深度学习驱动的蒙特卡罗剂量分布在瑞士蒙特卡罗计划去噪。

Hannes A Loebner, Raphael Joost, Jenny Bertholet, Stavroula Mougiakakou, Michael K Fix, Peter Manser
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引用次数: 0

摘要

这项工作展示了一种快速、深度学习框架(DeepSMCP)的发展,以减轻具有高统计不确定性(SU)的光子处理计划的蒙特卡罗剂量分布(mc - dd)中的噪声,并将其集成到瑞士蒙特卡罗计划(SMCP)中。为此,一个双通道输入(MC-DD和计算机断层扫描(CT)扫描)3D U-net在高/低su MC-DD对106个临床动机VMAT弧上进行训练、验证和测试(80%/10%/10%),用于29个可用的CT,增加到3074对。将该模型集成到SMCP中,实现高SU的MC-DD计算和去噪以获得低SU的MC-DD的“一键式”工作流。在测试集上使用Gamma通过率(2%全局,2 mm, 10%阈值)比较去噪和低SU的MC-DD,评估模型精度。记录整个工作流程的计算时间。降噪后的mc - dd与低su的mc - dd相匹配,平均(标准差)Gamma通过率为82.9%(4.7%)。将DeepSMCP额外应用于12个未见的临床动机病例的不同治疗地点,包括训练期间未出现的治疗地点,导致平均Gamma通过率为91.0%。平均在35.1 秒内获得去噪的dd,与低su MC-DD计算相比,效率提高了340倍。DeepSMCP提出了首个无缝集成的mc - dd去噪框架。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
DeepSMCP - Deep-learning powered denoising of Monte Carlo dose distributions within the Swiss Monte Carlo Plan.

This work demonstrated the development of a fast, deep-learning framework (DeepSMCP) to mitigate noise in Monte Carlo dose distributions (MC-DDs) of photon treatment plans with high statistical uncertainty (SU) and its integration into the Swiss Monte Carlo Plan (SMCP). To this end, a two-channel input (MC-DD and computed tomography (CT) scan) 3D U-net was trained, validated and tested (80%/10%/10%) on high/low-SU MC-DD-pairs of 106 clinically-motivated VMAT arcs for 29 available CTs, augmented to 3074 pairs. The model was integrated into SMCP to enable a "one-click" workflow of calculating and denoising MC-DDs of high SU to obtain MC-DDs of low SU. The model accuracy was evaluated on the test set using Gamma passing rate (2% global, 2 mm, 10% threshold) comparing denoised and low-SU MC-DD. Calculation time for the whole workflow was recorded. Denoised MC-DDs match low-SU MC-DDs with average (standard deviation) Gamma passing rate of 82.9% (4.7%). Additional application of DeepSMCP to 12 unseen clinically-motivated cases of different treatment sites, including treatment sites not present during training, resulted in an average Gamma passing rate of 91.0%. Denoised DDs were obtained on average in 35.1 s, a 340-fold efficiency gain compared to low-SU MC-DD calculation. DeepSMCP presented a first seamlessly integrated promising denoising framework for MC-DDs.

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