基于深度学习的前列腺外周区域分割改进裁剪技术

D. Zaridis, E. Mylona, N. Tachos, K. Marias, M. Tsiknakis, D. Fotiadis
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引用次数: 2

摘要

在磁共振图像上对前列腺外围区进行自动分割是准确诊断前列腺癌的必要但具有挑战性的一步。基于深度学习(DL)的方法,如U-Net,最近被开发用于分割前列腺及其“子区域”。然而,图像标签中存在的类不平衡,即背景像素在待分割区域中占主导地位,可能会严重影响分割性能。在目前的工作中,我们提出了一种基于dl的预处理管道,通过裁剪不必要的信息来分割前列腺的外围区域,而无需对感兴趣区域的位置进行先验假设。利用最先进的三种深度学习网络(即U-net、桥接U-net和密集U-net),比较了深度学习裁剪在提高分割性能方面与标准中心裁剪的效果。在Dice得分方面,该方法对U-net、桥接U-net和密集U-net分别提高了24%、12%和15%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Deep Learning-based cropping technique to improve segmentation of prostate's peripheral zone
Automatic segmentation of the prostate peripheral zone on Magnetic Resonance Images (MRI) is a necessary but challenging step for accurate prostate cancer diagnosis. Deep learning (DL) based methods, such as U-Net, have recently been developed to segment the prostate and its' sub-regions. Nevertheless, the presence of class imbalance in the image labels, where the background pixels dominate over the region to be segmented, may severely hamper the segmentation performance. In the present work, we propose a DL-based preprocessing pipeline for segmenting the peripheral zone of the prostate by cropping unnecessary information without making a priori assumptions regarding the location of the region of interest. The effect of DL-cropping for improving the segmentation performance was compared to the standard center-cropping using three state-of-the-art DL networks, namely U-net, Bridged U-net and Dense U-net. The proposed method achieved an improvement of 24%, 12% and 15% for the U-net, Bridged U-net and Dense U-net, respectively, in terms of Dice score.
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