Deep learning for automated segmentation of radiation-induced changes in cerebral arteriovenous malformations following radiosurgery.

IF 2.9 3区 医学 Q2 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING
Hsing-Hao Ho, Huai-Che Yang, Wen-Xiang Yang, Cheng-Chia Lee, Hsiu-Mei Wu, I-Chun Lai, Ching-Jen Chen, Syu-Jyun Peng
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引用次数: 0

Abstract

Background: Despite the widespread use of stereotactic radiosurgery (SRS) to treat cerebral arteriovenous malformations (AVMs), this procedure can lead to radiation-induced changes (RICs) in the surrounding brain tissue. Volumetric assessment of RICs is crucial for therapy planning and monitoring. RICs that appear as hyper-dense areas in magnetic resonance T2-weighted (T2w) images are clearly identifiable; however, physicians lack tools for the segmentation and quantification of these areas. This paper presents an algorithm to calculate the volume of RICs in patients with AVMs following SRS. The algorithm could be used to predict the course of RICs and facilitate clinical management.

Methods: We trained a Mask Region-based Convolutional Neural Network (Mask R-CNN) as an alternative to manual pre-processing in designating regions of interest. We also applied transfer learning to the DeepMedic deep learning model to facilitate the automatic segmentation and quantification of AVM edema regions in T2w images.

Results: The resulting quantitative findings were used to explore the effects of SRS treatment among 28 patients with unruptured AVMs based on 139 regularly tracked T2w scans. The actual range of RICs in the T2w images was labeled manually by a clinical radiologist to serve as the gold standard in supervised learning. The trained model was tasked with segmenting the test set for comparison with the manual segmentation results. The average Dice similarity coefficient in these comparisons was 71.8%.

Conclusions: The proposed segmentation algorithm achieved results on par with conventional manual calculations in determining the volume of RICs, which were shown to peak at the end of the first year after SRS and then gradually decrease. These findings have the potential to enhance clinical decision-making.

Trial registration: Not applicable.

基于深度学习的放射术后脑动静脉畸形辐射诱导变化自动分割。
背景:尽管立体定向放射外科(SRS)广泛用于治疗脑动静脉畸形(AVMs),但该手术可导致周围脑组织的辐射诱导改变(RICs)。RICs的体积评估对于治疗计划和监测至关重要。在磁共振t2加权(T2w)图像上显示为高密度区域的RICs清晰可识别;然而,医生缺乏工具来分割和量化这些领域。本文提出了一种计算avm患者在SRS后的RICs体积的算法。该算法可用于预测RICs的病程,方便临床管理。方法:我们训练了一个基于掩模区域的卷积神经网络(Mask R-CNN),作为指定感兴趣区域的手动预处理的替代方法。我们还将迁移学习应用到DeepMedic深度学习模型中,以促进T2w图像中AVM水肿区域的自动分割和量化。结果:基于139次定期追踪的T2w扫描,定量结果用于探讨28例未破裂avm患者的SRS治疗效果。T2w图像的实际RICs范围由临床放射科医生手动标记,作为监督学习的金标准。训练模型的任务是对测试集进行分割,以便与手动分割结果进行比较。在这些比较中,Dice的平均相似系数为71.8%。结论:本文提出的分割算法在确定RICs体积方面取得了与传统人工计算相当的结果,RICs在SRS后的第一年末达到峰值,然后逐渐下降。这些发现有可能提高临床决策。试验注册:不适用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
BMC Medical Imaging
BMC Medical Imaging RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING-
CiteScore
4.60
自引率
3.70%
发文量
198
审稿时长
27 weeks
期刊介绍: BMC Medical Imaging is an open access journal publishing original peer-reviewed research articles in the development, evaluation, and use of imaging techniques and image processing tools to diagnose and manage disease.
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