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Computer‐aided diagnosis of prostate cancer using a deep convolutional neural network from multiparametric MRI

机译:使用来自Multiparametric MRI的深卷积神经网络的计算机辅助诊断前列腺癌

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Background Deep learning is the most promising methodology for automatic computer‐aided diagnosis of prostate cancer (PCa) with multiparametric MRI (mp‐MRI). Purpose To develop an automatic approach based on deep convolutional neural network (DCNN) to classify PCa and noncancerous tissues (NC) with mp‐MRI. Study Type Retrospective. Subjects In all, 195 patients with localized PCa were collected from a PROSTATEx database. In total, 159/17/19 patients with 444/48/55 observations (215/23/23 PCas and 229/25/32 NCs) were randomly selected for training/validation/testing, respectively. Sequence T 2 ‐weighted, diffusion‐weighted, and apparent diffusion coefficient images. Assessment A radiologist manually labeled the regions of interest of PCas and NCs and estimated the Prostate Imaging Reporting and Data System (PI‐RADS) scores for each region. Inspired by VGG‐Net, we designed a patch‐based DCNN model to distinguish between PCa and NCs based on a combination of mp‐MRI data. Additionally, an enhanced prediction method was used to improve the prediction accuracy. The performance of DCNN prediction was tested using a receiver operating characteristic (ROC) curve, and the area under the ROC curve (AUC), sensitivity, specificity, positive predictive value (PPV), and negative predictive value (NPV) were calculated. Moreover, the predicted result was compared with the PI‐RADS score to evaluate its clinical value using decision curve analysis. Statistical Test Two‐sided Wilcoxon signed‐rank test with statistical significance set at 0.05. Results The DCNN produced excellent diagnostic performance in distinguishing between PCa and NC for testing datasets with an AUC of 0.944 (95% confidence interval: 0.876–0.994), sensitivity of 87.0%, specificity of 90.6%, PPV of 87.0%, and NPV of 90.6%. The decision curve analysis revealed that the joint model of PI‐RADS and DCNN provided additional net benefits compared with the DCNN model and the PI‐RADS scheme. Data Conclusion The proposed DCNN‐based model with enhanced prediction yielded high performance in statistical analysis, suggesting that DCNN could be used in computer‐aided diagnosis (CAD) for PCa classification. Level of Evidence: 3 Technical Efficacy: Stage 2 J. Magn. Reson. Imaging 2018;48:1570–1577
机译:背景技术深度学习是具有多射床MRI(MP-MRI)的最有希望的自动计算机辅助诊断前列腺癌(PCA)的方法。目的是,基于深卷积神经网络(DCNN)的自动方法,将PCA和非癌组织(NC)与MP-MRI分类。研究类型回顾。从Prostatex数据库收集了195名局部PCA患者的主题。共有159/17/19患者,分别随机选择444/48/55观察患者(215/23/23 pcas和229/25/32 ncs)分别进行培训/验证/测试。序列T 2-重量,扩散加权和表观漫射系数图像。评估放射学家手动标记了PCA和NC的感兴趣区域,并估计每个区域的前列腺成像报告和数据系统(PI-RADS)分数。灵感来自VGG-Net,我们设计了一种基于补丁的DCNN模型,可根据MP-MRI数据的组合来区分PCA和NC。另外,使用增强的预测方法来提高预测精度。使用接收器操作特性(ROC)曲线测试DCNN预测的性能,并计算ROC曲线(AUC)下的区域,灵敏度,特异性,阳性预测值(PPV)和负预测值(NPV)。此外,将预测结果与PI-RADS分数进行比较,以使用判定曲线分析评估其临床价值。统计试验双面WILCOXON签名 - 等级测试,统计显着性设定为0.05。结果DCNN在区分PCA和NC中产生了优异的诊断性能,以测试数据集0.944的数据集(95%置信区间:0.876-0.994),敏感性为87.0%,特异性为90.6%,PPV为87.0%,和NPV 90.6%。决策曲线分析显示,与DCNN模型和PI-RADS方案相比,PI-RAD和DCNN的联合模型提供了额外的净效益。数据结论提出的基于DCNN的增强预测模型在统计分析中产生了高性能,表明DCNN可用于PCA分类的计算机辅助诊断(CAD)。证据水平:3技术疗效:第2阶段J. MANG。恢复。 2018年成像; 48:1570-1577

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