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首页> 外文期刊>Journal of magnetic resonance imaging: JMRI >Fully automatic segmentation on prostate MR images based on cascaded fully convolution network
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Fully automatic segmentation on prostate MR images based on cascaded fully convolution network

机译:基于级联全卷积网络的前列腺MR图像全自动分割

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Background Computer‐aided diagnosis (CAD) can aid radiologists in quantifying prostate cancer, and MRI segmentation plays an essential role in CAD applications. Clinical experience shows that prostate cancer occurs predominantly in the peripheral zone (PZ) and there exist different evaluation criteria for different regions in the Prostate Imaging Reporting and Data System (PI‐RADS). Purpose To develop a fully automatic approach to segmenting the prostate outer contour and the PZ contour with high efficacy. Population In all, 163 subjects, including 61 healthy subjects and 102 prostate cancer patients. For each subject, all slices that contained prostate gland in diffusion‐weighted images (DWIs) and T 2 ‐weighted images (T 2 WIs) were selected as the datasets. Field Strength T 2 ‐weighted, DWI at 3.0T. Assessment The computer‐generated segmentation results were compared with the manual outlining results that were depicted by two experts with more than 5 years' experience. Dice similarity coefficient (DSC), false‐positive rate (FPR), and false‐negative rate (FNR) were used to compared the algorithm and manual segmentation results. Statistical Tests A paired t ‐test was adopted for comparison between our method and classical U‐Net segmentation methods. Results The mean DSC was 92.7?±?4.2% for the total whole prostate gland and 79.3?±?10.4% for the total peripheral zone. Compared with classical U‐Net segmentation methods, our segmentation precision was significantly higher ( P 0.001). Data Conclusion By cropping the region of interest and cascading the two networks, our method balances the positive and negative sample gradually, and results in higher segmentation accuracy. This fully automatic strategy could provide satisfactory performance in prostate DWIs and T 2 WIs‐based image segmentation. Level of Evidence: 2 Technical Efficacy Stage 1 J. Magn. Reson. Imaging 2019;49:1149–1156.
机译:背景技术计算机辅助诊断(CAD)可以帮助放射科学医生定量前列腺癌,并且MRI分段在CAD应用中起着重要作用。临床经验表明,前列腺癌主要发生在外周区(PZ)中,并且前列腺成像报告和数据系统(PI-RAD)中的不同区域存在不同的评价标准。目的是开发一种全自动方法来分割前列腺外部轮廓和高功效的PZ轮廓。所有163名科目的人口,其中包括61名健康受试者和102例前列腺癌患者。对于每个受试者,选择包含在扩散加权图像(DWIS)和T 2-重量的图像(T 2 WIS)中的前列腺含有前列腺的切片作为数据集。场强T 2-Wiutional,DWI在3.0T。评估计算机生成的分段结果与由两个专家经验的两位专家描述的手册概述结果进行了比较。使用骰子相似度系数(DSC),假阳性率(FPR)和假负速率(FNR)来比较算法和手动分段结果。统计测试采用配对T -Test进行了比较我们的方法和经典U-Net分段方法。结果平均DSC为92.7?±4.2%,整个前列腺的总前列腺和79.3?±10.4%的总周边区。与经典U-净分段方法相比,我们的分段精度明显高(P <0.001)。数据结论通过裁剪感兴趣和级联两个网络,我们的方法逐渐平衡正面和负面样本,并导致更高的分割精度。这种全自动策略可以在前列腺DWIS和T 2 WIS的图像分割中提供令人满意的性能。证据水平:2技术效果阶段1 J. MANG。恢复。 2019年成像; 49:1149-1156。

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