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Ultrasound-Based Detection of Prostate Cancer Using Automatic Feature Selection with Deep Belief Networks

机译:基于超声的深度信念网络自动特征选择基于超声的前列腺癌检测

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We propose an automatic feature selection framework for analyzing temporal ultrasound signals of prostate tissue. The framework consists of: 1) an unsupervised feature reduction step that uses Deep Belief Network (DBN) on spectral components of the temporal ultrasound data; 2) a supervised fine-tuning step that uses the histopathology of the tissue samples to further optimize the DBN; 3) a Support Vector Machine (SVM) classifier that uses the activation of the DBN as input and outputs a likelihood for the cancer. In leave-one-core-out cross-validation experiments using 35 biopsy cores, an area under the curve of 0.91 is obtained for cancer prediction. Subsequently, an independent group of 36 biopsy cores was used for validation of the model. The results show that the framework can predict 22 out of 23 benign, and all of cancerous cores correctly. We conclude that temporal analysis of ultrasound data can potentially complement multi-parametric Magnetic Resonance Imaging (mp-MRI) by improving the differentiation of benign and cancerous prostate tissue.
机译:我们提出了一种用于分析前列腺组织的时间超声信号的自动特征选择框架。该框架包括:1)在时域超声数据的频谱分量上使用深度信念网络(DBN)的无监督特征缩减步骤; 2)有监督的微调步骤,该步骤使用组织样本的组织病理学进一步优化DBN; 3)支持向量机(SVM)分类器,它使用DBN的激活作为输入并输出发生癌症的可能性。在使用35个活检核心进行留一核的交叉验证实验中,曲线下的面积为0.91,可用于癌症预测。随后,由36个活检核心组成的独立小组用于模型验证。结果表明,该框架可以预测23个良性肿瘤中的22个,并且正确预测了所有癌变核心。我们得出的结论是,超声数据的时间分析可以通过改善良性和癌性前列腺组织的分化来潜在地补充多参数磁共振成像(mp-MRI)。

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