利用级联-深度监督卷积神经网络增强脑肿瘤低分次SRS(伽玛刀放射外科)的三维剂量预测。

IF 2.4 4区 医学 Q3 ENGINEERING, BIOMEDICAL Physical and Engineering Sciences in Medicine Pub Date : 2024-07-30 DOI:10.1007/s13246-024-01457-2
Nan Li, Jinyuan Wang, Yanping Wang, Chunfeng Fang, Yaoying Liu, Chunsu Zhang, Dongxue Zhou, Lin Cao, Gaolong Zhang, Shouping Xu
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引用次数: 0

摘要

伽玛刀放射外科(GKRS)是放射治疗(RT)中治疗小型脑肿瘤的成熟技术。它在每个治疗分段中施用高度集中的剂量,即使是微小的剂量误差也会对健康组织造成严重损害。这凸显了 GKRS 对精确和细致的关键需求。然而,GKRS 的规划过程复杂而耗时,严重依赖于医学物理学家的专业知识。采用深度学习方法进行 GKRS 剂量预测可以减少这种依赖性,提高规划效率和均匀性,简化临床工作流程,减少患者滞后时间。尽管如此,使用现有模型进行精确的伽马刀计划剂量分布预测仍然是一项重大挑战。这种复杂性源于剂量分布的复杂性、CT 扫描中的微妙对比以及剂量测定指标的相互依存性。为了克服这些挑战,我们开发了一种采用混合加权优化方案的 "级联-深度监督 "卷积神经网络(CDS-CNN)。我们的创新方法结合了多层次深度监督和战略性顺序多网络训练方法。它能够提取切片内和切片间特征,从而利用额外的上下文信息进行更真实的剂量预测。CDS-CNN 利用 105 名接受 GKRS 治疗的脑癌患者的数据进行了训练和评估,其中 85 例用于训练,20 例用于测试。定量评估和统计分析表明,预测的剂量分布与治疗计划系统(TPS)的参考剂量高度一致。三维总体伽马通过率(GPRs)达到了 97.15% ± 1.36%(3 毫米/3%,10% 临界值),比之前使用三维密集 U-Net 模型的最佳性能高出 2.53%。如果按照更严格的标准(2 毫米/3%,10%阈值和 1 毫米/3%,10%阈值)进行评估,总体 GPRs 仍然达到 96.53% ± 1.08% 和 95.03% ± 1.18%。此外,平均目标覆盖率(TC)为 98.33% ± 1.16%,剂量选择性(DS)为 0.57 ± 0.10,梯度指数(GI)为 2.69 ± 0.30,均匀性指数(HI)为 1.79 ± 0.09。与 3D Dense U-Net 相比,CDS-CNN 预测的 TC 值提高了 3.5%,在所有评价标准中,CDS-CNN 的剂量预测结果均优于 3D Dense U-Net。实验结果表明,所提出的 CDS-CNN 模型在预测 GKRS 剂量分布方面优于其他模型,其预测结果与 TPS 剂量非常接近。
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Enhanced 3D dose prediction for hypofractionated SRS (gamma knife radiosurgery) in brain tumor using cascaded-deep-supervised convolutional neural network.

Gamma Knife radiosurgery (GKRS) is a well-established technique in radiation therapy (RT) for treating small-size brain tumors. It administers highly concentrated doses during each treatment fraction, with even minor dose errors posing a significant risk of causing severe damage to healthy tissues. It underscores the critical need for precise and meticulous precision in GKRS. However, the planning process for GKRS is complex and time-consuming, heavily reliant on the expertise of medical physicists. Incorporating deep learning approaches for GKRS dose prediction can reduce this dependency, improve planning efficiency and homogeneity, streamline clinical workflows, and reduce patient lagging times. Despite this, precise Gamma Knife plan dose distribution prediction using existing models remains a significant challenge. The complexity stems from the intricate nature of dose distributions, subtle contrasts in CT scans, and the interdependence of dosimetric metrics. To overcome these challenges, we have developed a "Cascaded-Deep-Supervised" Convolutional Neural Network (CDS-CNN) that employs a hybrid-weighted optimization scheme. Our innovative method incorporates multi-level deep supervision and a strategic sequential multi-network training approach. It enables the extraction of intra-slice and inter-slice features, leading to more realistic dose predictions with additional contextual information. CDS-CNN was trained and evaluated using data from 105 brain cancer patients who underwent GKRS treatment, with 85 cases used for training and 20 for testing. Quantitative assessments and statistical analyses demonstrated high consistency between the predicted dose distributions and the reference doses from the treatment planning system (TPS). The 3D overall gamma passing rates (GPRs) reached 97.15% ± 1.36% (3 mm/3%, 10% threshold), surpassing the previous best performance by 2.53% using the 3D Dense U-Net model. When evaluated against more stringent criteria (2 mm/3%, 10% threshold, and 1 mm/3%, 10% threshold), the overall GPRs still achieved 96.53% ± 1.08% and 95.03% ± 1.18%. Furthermore, the average target coverage (TC) was 98.33% ± 1.16%, dose selectivity (DS) was 0.57 ± 0.10, gradient index (GI) was 2.69 ± 0.30, and homogeneity index (HI) was 1.79 ± 0.09. Compared to the 3D Dense U-Net, CDS-CNN predictions demonstrated a 3.5% improvement in TC, and CDS-CNN's dose prediction yielded better outcomes than the 3D Dense U-Net across all evaluation criteria. The experimental results demonstrated that the proposed CDS-CNN model outperformed other models in predicting GKRS dose distributions, with predictions closely matching the TPS doses.

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