基于深度学习的放疗剂量计算可行性研究

Yixun Xing, D. Nguyen, W. Lu, Ming Yang, Steve B. Jiang
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引用次数: 37

摘要

目的:各种剂量计算算法可用于癌症患者的放射治疗。然而,这些算法面临着效率和准确性之间的权衡。快速算法通常精度较低,而精确的剂量引擎通常耗时。在这项工作中,我们试图通过探索用于剂量计算的深度学习(DL)来解决这一困境。方法:基于改进的层次密集连接U-net (HD U-net)模型开发了一种新的放疗剂量计算引擎,并对其在前列腺调强放疗(IMRT)病例中的可行性进行了验证。从IMRT通量图域映射到三维剂量域需要复杂的深度神经网络和庞大的训练数据集。为了解决这一问题,我们首先使用改进的射线跟踪算法将通量图投影到剂量域,然后使用HD U-net将射线跟踪剂量分布映射到使用塌锥卷积/叠加(CS)算法计算的精确剂量分布。结果:典型7场前列腺IMRT方案的三维剂量分布计算时间约为1秒,通过优化网络可以进一步缩短计算时间,实现实时剂量计算。对于所有8名测试患者,通过Gamma指数和各种IMRT优化的临床目标进行评估表明,DL剂量分布在临床上与CS剂量分布相同。结论:应用DL计算放疗剂量分布具有较高的准确性和效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Feasibility Study on Deep Learning-Based Radiotherapy Dose Calculation
Purpose: Various dose calculation algorithms are available for radiation therapy for cancer patients. However, these algorithms are faced with the tradeoff between efficiency and accuracy. The fast algorithms are generally less accurate, while the accurate dose engines are often time consuming. In this work, we try to resolve this dilemma by exploring deep learning (DL) for dose calculation. Methods: We developed a new radiotherapy dose calculation engine based on a modified Hierarchically Densely Connected U-net (HD U-net) model and tested its feasibility with prostate intensity-modulated radiation therapy (IMRT) cases. Mapping from an IMRT fluence map domain to a 3D dose domain requires a deep neural network of complicated architecture and a huge training dataset. To solve this problem, we first project the fluence maps to the dose domain using a modified ray-tracing algorithm, and then we use the HD U-net to map the ray-tracing dose distribution into an accurate dose distribution calculated using a collapsed cone convolution/superposition (CS) algorithm. Results: It takes about one second to compute a 3D dose distribution for a typical 7-field prostate IMRT plan, which can be further reduced to achieve real-time dose calculation by optimizing the network. For all eight testing patients, evaluation with Gamma Index and various clinical goals for IMRT optimization shows that the DL dose distributions are clinically identical to the CS dose distributions. Conclusions: We have shown the feasibility of using DL for calculating radiotherapy dose distribution with high accuracy and efficiency.
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