基于图像特征选择和平滑预测的SVM在前列腺癌CAD中的应用

Emilie Niaf, Rémi Flamary, A. Rakotomamonjy, O. Rouvière, C. Lartizien
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引用次数: 15

摘要

我们提出了一种新的计算机辅助检测方案,用于多参数磁共振(mp-MR)图像的前列腺癌筛查。基于30例患者的mp-MR图像的注释训练数据库,我们训练了一种新的支持向量机(SVM)启发的分类器,该分类器同时学习最优线性判别器和与分类任务最相关的预测变量(或特征)子集,同时提高了恶性肿瘤预测图的空间平滑性。该方法在奖励稀疏性的优化问题的正则化项中使用1-范数。通过对体素的空间邻域进行编码的额外代价项来提高空间平滑度,以避免有噪声的预测图。将提出的1-光滑支持向量机方案与规则的2-支持向量机方案进行实验比较,在临床数据集上显示出清晰的视觉和数值增益。
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SVM with feature selection and smooth prediction in images: Application to CAD of prostate cancer
We propose a new computer-aided detection scheme for prostate cancer screening on multiparametric magnetic resonance (mp-MR) images. Based on an annotated training database of mp-MR images from thirty patients, we train a novel support vector machine (SVM)-inspired classifier which simultaneously learns an optimal linear discriminant and a subset of predictor variables (or features) that are most relevant to the classification task, while promoting spatial smoothness of the malignancy prediction maps. The approach uses a ℓ1-norm in the regularization term of the optimization problem that rewards sparsity. Spatial smoothness is promoted via an additional cost term that encodes the spatial neighborhood of the voxels, to avoid noisy prediction maps. Experimental comparisons of the proposed ℓ1-Smooth SVM scheme to the regular ℓ2-SVM scheme demonstrate a clear visual and numerical gain on our clinical dataset.
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