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基于深度学习的磁共振成像引导前列腺放射治疗的刚性和弹性轮廓联合传播。

Deep-learning-based joint rigid and deformable contour propagation for magnetic resonance imaging-guided prostate radiotherapy.

机构信息

Medical Image Analysis Group, Department of Biomedical Engineering, Eindhoven University of Technology, Eindhoven, The Netherlands.

Eindhoven Artificial Intelligence Systems Institute, Eindhoven University of Technology, Eindhoven, The Netherlands.

出版信息

Med Phys. 2024 Apr;51(4):2367-2377. doi: 10.1002/mp.17000. Epub 2024 Feb 26.

Abstract

BACKGROUND

Deep learning-based unsupervised image registration has recently been proposed, promising fast registration. However, it has yet to be adopted in the online adaptive magnetic resonance imaging-guided radiotherapy (MRgRT) workflow.

PURPOSE

In this paper, we design an unsupervised, joint rigid, and deformable registration framework for contour propagation in MRgRT of prostate cancer.

METHODS

Three-dimensional pelvic T2-weighted MRIs of 143 prostate cancer patients undergoing radiotherapy were collected and divided into 110, 13, and 20 patients for training, validation, and testing. We designed a framework using convolutional neural networks (CNNs) for rigid and deformable registration. We selected the deformable registration network architecture among U-Net, MS-D Net, and LapIRN and optimized the training strategy (end-to-end vs. sequential). The framework was compared against an iterative baseline registration. We evaluated registration accuracy (the Dice and Hausdorff distance of the prostate and bladder contours), structural similarity index, and folding percentage to compare the methods. We also evaluated the framework's robustness to rigid and elastic deformations and bias field perturbations.

RESULTS

The end-to-end trained framework comprising LapIRN for the deformable component achieved the best median (interquartile range) prostate and bladder Dice of 0.89 (0.85-0.91) and 0.86 (0.80-0.91), respectively. This accuracy was comparable to the iterative baseline registration: prostate and bladder Dice of 0.91 (0.88-0.93) and 0.86 (0.80-0.92). The best models complete rigid and deformable registration in 0.002 (0.0005) and 0.74 (0.43) s (Nvidia Tesla V100-PCIe 32 GB GPU), respectively. We found that the models are robust to translations up to 52 mm, rotations up to 15 , elastic deformations up to 40 mm, and bias fields.

CONCLUSIONS

Our proposed unsupervised, deep learning-based registration framework can perform rigid and deformable registration in less than a second with contour propagation accuracy comparable with iterative registration.

摘要

背景

基于深度学习的无监督图像配准最近被提出,有望实现快速配准。然而,它尚未被应用于在线自适应磁共振成像引导放射治疗(MRgRT)工作流程中。

目的

在本文中,我们设计了一个用于前列腺癌 MRgRT 中轮廓传播的无监督、联合刚性和可变形配准框架。

方法

收集了 143 名接受放疗的前列腺癌患者的三维骨盆 T2 加权 MRI,并将其分为 110、13 和 20 名患者用于训练、验证和测试。我们使用卷积神经网络(CNNs)设计了一个用于刚性和可变形配准的框架。我们在 U-Net、MS-D Net 和 LapIRN 中选择了可变形配准网络架构,并优化了训练策略(端到端与顺序)。该框架与迭代基线注册进行了比较。我们评估了注册准确性(前列腺和膀胱轮廓的 Dice 和 Hausdorff 距离)、结构相似性指数和折叠百分比,以比较方法。我们还评估了框架对刚性和弹性变形以及偏置场干扰的鲁棒性。

结果

由 LapIRN 组成的端到端训练框架在可变形组件中实现了最佳的中位数(四分位距)前列腺和膀胱 Dice,分别为 0.89(0.85-0.91)和 0.86(0.80-0.91)。这种准确性与迭代基线注册相当:前列腺和膀胱 Dice 分别为 0.91(0.88-0.93)和 0.86(0.80-0.92)。最佳模型分别在 0.002(0.0005)和 0.74(0.43)s(Nvidia Tesla V100-PCIe 32GB GPU)内完成刚性和可变形配准。我们发现模型对高达 52mm 的平移、高达 15°的旋转、高达 40mm 的弹性变形和偏置场具有鲁棒性。

结论

我们提出的无监督、基于深度学习的配准框架可以在不到一秒的时间内完成刚性和可变形配准,并且具有与迭代配准相当的轮廓传播准确性。

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