Attention-Guided Generative Adversarial Network to Address Atypical Anatomy in Synthetic CT Generation.

Hajar Emami, Ming Dong, Carri K Glide-Hurst
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引用次数: 10

Abstract

Recently, interest in MR-only treatment planning using synthetic CTs (synCTs) has grown rapidly in radiation therapy. However, developing class solutions for medical images that contain atypical anatomy remains a major limitation. In this paper, we propose a novel spatial attention-guided generative adversarial network (attention-GAN) model to generate accurate synCTs using T1-weighted MRI images as the input to address atypical anatomy. Experimental results on fifteen brain cancer patients show that attention-GAN outperformed existing synCT models and achieved an average MAE of 85.223±12.08, 232.41±60.86, 246.38±42.67 Hounsfield units between synCT and CT-SIM across the entire head, bone and air regions, respectively. Qualitative analysis shows that attention-GAN has the ability to use spatially focused areas to better handle outliers, areas with complex anatomy or post-surgical regions, and thus offer strong potential for supporting near real-time MR-only treatment planning.

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注意引导生成对抗网络在合成CT生成中解决非典型解剖问题。
最近,在放射治疗中,对使用合成ct (synct)的MR-only治疗计划的兴趣迅速增长。然而,开发类解决方案的医学图像,包含非典型解剖仍然是一个主要的限制。在本文中,我们提出了一种新的空间注意引导生成对抗网络(attention-GAN)模型,该模型使用t1加权MRI图像作为输入来生成准确的同步ct,以解决非典型解剖问题。15例脑癌患者的实验结果表明,注意- gan优于现有的synCT模型,synCT与CT-SIM在整个头部、骨骼和空气区域的平均MAE分别为85.223±12.08、232.41±60.86、246.38±42.67 Hounsfield单位。定性分析表明,注意力gan具有利用空间聚焦区域更好地处理异常值、复杂解剖区域或术后区域的能力,因此为支持近实时的仅磁共振治疗计划提供了强大的潜力。
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