首页> 外文会议>Conference on Medical Imaging: Image Processing >An adversarial machine learning based approach and biomechanically-guided validation for improving deformable image registration accuracy between a planning CT and cone-beam CT for adaptive prostate radiotherapy applications
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An adversarial machine learning based approach and biomechanically-guided validation for improving deformable image registration accuracy between a planning CT and cone-beam CT for adaptive prostate radiotherapy applications

机译:一种基于对抗性机器学习的方法和生物力学指导的验证,可提高计划性CT和锥形束CT之间的可变形图像配准精度,以适应性前列腺放射治疗应用

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Adaptive radiotherapy is an effective procedure for the treatment of cancer, where the daily anatomical changes in the patient are quantified, and the dose delivered to the tumor is adapted accordingly. Deformable Image Registration (DIR) inaccuracies and delays in retrieving and registering on-board cone beam CT (CBCT) image datasets from the treatment system with the planning kilo Voltage CT (kVCT) have limited the adaptive workflow to a limited number of patients. In this paper, we present an approach for improving the DIR accuracy using a machine learning approach coupled with biomechanically guided validation. For a given set of 11 planning prostate kVCT datasets and their segmented contours, we first assembled a biomechanical model to generate synthetic abdominal motions, bladder volume changes, and physiological regression. For each of the synthetic CT datasets, we then injected noise and artifacts in the images using a novel procedure in order to mimic closely CBCT datasets. We then considered the simulated CBCT images for training neural networks that predicted the noise and artifact-removed CT images. For this purpose, we employed a constrained generative adversarial neural network, which consisted of two deep neural networks, a generator and a discriminator. The generator produced the artifact-removed CT images while the discriminator computed the accuracy. The deformable image registration (DIR) results were finally validated using the model-generated landmarks. Results showed that the artifact-removed CT matched closely to the planning CT. Comparisons were performed using the image similarity metrics, and a normalized cross correlation of >0.95 was obtained from the cGAN based image enhancement. In addition, when DIR was performed, the landmarks matched within 1.1 +/- 0.5 mm. This demonstrates that using an adversarial DNN-based CBCT enhancement, improved DIR accuracy bolsters adaptive radiotherapy workflow.
机译:适应性放射疗法是治疗癌症的有效方法,其中量化了患者的日常解剖变化,并相应地调整了递送至肿瘤的剂量。可变形图像配准(DIR)的不准确性以及从治疗系统中规划千伏CT(kVCT)检索和配准机载锥束CT(CBCT)图像数据集的延迟,已将自适应工作流限制在有限的患者中。在本文中,我们提出了一种使用机器学习方法和生物力学指导的验证方法来提高DIR准确性的方法。对于给定的一组11个计划中的前列腺kVCT数据集及其分段轮廓,我们首先组装了一个生物力学模型以生成合成的腹部运动,膀胱体积变化和生理退化。然后,对于每个合成CT数据集,我们都使用一种新颖的方法在图像中注入了噪声和伪像,以便紧密模拟CBCT数据集。然后,我们考虑将模拟的CBCT图像用于训练神经网络,以预测噪声和去除伪影的CT图像。为此,我们采用了约束生成对抗神经网络,该网络由两个深层神经网络,一个生成器和一个鉴别器组成。生成器生成了去除了伪影的CT图像,而鉴别器计算了精度。最后,使用模型生成的界标对可变形图像配准(DIR)结果进行了验证。结果表明,去除伪影的CT与计划的CT紧密匹配。使用图像相似性指标进行比较,并且从基于cGAN的图像增强中获得的归一化互相关> 0.95。此外,执行DIR时,界标在1.1 +/- 0.5毫米内匹配。这表明使用基于DNN的对抗性CBCT增强功能,提高的DIR准确性可支持自适应放射治疗工作流程。

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