Huang Sheng-Fang, Chang Ruey-Feng, Moon Woo Kyung, Lee Yu-Hau, Chen Dar-Ren, Suri Jasjit S
Department of Medical Informatics, Tzu Chi University, Hualien, Taiwan 970, ROC.
IEEE Trans Med Imaging. 2008 Mar;27(3):320-30. doi: 10.1109/TMI.2007.904665.
Tumor vascularity is an important factor that has been shown to correlate with tumor malignancy and was demonstrated as a prognostic indicator for a wide range of cancers. Three-dimensional (3-D) power Doppler ultrasound (PDUS) offers a convenient tool for investigators to inspect the signals of blood flow and vascular structures in breast cancer. In this paper, a new computer-aided diagnosis (CAD) system for quantifying Doppler ultrasound images based on 3-D thinning algorithm and neural network is proposed. We extracted the skeleton of blood vessels from 3-D PDUS data to facilitate the capturing of morphological changes. Nine features including vessel-to-volume ratio, number of vascular trees, length of vessels, number of branching, mean of radius, number of cycles, and three tortuosity measures, were extracted from the thinning result. Benign and malignant tumors can therefore be differentiated by a score computed by a multilayered perceptron (MLP) neural network using these features as parameters. The proposed system was tested on 221 breast tumors, including 110 benign and 111 malignant lesions. The accuracy, sensitivity, specificity, and positive and negative predictive values were 88.69% (196/221), 91.89% (102/111), 85.45% (94/110), 86.44% (102/118), and 91.26% (94/103), respectively. The Az value of the ROC curve was 0.94. The results demonstrate a correlation between the morphology of blood vessels and tumor malignancy, indicating that the newly proposed method can retrieves a high accuracy in the classification of benign and malignant breast tumors.
肿瘤血管生成是一个重要因素,已被证明与肿瘤恶性程度相关,并被证实是多种癌症的预后指标。三维(3-D)能量多普勒超声(PDUS)为研究人员提供了一种便捷工具,用于检测乳腺癌中的血流信号和血管结构。本文提出了一种基于三维细化算法和神经网络的新型计算机辅助诊断(CAD)系统,用于量化多普勒超声图像。我们从三维PDUS数据中提取血管骨架,以促进对形态变化的捕捉。从细化结果中提取了九个特征,包括血管与体积比、血管树数量、血管长度、分支数量、平均半径、循环数量以及三个弯曲度测量值。因此,良性和恶性肿瘤可以通过使用这些特征作为参数的多层感知器(MLP)神经网络计算的分数来区分。该系统在221个乳腺肿瘤上进行了测试,包括110个良性病变和111个恶性病变。准确率、敏感性、特异性以及阳性和阴性预测值分别为88.69%(196/221)、91.89%(102/111)、85.45%(94/110)、86.44%(102/118)和91.26%(94/103)。ROC曲线的Az值为0.94。结果表明血管形态与肿瘤恶性程度之间存在相关性,表明新提出的方法在良性和恶性乳腺肿瘤分类中能够获得较高的准确率。