...
首页> 外文期刊>Medical Physics >Automated segmentation of prostate zonal anatomy on T2‐weighted (T2W) and apparent diffusion coefficient ( ADC ADC ) map MR MR images using U‐Nets
【24h】

Automated segmentation of prostate zonal anatomy on T2‐weighted (T2W) and apparent diffusion coefficient ( ADC ADC ) map MR MR images using U‐Nets

机译:在T2加权(T2W)和表观漫射系数(ADC ADC)上的前列腺区域解剖学自动分割

获取原文
获取原文并翻译 | 示例
           

摘要

Purpose Accurate regional segmentation of the prostate boundaries on magnetic resonance ( MR ) images is a fundamental requirement before automated prostate cancer diagnosis can be achieved. In this paper, we describe a novel methodology to segment prostate whole gland ( WG ), central gland ( CG ), and peripheral zone ( PZ ), where PZ ?+? CG ?=? WG , from T2W and apparent diffusion coefficient ( ADC ) map prostate MR images. Methods We designed two similar models each made up of two U‐Nets to delineate the WG , CG , and PZ from T2W and ADC map MR images, separately. The U‐Net, which is a modified version of a fully convolutional neural network, includes contracting and expanding paths with convolutional, pooling, and upsampling layers. Pooling and upsampling layers help to capture and localize image features with a high spatial consistency. We used a dataset consisting of 225 patients (combining 153 and 72 patients with and without clinically significant prostate cancer) imaged with multiparametric MRI at 3 Tesla. Results and conclusion Our proposed model for prostate zonal segmentation from T2W was trained and tested using 1154 and 1587 slices of 100 and 125 patients, respectively. Median of Dice similarity coefficient ( DSC ) on test dataset for prostate WG , CG , and PZ were 95.33?±?7.77%, 93.75?±?8.91%, and 86.78?±?3.72%, respectively. Designed model for regional prostate delineation from ADC map images was trained and validated using 812 and 917 slices from 100 and 125 patients. This model yielded a median DSC of 92.09?±?8.89%, 89.89?±?10.69%, and 86.1?±?9.56% for prostate WG , CG , and PZ on test samples, respectively. Further investigation indicated that the proposed algorithm reported high DSC for prostate WG segmentation from both T2W and ADC map MR images irrespective of WG size. In addition, segmentation accuracy in terms of DSC does not significantly vary among patients with or without significant tumors. Significance We describe a method for automated prostate zonal segmentation using T2W and ADC map MR images independent of prostate size and the presence or absence of tumor. Our results are important in terms of clinical perspective as fully automated methods for ADC map images, which are considered as one of the most important sequences for prostate cancer detection in the PZ and CG , have not been reported previously.
机译:目的准确的磁共振(MR)图像上的前列腺界限的区域分割是在实现自动前列腺癌诊断之前的基本要求。在本文中,我们描述了一种新型方法,用于分割前列腺全腺(WG),中央腺体(CG)和外周区(PZ),其中PZ?+? cg?=? WG,来自T2W和表观扩散系数(ADC)地图前列腺MR图像。方法我们设计了两个类似的模型,每个模型由两个U-Net组成,以分别地描绘WG,CG和ADC MR图像的WG,CG和PZ。 U-Net是完全卷积神经网络的修改版本,包括与卷积,池和上采样层的承包和扩展路径。池和上采样层有助于捕获和本地化具有高空间一致性的图像功能。我们使用了由325名患者(结合153和72名患者组合和没有临床显着的前列腺癌的患者)组成的数据集,在3特斯拉在多次MRI上成像。结果与结论我们使用1154和1587片的T2W前列腺区分割模型分别使用了100和125例患者进行了培训和测试。骰子相似系数(DSC)的中位数在前列腺WG,CG和PZ的测试数据集上为95.33?±7.77%,93.75?±8.91%和86.78?±3.72%。从ADC地图图像的区域前列腺描绘设计的设计模型训练并使用了来自100和125名患者的812和917片验证。该模型产生了92.09的中位数DSC?±8.89%,89.89?±10.69%,分别在试验样品上的前列腺WG,CG和PZ的±9.56%。进一步的研究表明,所提出的算法报告了来自T2W和ADC MR图像的前列腺WG分段的高DSC,而不管WG尺寸如何。此外,在有或没有显着肿瘤的患者中,DSC方面的分割准确性不会显着变化。重要性我们描述了一种使用T2W和ADC MR图像无关的自动前列腺区分割方法的方法,其与前列腺大小和肿瘤的存在或不存在或不存在。我们的研究结果在临床前沿,作为ADC地图图像的全自动化方法,其被认为是PZ和CG中的前列腺癌检测中最重要的序列之一。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号