property - net:一种基于磁共振成像的前列腺周边区域分割的深度学习方法

E. Mylona, Dimitris Zaridis, N. Tachos, K. Marias, M. Tsiknakis, D. Fotiadis
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引用次数: 0

摘要

前列腺癌的磁共振图像检测和表征需要准确分割前列腺和前列腺亚区域。由于大多数肿瘤病变位于前列腺外周区,因此对该区域的精确分割对于肿瘤的表征至关重要。尽管卷积神经网络(CNN)在前列腺分割任务中取得了越来越大的成功,但这种网络在前列腺子区域分割方面的性能还存在知识缺口。在目前的工作中,我们提出了一种新的深度学习(DL)方法,名为property - net,用于分割t2加权(T2w) MR图像上的前列腺周边区域。我们的网络与四个最先进的编码器-解码器cnn进行了比较:原始的Unet,及其扩展Unet++, Unet3+和桥接Unet。计算了基于重叠和距离的度量来评估模型的性能并量化所提出的分割方法的优越性。结果表明,所提出的网络在外围区域分割任务上成功优于现有网络,在Dice Score方面的中位数性能为0.74,在平衡精度方面的中位数性能为0.88。对于Unet, unet++, Unet3+的所有评估指标,分割性能的改善是显著的(p值0.05),而对于桥接Unet, Dice Score, Balanced Accuracy, Sensitivity和Rand Error Index取得了显着改善。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
PROper-Net: A Deep-Learning Approach for Prostate’s Peripheral Zone Segmentation based on MR imaging
Prostate cancer detection and characterization on Magnetic Resonance Images (MRI) requires accurate segmentation of the prostate gland and the prostatic sub-regions. With the majority of tumoral lesions located in the prostate’s peripheral zone, a precise segmentation of this region is imperative for tumor characterization. Despite the growing success of Convolution neural networks (CNN) in the task of prostate gland segmentation, there a is a knowledge gap in the performance of such networks for segmenting prostatic subregions. In the present work, we propose an novel Deep Learning (DL) approach, named PROper-Net, for segmenting the prostate’s peripheral zone on T2-weighted (T2w) MR images. Our network was compared against four state-of-the-art encoder–decoder CNNs: the original Unet, and its extensions Unet++, Unet3+, and Bridged Unet. Overlap- and distance-based metrics were computed to assess models’ performance and to quantify the superiority of the proposed segmentation approach. The results show that the proposed network successfully outperforms existing networks for the peripheral zone segmentation task, yielding a median performance of 0.74 in terms of Dice Score and 0.88 in terms of balanced accuracy. The improvement in segmentation performance was significant (p-value 0.05) with respect to Unet, Unet++, Unet3+ for all the evaluation metrics while for Bridged Unet significant improvement was achieved for Dice Score, Balanced Accuracy, Sensitivity, and Rand Error Index.
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