the texture of VE images characterized by the first and the second order statistics of the pixel intensities form a promising set of features for tissue typing to detect prostate cancer. The system was used to image patients prior to radical surgery. The removed specimens were sectioned and studied by an experienced histopathologist. The authors registered the whole-mount histology sections to the ultrasound images using an automatic registration algorithm. This enabled the quantitative evaluation of the performance of the authors' imaging method in cancer detection in an unbiased manner. The authors used support vector machine (SVM) classification to measure the cancer detection performance of the VE method. Regions of tissue of size 5 × 5 mm, labeled as cancer and noncancer based on automatic registration to histology slides, were classified using SVM.
The authors report an area under ROC of 0.81 ± 0.10 in cancer detection on 1066 tissue regions from 203 images. All cancer tumors in all zones were included in this analysis and were classified versus the noncancer tissue in the peripheral zone. This outcome was obtained in leave-one-patient-out validation.
The developed 3D prostate vibroelastography system and the proposed multiparametric approach based on statistical texture parameters from the VE images result in a promising cancer detection method.
基于超声的前列腺癌诊断和预后解决方案非常受欢迎。作者设计了一种使用我们团队开发的振动弹性成像(VE)系统和基于VE图像纹理分析的组织分类方法来检测前列腺癌的方法。
VE方法将宽带机械振动应用于组织。在此,作者报告了该系统在癌症检测中的应用,并表明以像素强度的一阶和二阶统计量为特征的VE图像纹理形成了一组有前景的组织分型特征,可用于检测前列腺癌。该系统用于在根治性手术前对患者进行成像。切除的标本进行切片,并由经验丰富的组织病理学家进行研究。作者使用自动配准算法将全层组织学切片与超声图像配准。这使得能够以无偏的方式定量评估作者成像方法在癌症检测中的性能。作者使用支持向量机(SVM)分类来测量VE方法的癌症检测性能。基于与组织学切片的自动配准,将大小为5×5mm的组织区域标记为癌症和非癌症,使用SVM进行分类。
作者报告在来自203幅图像的1066个组织区域的癌症检测中,ROC曲线下面积为0.81±0.10。该分析包括所有区域的所有癌症肿瘤,并与外周区的非癌组织进行分类。这一结果是在留一患者交叉验证中获得的。
所开发的三维前列腺振动弹性成像系统和基于VE图像统计纹理参数提出的多参数方法产生了一种有前景的癌症检测方法。