卷积长短期记忆网络用于 CT 图像中肺部运动预测的可行性研究

Q3 Medicine
Zahra Ghasemi, Payam Samadi Miandoab
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引用次数: 0

摘要

背景介绍在 X 射线成像过程中,肺部运动会造成许多图像伪影。为解决这一问题,人们进行了多项研究,包括数学算法和 2D-3D 图像配准方法。最近,有人考虑将深度人工神经网络应用于图像生成和预测:在本研究中,使用卷积长短期记忆(ConvLSTM)神经网络预测时空 4DCT 图像:在这项分析研究中,提出了两种 ConvLSTM 结构,包括堆叠 ConvLSTM 模型、超参数优化算法和 ConvLSTM 模型的新设计。传统 ConvLSTM 中的超参数优化算法包括层数、滤波器数、核大小、历元数、优化器和学习率。两种 ConvLSTM 结构还通过基于均方根误差(RMSE)和结构相似性指数(SSIM)的六项实验进行了评估:结果:比较两种网络后发现,新设计的 ConvLSTM 网络比经过调整的堆叠 ConvLSTM 模型更快、更准确、更可靠。对于所有患者,估计的 RMSE 和 SSIM 分别为 3.17 和 0.988,与之前的研究相比有显著改善:总体而言,新设计的 ConvLSTM 网络在 RMSE 和 SSIM 方面表现出色。此外,使用新设计的 ConvLSTM 模型生成的 CT 图像在配准精度和鲁棒性方面与相应的参考文献显示出良好的一致性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Feasibility Study of Convolutional Long ShortTerm Memory Network for Pulmonary Movement Prediction in CT Images.

Background: During X-ray imaging, pulmonary movements can cause many image artifacts. To tackle this issue, several studies, including mathematical algorithms and 2D-3D image registration methods, have been presented. Recently, the application of deep artificial neural networks has been considered for image generation and prediction.

Objective: In this study, a convolutional long short-term memory (ConvLSTM) neural network is used to predict spatiotemporal 4DCT images.

Material and methods: In this analytical analysis study, two ConvLSTM structures, consisting of stacked ConvLSTM models along with the hyperparameter optimizer algorithm and a new design of the ConvLSTM model are proposed. The hyperparameter optimizer algorithm in the conventional ConvLSTM includes the number of layers, number of filters, kernel size, epoch number, optimizer, and learning rate. The two ConvLSTM structures were also evaluated through six experiments based on Root Mean Square Error (RMSE) and structural similarity index (SSIM).

Results: Comparing the two networks demonstrates that the new design of the ConvLSTM network is faster, more accurate, and more reliable in comparison to the tuned-stacked ConvLSTM model. For all patients, the estimated RMSE and SSIM were 3.17 and 0.988, respectively, and a significant improvement can be observed in comparison to the previous studies.

Conclusion: Overall, the results of the new design of the ConvLSTM network show excellent performances in terms of RMSE and SSIM. Also, the generated CT images with the new design of the ConvLSTM model show a good consistency with the corresponding references regarding registration accuracy and robustness.

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来源期刊
Journal of Biomedical Physics and Engineering
Journal of Biomedical Physics and Engineering Medicine-Radiology, Nuclear Medicine and Imaging
CiteScore
2.90
自引率
0.00%
发文量
64
审稿时长
10 weeks
期刊介绍: The Journal of Biomedical Physics and Engineering (JBPE) is a bimonthly peer-reviewed English-language journal that publishes high-quality basic sciences and clinical research (experimental or theoretical) broadly concerned with the relationship of physics to medicine and engineering.
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