Duke University Medical Center, Durham, NC, 27710, USA.
University of North Carolina at Charlotte, Charlotte, NC, 28223, USA.
Med Phys. 2021 Jun;48(6):2714-2723. doi: 10.1002/mp.14770. Epub 2021 Apr 25.
To develop an artificial intelligence (AI) agent for fully automated rapid head-and-neck intensity-modulated radiation therapy (IMRT) plan generation without time-consuming dose-volume-based inverse planning.
This AI agent was trained via implementing a conditional generative adversarial network (cGAN) architecture. The generator, PyraNet, is a novel deep learning network that implements 28 classic ResNet blocks in pyramid-like concatenations. The discriminator is a customized four-layer DenseNet. The AI agent first generates multiple customized two-dimensional projections at nine template beam angles from a patient's three-dimensional computed tomography (CT) volume and structures. These projections are then stacked as four-dimensional inputs of PyraNet, from which nine radiation fluence maps of the corresponding template beam angles are generated simultaneously. Finally, the predicted fluence maps are automatically postprocessed by Gaussian deconvolution operations and imported into a commercial treatment planning system (TPS) for plan integrity check and visualization. The AI agent was built and tested upon 231 oropharyngeal IMRT plans from a TPS plan library. 200/16/15 plans were assigned for training/validation/testing, respectively. Only the primary plans in the sequential boost regime were studied. All plans were normalized to 44 Gy prescription (2 Gy/fx). A customized Harr wavelet loss was adopted for fluence map comparison during the training of the PyraNet. For test cases, isodose distributions in AI plans and TPS plans were qualitatively evaluated for overall dose distributions. Key dosimetric metrics were compared by Wilcoxon signed-rank tests with a significance level of 0.05.
All 15 AI plans were successfully generated. Isodose gradients outside of PTV in AI plans were comparable to those of the TPS plans. After PTV coverage normalization, D of left parotid (D = 23.1 ± 2.4 Gy; D = 23.1 ± 2.0 Gy), right parotid (D = 23.8 ± 3.0 Gy; D = 23.9 ± 2.3 Gy), and oral cavity (D = 24.7 ± 6.0 Gy; D = 23.9 ± 4.3 Gy) in the AI plans and the TPS plans were comparable without statistical significance. AI plans achieved comparable results for maximum dose at 0.01cc of brainstem (D = 15.0 ± 2.1 Gy; D = 15.5 ± 2.7 Gy) and cord + 5mm (D = 27.5 ± 2.3 Gy; D = 25.8 ± 1.9 Gy) without clinically relevant differences, but body D results (D = 121.1 ± 3.9 Gy; D = 109.0 ± 0.9 Gy) were higher than the TPS plan results. The AI agent needed ~3 s for predicting fluence maps of an IMRT plan.
With rapid and fully automated execution, the developed AI agent can generate complex head-and-neck IMRT plans with acceptable dosimetry quality. This approach holds great potential for clinical applications in preplanning decision-making and real-time planning.
开发一种人工智能(AI)代理,用于全自动快速头颈部强度调制放射治疗(IMRT)计划生成,无需耗时的基于剂量-体积的逆规划。
该 AI 代理通过实施条件生成对抗网络(cGAN)架构进行训练。生成器 PyraNet 是一种新颖的深度学习网络,它在金字塔状的串联中实现了 28 个经典的 ResNet 块。鉴别器是一个定制的四层 DenseNet。AI 代理首先从患者的三维计算机断层扫描(CT)体积和结构中以九个模板射束角度生成多个定制的二维投影。然后,这些投影被堆叠为 PyraNet 的四维输入,从那里同时生成九个对应模板射束角度的辐射剂量图。最后,预测的剂量图通过高斯反卷积操作自动进行后处理,并导入到商业治疗计划系统(TPS)中进行完整性检查和可视化。AI 代理是在 TPS 计划库中的 231 个口咽 IMRT 计划上构建和测试的。分别为训练/验证/测试分配了 200/16/15 个计划。仅研究了序贯增强治疗方案中的主要计划。所有计划均归一化为 44Gy 处方(2Gy/fx)。在训练 PyraNet 期间,采用了定制的 Harr 小波损失来进行剂量图比较。对于测试用例,AI 计划和 TPS 计划中的等剂量分布在整体剂量分布方面进行了定性评估。通过 Wilcoxon 符号秩检验对关键剂量学指标进行了比较,显著性水平为 0.05。
所有 15 个 AI 计划都成功生成。AI 计划中 PTV 外的等剂量梯度与 TPS 计划相当。在 PTV 覆盖归一化后,左腮腺(D=23.1±2.4Gy;D=23.1±2.0Gy)、右腮腺(D=23.8±3.0Gy;D=23.9±2.3Gy)和口腔(D=24.7±6.0Gy;D=23.9±4.3Gy)的 D 值在 AI 计划和 TPS 计划中相当,无统计学意义。AI 计划在脑干 0.01cc 处的最大剂量(D=15.0±2.1Gy;D=15.5±2.7Gy)和脊髓+5mm(D=27.5±2.3Gy;D=25.8±1.9Gy)处达到了可比的结果,没有临床相关的差异,但身体 D 结果(D=121.1±3.9Gy;D=109.0±0.9Gy)高于 TPS 计划结果。AI 代理预测 IMRT 计划的剂量图大约需要 3 秒。
通过快速和全自动执行,开发的 AI 代理可以生成具有可接受剂量学质量的复杂头颈部 IMRT 计划。这种方法在预规划决策和实时计划方面具有很大的临床应用潜力。