Mohareri Omid, Ruszkowski Angelica, Lobo Julio, Ischia Joseph, Baghani Ali, Nir Guy, Eskandari Hani, Jones Edward, Fazli Ladan, Goldenberg Larry, Moradi Mehdi, Salcudean Septimiu
Med Image Comput Comput Assist Interv. 2014;17(Pt 1):561-8. doi: 10.1007/978-3-319-10404-1_70.
In this article, we describe a system for detecting dominant prostate tumors, based on a combination of features extracted from a novel multi-parametric quantitative ultrasound elastography technique. The performance of the system was validated on a data-set acquired from n = 10 patients undergoing radical prostatectomy. Multi-frequency steady-state mechanical excitations were applied to each patient's prostate through the perineum and prostate tissue displacements were captured by a transrectal ultrasound system. 3D volumetric data including absolute value of tissue elasticity, strain and frequency-response were computed for each patient. Based on the combination of all extracted features, a random forest classification algorithm was used to separate cancerous regions from normal tissue, and to compute a measure of cancer probability. Registered whole mount histopathology images of the excised prostate gland were used as a ground truth of cancer distribution for classifier training. An area under receiver operating characteristic curve of 0.82 +/- 0.01 was achieved in a leave-one-patient-out cross validation. Our results show the potential of multi-parametric quantitative elastography for prostate cancer detection for the first time in a clinical setting, and justify further studies to establish whether the approach can have clinical use.
在本文中,我们描述了一种用于检测前列腺优势肿瘤的系统,该系统基于从一种新型多参数定量超声弹性成像技术中提取的特征组合。该系统的性能在从10名接受根治性前列腺切除术的患者获取的数据集上得到了验证。通过会阴向每位患者的前列腺施加多频稳态机械激励,并通过经直肠超声系统捕获前列腺组织的位移。为每位患者计算包括组织弹性绝对值、应变和频率响应在内的三维体积数据。基于所有提取特征的组合,使用随机森林分类算法将癌性区域与正常组织区分开来,并计算癌症概率度量。切除前列腺的配准全层组织病理学图像用作分类器训练的癌症分布的真实标准。在留一法交叉验证中,受试者操作特征曲线下面积达到0.82±0.01。我们的结果首次显示了多参数定量弹性成像在临床环境中用于前列腺癌检测的潜力,并为进一步研究该方法是否可用于临床提供了依据。