School of Physics & Astronomy - Faculty of Science and Engineering, University of Manchester, Manchester, M13 9PL, UK.
Division of Cancer Studies - School of Medical Sciences - Faculty of Biology- Medicine and Health, University of Manchester, Manchester, M20 4BX, UK.
Med Phys. 2021 Jun;48(6):3234-3242. doi: 10.1002/mp.14865. Epub 2021 Apr 24.
Contouring variation is one of the largest systematic uncertainties in radiotherapy, yet its effect on clinical outcome has never been analyzed quantitatively. We propose a novel, robust methodology to locally quantify target contour variation in a large patient cohort and find where this variation correlates with treatment outcome. We demonstrate its use on biochemical recurrence for prostate cancer patients.
We propose to compare each patient's target contours to a consistent and unbiased reference. This reference was created by auto-contouring each patient's target using an externally trained deep learning algorithm. Local contour deviation measured from the reference to the manual contour was projected to a common frame of reference, creating contour deviation maps for each patient. By stacking the contour deviation maps, time to event was modeled pixel-wise using a multivariate Cox proportional hazards model (CPHM). Hazard ratio (HR) maps for each covariate were created, and regions of significance found using cluster-based permutation testing on the z-statistics. This methodology was applied to clinical target volume (CTV) contours, containing only the prostate gland, from 232 intermediate- and high-risk prostate cancer patients. The reference contours were created using ADMIRE® v3.4 (Elekta AB, Sweden). Local contour deviations were computed in a spherical coordinate frame, where differences between reference and clinical contours were projected in a 2D map corresponding to sampling across the coronal and transverse angles every 3°. Time to biochemical recurrence was modeled using the pixel-wise CPHM analysis accounting for contour deviation, patient age, Gleason score, and treated CTV volume.
We successfully applied the proposed methodology to a large patient cohort containing data from 232 patients. In this patient cohort, our analysis highlighted regions where the contour variation was related to biochemical recurrence, producing expected and unexpected results: (a) the interface between prostate-bladder and prostate-seminal vesicle interfaces where increase in the manual contour relative to the reference was related to a reduction of risk of biochemical recurrence by 4-8% per mm and (b) the prostate's right, anterior and posterior regions where an increase in the manual contour relative to the reference contours was related to an increase in risk of biochemical recurrence by 8-24% per mm.
We proposed and successfully applied a novel methodology to explore the correlation between contour variation and treatment outcome. We analyzed the effect of contour deviation of the prostate CTV on biochemical recurrence for a cohort of more than 200 prostate cancer patients while taking basic clinical variables into account. Applying this methodology to a larger dataset including additional clinically important covariates and externally validating it can more robustly identify regions where contour variation directly relates to treatment outcome. For example, in the prostate case we use to demonstrate our novel methodology, external validation will help confirm or reject the counter-intuitive results (larger contours resulting in higher risk). Ultimately, the results of this methodology could inform contouring protocols based on actual patient outcomes.
轮廓变化是放射治疗中最大的系统不确定性之一,但尚未对其对临床结果的影响进行定量分析。我们提出了一种新颖、稳健的方法,可以在大量患者队列中局部量化目标轮廓变化,并找到与治疗结果相关的位置。我们用前列腺癌患者的生化复发来证明其用途。
我们建议将每个患者的目标轮廓与一致且无偏差的参考进行比较。该参考是通过使用外部训练的深度学习算法自动为每个患者的目标进行轮廓绘制而创建的。从手动轮廓到参考的局部轮廓偏差被投影到共同的参考框架中,为每个患者创建轮廓偏差图。通过堆叠轮廓偏差图,使用多元 Cox 比例风险模型 (CPHM) 对事件时间进行像素级建模。为每个协变量创建风险比 (HR) 图,并使用基于 z 统计量的聚类置换检验找到显著区域。该方法应用于包含前列腺的临床靶区 (CTV) 轮廓,来自 232 名中高危前列腺癌患者。参考轮廓是使用 ADMIRE® v3.4(Elekta AB,瑞典)创建的。局部轮廓偏差在球坐标框架中计算,其中参考和临床轮廓之间的差异在对应于沿冠状和横向角度每隔 3°采样的 2D 映射中投影。使用像素级 CPHM 分析考虑轮廓偏差、患者年龄、Gleason 评分和治疗 CTV 体积来建模生化复发的时间。
我们成功地将提出的方法应用于包含 232 名患者数据的大型患者队列。在该患者队列中,我们的分析突出了轮廓变化与生化复发相关的区域,产生了预期和意外的结果:(a) 前列腺-膀胱和前列腺-精囊之间的界面,手动轮廓相对于参考的增加与生化复发风险降低 4-8%/mm 相关;(b) 前列腺的右侧、前侧和后侧,手动轮廓相对于参考轮廓的增加与生化复发风险增加 8-24%/mm 相关。
我们提出并成功应用了一种新方法来探索轮廓变化与治疗结果之间的相关性。我们分析了前列腺 CTV 的轮廓偏差对 200 多名前列腺癌患者生化复发的影响,同时考虑了基本的临床变量。将该方法应用于包含更多临床重要协变量的更大数据集并对其进行外部验证,可以更稳健地识别与治疗结果直接相关的轮廓变化区域。例如,在我们用于演示新方法的前列腺案例中,外部验证将有助于确认或拒绝这种反直觉的结果(更大的轮廓会导致更高的风险)。最终,该方法的结果可以为基于实际患者结果的轮廓绘制协议提供信息。