深度学习模型在核磁共振成像引导放疗中获取的 cine 成像上进行肺部目标跟踪的分段间可移植性。

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS ACS Applied Bio Materials Pub Date : 2024-06-01 Epub Date: 2024-01-10 DOI:10.1007/s13246-023-01371-z
Jiayuan Peng, Hayley B Stowe, Pamela P Samson, Clifford G Robinson, Cui Yang, Weigang Hu, Zhen Zhang, Taeho Kim, Geoffrey D Hugo, Thomas R Mazur, Bin Cai
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引用次数: 0

摘要

核磁共振成像引导放疗系统通过在治疗过程中获取的平面二维胶片图像上跟踪目标来实现射束门控。本研究旨在评估如何将根据一个分段数据训练的目标跟踪深度学习(DL)模型应用于后续分段。六名患者在核磁共振引导放疗平台(MRIdian,Viewray Inc.)上接受了治疗,该平台配有一台 0.35 T 核磁共振扫描仪。使用两种训练策略训练了用于目标跟踪的三种 DL 模型(U-net、注意力 U-net 和嵌套 U-net):(1) 统一训练,仅使用从第一部分获得的数据,并根据后续部分的数据进行测试;(2) 自适应训练,每部分增加 20 个当前部分的样本来更新训练,并根据该部分的剩余图像进行测试。通过评估自动生成轮廓和人工指定轮廓之间的狄斯相似系数(DSC)和 95% Hausdorff 距离(HD95),比较了不同算法、模型和训练策略的跟踪性能。在比较手动轮廓和机载算法(OBT)生成的轮廓时,所有六名患者的平均 DSC 为 0.68 ± 0.16。与 OBT 相比,统一训练的三个 DL 模型的 DSC 值提高了 17.0 - 19.3%,而基于自适应训练的模型的 DSC 值提高了 24.7 - 25.7%。基于自适应训练的模型的 HD95 值提高了 50.6 - 54.5%。基于 DL 的技术比基于机载注册的跟踪方法获得了更好的跟踪性能。在实施逐分增加训练数据的自适应策略时,基于 DL 的跟踪性能有所提高。
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Inter-fractional portability of deep learning models for lung target tracking on cine imaging acquired in MRI-guided radiotherapy.

MRI-guided radiotherapy systems enable beam gating by tracking the target on planar, two-dimensional cine images acquired during treatment. This study aims to evaluate how deep-learning (DL) models for target tracking that are trained on data from one fraction can be translated to subsequent fractions. Cine images were acquired for six patients treated on an MRI-guided radiotherapy platform (MRIdian, Viewray Inc.) with an onboard 0.35 T MRI scanner. Three DL models (U-net, attention U-net and nested U-net) for target tracking were trained using two training strategies: (1) uniform training using data obtained only from the first fraction with testing performed on data from subsequent fractions and (2) adaptive training in which training was updated each fraction by adding 20 samples from the current fraction with testing performed on the remaining images from that fraction. Tracking performance was compared between algorithms, models and training strategies by evaluating the Dice similarity coefficient (DSC) and 95% Hausdorff Distance (HD95) between automatically generated and manually specified contours. The mean DSC for all six patients in comparing manual contours and contours generated by the onboard algorithm (OBT) were 0.68 ± 0.16. Compared to OBT, the DSC values improved 17.0 - 19.3% for the three DL models with uniform training, and 24.7 - 25.7% for the models based on adaptive training. The HD95 values improved 50.6 - 54.5% for the models based on adaptive training. DL-based techniques achieved better tracking performance than the onboard, registration-based tracking approach. DL-based tracking performance improved when implementing an adaptive strategy that augments training data fraction-by-fraction.

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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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