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基于多参数 MRI 的前列腺外周带癌的计算机辅助诊断。

Computer-aided diagnosis of prostate cancer in the peripheral zone using multiparametric MRI.

机构信息

INSERM, U1032, LabTau, Lyon, F-69003, France.

出版信息

Phys Med Biol. 2012 Jun 21;57(12):3833-51. doi: 10.1088/0031-9155/57/12/3833. Epub 2012 May 29.

DOI:10.1088/0031-9155/57/12/3833
PMID:22640958
Abstract

This study evaluated a computer-assisted diagnosis (CADx) system for determining a likelihood measure of prostate cancer presence in the peripheral zone (PZ) based on multiparametric magnetic resonance (MR) imaging, including T2-weighted, diffusion-weighted and dynamic contrast-enhanced MRI at 1.5 T. Based on a feature set derived from grey-level images, including first-order statistics, Haralick features, gradient features, semi-quantitative and quantitative (pharmacokinetic modelling) dynamic parameters, four kinds of classifiers were trained and compared: nonlinear support vector machine (SVM), linear discriminant analysis, k-nearest neighbours and naïve Bayes classifiers. A set of feature selection methods based on t-test, mutual information and minimum-redundancy-maximum-relevancy criteria were also compared. The aim was to discriminate between the relevant features as well as to create an efficient classifier using these features. The diagnostic performances of these different CADx schemes were evaluated based on a receiver operating characteristic (ROC) curve analysis. The evaluation database consisted of 30 sets of multiparametric MR images acquired from radical prostatectomy patients. Using histologic sections as the gold standard, both cancer and nonmalignant (but suspicious) tissues were annotated in consensus on all MR images by two radiologists, a histopathologist and a researcher. Benign tissue regions of interest (ROIs) were also delineated in the remaining prostate PZ. This resulted in a series of 42 cancer ROIs, 49 benign but suspicious ROIs and 124 nonsuspicious benign ROIs. From the outputs of all evaluated feature selection methods on the test bench, a restrictive set of about 15 highly informative features coming from all MR sequences was discriminated, thus confirming the validity of the multiparametric approach. Quantitative evaluation of the diagnostic performance yielded a maximal area under the ROC curve (AUC) of 0.89 (0.81-0.94) for the discrimination of the malignant versus nonmalignant tissues and 0.82 (0.73-0.90) for the discrimination of the malignant versus suspicious tissues when combining the t-test feature selection approach with a SVM classifier. A preliminary comparison showed that the optimal CADx scheme mimicked, in terms of AUC, the human experts in differentiating malignant from suspicious tissues, thus demonstrating its potential for assisting cancer identification in the PZ.

摘要

本研究评估了一种基于多参数磁共振成像(包括 T2 加权、扩散加权和动态对比增强 MRI)的计算机辅助诊断(CADx)系统,用于确定外周区(PZ)前列腺癌存在的可能性。基于从灰度图像中提取的特征集,包括一阶统计、Haralick 特征、梯度特征、半定量和定量(药代动力学建模)动态参数,训练并比较了四种分类器:非线性支持向量机(SVM)、线性判别分析、k-最近邻和朴素贝叶斯分类器。还比较了基于 t 检验、互信息和最小冗余最大相关性准则的特征选择方法。目的是区分相关特征,并使用这些特征创建一个有效的分类器。通过受试者工作特征(ROC)曲线分析评估这些不同 CADx 方案的诊断性能。评估数据库由 30 组从根治性前列腺切除术患者获得的多参数磁共振图像组成。使用组织学切片作为金标准,两位放射科医生、一位组织病理学家和一位研究人员在所有磁共振图像上通过共识对癌症和非恶性(但可疑)组织进行了注释。还在剩余的前列腺 PZ 中勾勒出良性组织的感兴趣区域(ROI)。这导致了一系列 42 个癌症 ROI、49 个良性但可疑的 ROI 和 124 个非可疑的良性 ROI。从所有评估的特征选择方法在测试台上的输出中,从所有 MR 序列中区分出了一组约 15 个高度信息丰富的特征,从而证实了多参数方法的有效性。对诊断性能的定量评估得出,当将 t 检验特征选择方法与 SVM 分类器结合使用时,区分恶性与非恶性组织的最大 ROC 曲线下面积(AUC)为 0.89(0.81-0.94),区分恶性与可疑组织的最大 AUC 为 0.82(0.73-0.90)。初步比较表明,最佳 CADx 方案在区分恶性与可疑组织方面的 AUC 与人类专家相似,因此证明了其在 PZ 中辅助癌症识别的潜力。

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