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基于深度学习的超声图像中前列腺临床靶区的准确且稳健分割

Accurate and robust deep learning-based segmentation of the prostate clinical target volume in ultrasound images.

作者信息

Karimi Davood, Zeng Qi, Mathur Prateek, Avinash Apeksha, Mahdavi Sara, Spadinger Ingrid, Abolmaesumi Purang, Salcudean Septimiu E

机构信息

Department of Electrical and Computer Engineering, University of British Columbia, Vancouver, BC, Canada.

Department of Electrical and Computer Engineering, University of British Columbia, Vancouver, BC, Canada.

出版信息

Med Image Anal. 2019 Oct;57:186-196. doi: 10.1016/j.media.2019.07.005. Epub 2019 Jul 15.

Abstract

The goal of this work was to develop a method for accurate and robust automatic segmentation of the prostate clinical target volume in transrectal ultrasound (TRUS) images for brachytherapy. These images can be difficult to segment because of weak or insufficient landmarks or strong artifacts. We devise a method, based on convolutional neural networks (CNNs), that produces accurate segmentations on easy and difficult images alike. We propose two strategies to achieve improved segmentation accuracy on difficult images. First, for CNN training we adopt an adaptive sampling strategy, whereby the training process is encouraged to pay more attention to images that are difficult to segment. Secondly, we train a CNN ensemble and use the disagreement among this ensemble to identify uncertain segmentations and to estimate a segmentation uncertainty map. We improve uncertain segmentations by utilizing the prior shape information in the form of a statistical shape model. Our method achieves Hausdorff distance of 2.7 ± 2.3 mm and Dice score of 93.9 ± 3.5%. Comparisons with several competing methods show that our method achieves significantly better results and reduces the likelihood of committing large segmentation errors. Furthermore, our experiments show that our approach to estimating segmentation uncertainty is better than or on par with recent methods for estimation of prediction uncertainty in deep learning models. Our study demonstrates that estimation of model uncertainty and use of prior shape information can significantly improve the performance of CNN-based medical image segmentation methods, especially on difficult images.

摘要

这项工作的目标是开发一种方法,用于在近距离放射治疗的经直肠超声(TRUS)图像中准确且稳健地自动分割前列腺临床靶区。由于特征点薄弱或不足,或者存在强烈伪影,这些图像可能难以分割。我们设计了一种基于卷积神经网络(CNN)的方法,该方法在简单图像和困难图像上都能产生准确的分割结果。我们提出了两种策略来提高在困难图像上的分割精度。首先,对于CNN训练,我们采用自适应采样策略,从而促使训练过程更加关注难以分割的图像。其次,我们训练一个CNN集成模型,并利用该集成模型之间的差异来识别不确定的分割结果,并估计分割不确定性图。我们通过利用统计形状模型形式的先验形状信息来改进不确定的分割结果。我们的方法实现了2.7±2.3毫米的豪斯多夫距离和93.9±3.5%的骰子系数。与几种竞争方法的比较表明,我们的方法取得了显著更好的结果,并降低了出现大分割误差的可能性。此外,我们的实验表明,我们估计分割不确定性的方法优于或等同于深度学习模型中最近用于估计预测不确定性的方法。我们的研究表明,模型不确定性估计和先验形状信息的使用可以显著提高基于CNN的医学图像分割方法的性能,尤其是在困难图像上。

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