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利用经直肠超声图像的小波和高阶谱特征对 144 例患者人群进行前列腺组织特征化/分类。

Prostate tissue characterization/classification in 144 patient population using wavelet and higher order spectra features from transrectal ultrasound images.

机构信息

Section of Minimally Invasive Urologic Surgery, The Warren Alpert Medical School of Brown University, Providence, RI 02905.

出版信息

Technol Cancer Res Treat. 2013 Dec;12(6):545-57. doi: 10.7785/tcrt.2012.500346. Epub 2013 Jun 6.

DOI:10.7785/tcrt.2012.500346
PMID:23745787
Abstract

In this work, we have proposed an on-line computer-aided diagnostic system called "UroImage" that classifies a Transrectal Ultrasound (TRUS) image into cancerous or non-cancerous with the help of non-linear Higher Order Spectra (HOS) features and Discrete Wavelet Transform (DWT) coefficients. The UroImage system consists of an on-line system where five significant features (one DWT-based feature and four HOS-based features) are extracted from the test image. These on-line features are transformed by the classifier parameters obtained using the training dataset to determine the class. We trained and tested six classifiers. The dataset used for evaluation had 144 TRUS images which were split into training and testing sets. Three-fold and ten-fold cross-validation protocols were adopted for training and estimating the accuracy of the classifiers. The ground truth used for training was obtained using the biopsy results. Among the six classifiers, using 10-fold cross-validation technique, Support Vector Machine and Fuzzy Sugeno classifiers presented the best classification accuracy of 97.9% with equally high values for sensitivity, specificity and positive predictive value. Our proposed automated system, which achieved more than 95% values for all the performance measures, can be an adjunct tool to provide an initial diagnosis for the identification of patients with prostate cancer. The technique, however, is limited by the limitations of 2D ultrasound guided biopsy, and we intend to improve our technique by using 3D TRUS images in the future.

摘要

在这项工作中,我们提出了一个名为“UroImage”的在线计算机辅助诊断系统,该系统借助非线性高阶谱(HOS)特征和离散小波变换(DWT)系数,将经直肠超声(TRUS)图像分为癌症或非癌症。UroImage 系统由一个在线系统组成,该系统从测试图像中提取五个重要特征(一个基于 DWT 的特征和四个基于 HOS 的特征)。这些在线特征通过使用训练数据集获得的分类器参数进行转换,以确定类别。我们训练和测试了六个分类器。用于评估的数据集包含 144 个 TRUS 图像,这些图像被分为训练集和测试集。采用三折和十折交叉验证协议进行训练和估计分类器的准确性。用于训练的真实情况是使用活检结果获得的。在六个分类器中,使用 10 折交叉验证技术,支持向量机和模糊 Sugeno 分类器的分类准确率最高,达到 97.9%,敏感性、特异性和阳性预测值也同样很高。我们提出的自动化系统在所有性能指标上都达到了 95%以上,可以作为一种辅助工具,为识别前列腺癌患者提供初步诊断。然而,该技术受到 2D 超声引导活检的限制,我们打算在未来使用 3D TRUS 图像来改进我们的技术。

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