School of Biomedical Engineering & Imaging Sciences, King's College London, London, UK.
Medical Physics Department, Guy's and St. Thomas' Hospital NHS Foundation Trust, London, UK.
Med Phys. 2022 Apr;49(4):2172-2182. doi: 10.1002/mp.15575. Epub 2022 Mar 11.
To develop a knowledge-based decision-support system capable of stratifying patients for rectal spacer (RS) insertion based on neural network predicted rectal dose, reducing the need for time- and resource-intensive radiotherapy (RT) planning.
Forty-four patients treated for prostate cancer were enrolled into a clinical trial (NCT03238170). Dose-escalated prostate RT plans were manually created for 30 patients with simulated boost volumes using a conventional treatment planning system (TPS) and used to train a hierarchically dense 3D convolutional neural network to rapidly predict RT dose distributions. The network was used to predict rectal doses for 14 unseen test patients, with associated toxicity risks calculated according to published data. All metrics obtained using the network were compared to conventionally planned values.
The neural network stratified patients with an accuracy of 100% based on optimal rectal dose-volume histogram constraints and 78.6% based on mandatory constraints. The network predicted dose-derived grade 2 rectal bleeding risk within 95% confidence limits of -1.9% to +1.7% of conventional risk estimates (risk range 3.5%-9.9%) and late grade 2 fecal incontinence risk within -0.8% to +1.5% (risk range 2.3%-5.7%). Prediction of high-resolution 3D dose distributions took 0.7 s.
The feasibility of using a neural network to provide rapid decision support for RS insertion prior to RT has been demonstrated, and the potential for time and resource savings highlighted. Directly after target and healthy tissue delineation, the network is able to (i) risk stratify most patients with a high degree of accuracy to prioritize which patients would likely derive greatest benefit from RS insertion and (ii) identify patients close to the stratification threshold who would require conventional planning.
开发一种基于神经网络预测直肠剂量的知识型决策支持系统,对接受直肠癌放疗的患者进行分层,减少对耗时耗力的放疗(RT)计划的需求。
44 名前列腺癌患者参与了一项临床试验(NCT03238170)。为 30 名患者模拟了 boost 体积,使用传统的治疗计划系统(TPS)创建了剂量递增的前列腺 RT 计划,并用这些计划训练了一个层次密集的 3D 卷积神经网络,以便快速预测 RT 剂量分布。该网络用于预测 14 名未见测试患者的直肠剂量,并根据已发表的数据计算相关毒性风险。使用网络获得的所有指标均与常规计划值进行比较。
神经网络根据最优直肠剂量-体积直方图约束的准确率为 100%,根据强制性约束的准确率为 78.6%。该网络预测的直肠出血 2 级风险在常规风险估计值的-1.9%至+1.7%范围内(风险范围为 3.5%-9.9%),预测晚期 2 级粪便失禁风险在-0.8%至+1.5%范围内(风险范围为 2.3%-5.7%)。预测高分辨率 3D 剂量分布耗时 0.7 秒。
使用神经网络在 RT 前为 RS 插入提供快速决策支持的可行性已经得到证明,并且突出了节省时间和资源的潜力。在靶区和健康组织勾画后,网络能够(i)以高度的准确性对大多数患者进行风险分层,以确定哪些患者最有可能从 RS 插入中获益最大,(ii)识别接近分层阈值的患者,这些患者需要进行常规计划。