Bush Madison, Jones Scott, Hargrave Catriona
Queensland University of Technology, Faculty of Health, School of Clinical Sciences, Brisbane, Queensland, Australia.
Radiation Oncology Princess Alexandra Hospital Raymond Terrace (ROPART), South Brisbane, Queensland, Australia.
Tech Innov Patient Support Radiat Oncol. 2025 Feb 26;34:100305. doi: 10.1016/j.tipsro.2025.100305. eCollection 2025 Jun.
Hydrogel spacers (HS) are designed to minimise the radiation doses to the rectum in prostate cancer radiation therapy (RT) by creating a physical gap between the rectum and the target treatment volume inclusive of the prostate and seminal vesicles (SV). This study aims to determine the feasibility of incorporating diagnostic MRI (dMRI) information in statistical machine learning (SML) models developed with planning CT (pCT) anatomy for dose and rectal toxicity prediction. The SML models aim to support HS insertion decision-making prior to RT planning procedures.
Regions of interest (ROIs) were retrospectively contoured on the pCT and registered dMRI scans for 20 patients. ROI Dice and Hausdorff distance (HD) comparison metrics were calculated. The ROI and patient clinical risk factors (CRFs) variables were inputted into three SML models and then pCT and dMRI-based dose and toxicity model performance compared through confusion matrices, AUC curves, accuracy performance metric results and observed patient outcomes.
Average Dice values comparing dMRI and pCT ROIs were 0.81, 0.47 and 0.71 for the prostate, SV, and rectum respectively. Average Hausdorff distances were 2.15, 2.75 and 2.75 mm for the prostate, SV, and rectum respectively. The average accuracy metric across all models was 0.83 when using dMRI ROIs and 0.85 when using pCT ROIs.
Differences between pCT and dMRI anatomical ROI variables did not impact SML model performance in this study, demonstrating the feasibility of using dMRI images. Due to the limited sample size further training of the predictive models including dMRI anatomy is recommended.
水凝胶间隔物(HS)旨在通过在直肠与包括前列腺和精囊(SV)在内的目标治疗体积之间形成物理间隙,将前列腺癌放射治疗(RT)中直肠所受的辐射剂量降至最低。本研究旨在确定将诊断性磁共振成像(dMRI)信息纳入基于计划CT(pCT)解剖结构开发的统计机器学习(SML)模型中以预测剂量和直肠毒性的可行性。这些SML模型旨在支持在RT计划程序之前做出HS插入的决策。
对20例患者的pCT和配准后的dMRI扫描进行回顾性感兴趣区域(ROI)勾画。计算ROI的骰子系数和豪斯多夫距离(HD)比较指标。将ROI和患者临床风险因素(CRF)变量输入到三个SML模型中,然后通过混淆矩阵、AUC曲线、准确性性能指标结果以及观察到的患者结局比较基于pCT和dMRI的剂量和毒性模型性能。
前列腺、SV和直肠的dMRI与pCT ROI比较的平均骰子系数值分别为0.81、0.47和0.71。前列腺、SV和直肠的平均豪斯多夫距离分别为2.15、2.75和2.75毫米。使用dMRI ROI时所有模型的平均准确性指标为0.83,使用pCT ROI时为0.85。
在本研究中,pCT和dMRI解剖ROI变量之间的差异并未影响SML模型性能,证明了使用dMRI图像 的可行性。由于样本量有限,建议对包括dMRI解剖结构的预测模型进行进一步训练。