ACRF Image X Institute, University of Sydney Medical School, Sydney, NSW, Australia.
Nelune Comprehensive Cancer Centre, Prince of Wales Hospital, Sydney, NSW, Australia.
Med Phys. 2021 Jan;48(1):114-124. doi: 10.1002/mp.14572. Epub 2020 Nov 23.
For patients with locally advanced cancer, multiple targets are treated simultaneously with radiotherapy. Differential motion between targets can compromise the treatment accuracy, yet there are currently no methods able to adapt to independent target motion. This study developed a multileaf collimator (MLC) tracking algorithm for differential motion adaptation and evaluated it in simulated treatments of locally advanced prostate cancer.
A multi-target MLC tracking algorithm was developed that consisted of three steps: (a) dividing the MLC aperture into two possibly overlapping sections assigned to the prostate and lymph nodes, (b) calculating the ideally shaped MLC aperture as a union of the individually translated sections, and (c) fitting the MLC positions to the ideal aperture shape within the physical constraints of the MLC leaves. The multi-target tracking method was evaluated and compared with two existing motion management methods: single-target tracking and no tracking. Treatment simulations of six locally advanced prostate cancer patients with three prostate motion traces were performed for all three motion adaptation methods. The geometric error for each motion adaptation method was calculated using the area of overexposure and underexposure of each field. The dosimetric error was estimated by calculating the dose delivered to the prostate, lymph nodes, bladder, rectum, and small bowel using a motion-encoded dose reconstruction method.
Multi-target MLC tracking showed an average improvement in geometric error of 84% compared to single-target tracking, and 83% compared to no tracking. Multi-target tracking maintained dose coverage to the prostate clinical target volume (CTV) D98% and planning target volume (PTV) D95% to within 4.8% and 3.9% of the planned values, compared to 1.4% and 0.7% with single-target tracking, and 20.4% and 31.8% with no tracking. With multi-target tracking, the node CTV D95%, PTV D90%, and gross tumor volume (GTV) D95% were within 0.3%, 0.6%, and 0.3% of the planned values, compared to 9.1%, 11.2%, and 21.1% for single-target tracking, and 0.8%, 2.0%, and 3.2% with no tracking. The small bowel V57% was maintained within 0.2% to the plan using multi-target tracking, compared to 8% and 3.5% for single-target tracking and no tracking, respectively. Meanwhile, the bladder and rectum V50% increased by up to 13.6% and 5.2%, respectively, using multi-target tracking, compared to 2.7% and 1.9% for single-target tracking, and 11.2% and 11.5% for no tracking.
A multi-target tracking algorithm was developed and tracked the prostate and lymph nodes independently during simulated treatments. As the algorithm optimizes for target coverage, tracking both targets simultaneously may increase the dose delivered to the organs at risk.
对于局部晚期癌症患者,放射治疗同时针对多个靶区。靶区之间的差异运动可能会影响治疗的准确性,但目前尚无能够适应独立靶区运动的方法。本研究开发了一种多叶准直器(MLC)跟踪算法,用于适应差异运动,并在局部晚期前列腺癌的模拟治疗中进行了评估。
开发了一种多靶区 MLC 跟踪算法,该算法包括三个步骤:(a)将 MLC 孔径分为两个可能重叠的部分,分别分配给前列腺和淋巴结;(b)计算理想形状的 MLC 孔径作为单独平移部分的并集;(c)在 MLC 叶片的物理限制内将 MLC 位置拟合到理想孔径形状。对三种运动适应方法分别对六个局部晚期前列腺癌患者的三种前列腺运动轨迹进行了多目标跟踪方法的评估和比较。使用每个场的过曝光和欠曝光面积计算了每种运动适应方法的几何误差。通过使用运动编码剂量重建方法计算前列腺、淋巴结、膀胱、直肠和小肠的剂量来估计剂量误差。
多目标 MLC 跟踪与单目标跟踪相比,平均改善了 84%的几何误差,与无跟踪相比,平均改善了 83%。多目标跟踪将前列腺临床靶区(CTV)D98%和计划靶区(PTV)D95%的覆盖率保持在计划值的 4.8%和 3.9%以内,而单目标跟踪分别为 1.4%和 0.7%,无跟踪分别为 20.4%和 31.8%。使用多目标跟踪,淋巴结 CTV D95%、PTV D90%和大体肿瘤体积(GTV)D95%分别在计划值的 0.3%、0.6%和 0.3%以内,而单目标跟踪分别为 9.1%、11.2%和 21.1%,无跟踪分别为 0.8%、2.0%和 3.2%。与单目标跟踪和无跟踪相比,多目标跟踪将小肠 V57%维持在计划值的 0.2%以内。同时,使用多目标跟踪,膀胱和直肠 V50%分别增加了高达 13.6%和 5.2%,而单目标跟踪分别增加了 2.7%和 1.9%,无跟踪分别增加了 11.2%和 11.5%。
开发了一种多目标跟踪算法,并在模拟治疗过程中分别跟踪前列腺和淋巴结。由于该算法优化了靶区覆盖范围,因此同时跟踪两个靶区可能会增加对危险器官的剂量。