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首页> 外文期刊>Physics and Imaging in Radiation Oncology >Deep learning auto-segmentation and automated treatment planning for trismus risk reduction in head and neck cancer radiotherapy
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Deep learning auto-segmentation and automated treatment planning for trismus risk reduction in head and neck cancer radiotherapy

机译:深度学习自动分割和颈部癌症放射治疗的临时风险降低的自动化治疗规划

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Background and Purpose Reducing trismus in radiotherapy for head and neck cancer (HNC) is important. Automated deep learning (DL) segmentation and automated planning was used to introduce new and rarely segmented masticatory structures to study if trismus risk could be decreased. Materials and Methods Auto-segmentation was based on purpose-built DL, and automated planning used our in-house system, ECHO. Treatment plans for ten HNC patients, treated with 2?Gy?×?35 fractions, were optimized (ECHO 0 ). Six manually segmented OARs were replaced with DL auto-segmentations and the plans re-optimized (ECHO 1 ). In a third set of plans, mean doses for auto-segmented ipsilateral masseter and medial pterygoid (MI Mean , MPI Mean ), derived from a trismus risk model, were implemented as dose-volume objectives (ECHO 2 ). Clinical dose-volume criteria were compared between the two scenarios (ECHO 0 vs . ECHO 1 ; ECHO 1 vs . ECHO 2 ; Wilcoxon signed-rank test; significance: p??0.01). Results Small systematic differences were observed between the doses to the six auto-segmented OARs and their manual counterparts (median: ECHO 1 ?=?6.2 (range: 0.4, 21) Gy vs. ECHO 0 ?=?6.6 (range: 0.3, 22) Gy; p?=?0.007), and the ECHO 1 plans provided improved normal tissue sparing across a larger dose-volume range. Only in the ECHO 2 plans, all patients fulfilled both MI Mean and MPI Mean criteria. The population median MI Mean and MPI Mean were considerably lower than those suggested by the trismus model (ECHO 0 : MI Mean ?=?13?Gy vs. ≤42?Gy; MPI Mean ?=?29?Gy vs. ≤68?Gy). Conclusions Automated treatment planning can efficiently incorporate new structures from DL auto-segmentation, which results in trismus risk sparing without deteriorating treatment plan quality. Auto-planning and deep learning auto-segmentation together provide a powerful platform to further improve treatment planning.
机译:背景和目的减少头部和颈部癌症(HNC)放射治疗中的Trismus是重要的。自动化深度学习(DL)分割和自动规划用于引入新的,很少分段的咀嚼结构,以研究Trismus风险是否可以减少。材料和方法自动分割是基于目的地的DL,自动化规划使用我们的内部系统,回声。 10株HNC患者的治疗计划,用2?gy?×35分数处理,得到优化(回声0)。用DL自动分割替换六个手动分段桨,并重新优化的计划(回声1)。在第三组计划中,用于从Trismus风险模型的自动分段的同侧肌等肌肉和内侧翼形(MI平均值,MPI平均值)的平均剂量被实施为剂量体积目标(回声2)。比较两种情况之间的临床剂量标准(回声0 VS。回声1;回声1 VS。回声2; Wilcoxon签名 - 等级测试;意义:P?&?0.01)。结果在六个自动分段的桨和手动对应物之间观察到少量系统差异(中位数:回声1?=?6.2(范围:0.4,21)Gy与回声0?=?6.6(范围:0.3, 22)GY; P?= 0.007),回声1计划提供了改善的正常组织在更大的剂量范围内施加。只有在Echo 2计划中,所有患者均满足MI平均值和MPI平均标准。人口中位数Mi平均值和MPI平均值比TRISMUS模型所示的均值相当低(ECHO 0:MI意味着?=?13?GY与≤42?GY; MPI意味着?=?29?GY与≤68? GY)。结论自动化处理规划可以有效地从DL自动分割中纳入新结构,这导致Trismus风险备件,而不会降低治疗计划质量。自动规划和深度学习自动分割共同提供了一个强大的平台,以进一步改善治疗计划。

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