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更新前列腺放射治疗的临床知识型计划预测模型。

Updating a clinical Knowledge-Based Planning prediction model for prostate radiotherapy.

机构信息

Medical Physics Department, Veneto Institute of Oncology IOV-IRCCS, via Gattamelata 64, 35128 Padova, Italy.

Medical Physics Department, Veneto Institute of Oncology IOV-IRCCS, via Gattamelata 64, 35128 Padova, Italy.

出版信息

Phys Med. 2023 Mar;107:102542. doi: 10.1016/j.ejmp.2023.102542. Epub 2023 Feb 11.

Abstract

BACKGROUND AND PURPOSE

Clinical knowledge-based planning (KBP) models dedicated to prostate radiotherapy treatment may require periodical updates to remain relevant and to adapt to possible changes in the clinic. This study proposes a paired comparison of two different update approaches through a longitudinal analysis.

MATERIALS AND METHODS

A clinically validated KBP model for moderately hypofractionated prostate therapy was periodically updated using two approaches: one was targeted at achieving the biggest library size (M), while the other one at achieving the highest mean sample quality (R). Four subsequent updates were accomplished. The goodness, robustness and quality of the outcomes were measured and compared to those of the common ancestor. Plan quality was assessed through the Plan Quality Metric (PQM) and plan complexity was monitored.

RESULTS

Both update procedures allowed for an increase in the OARs sparing between +3.9 % and +19.2 % compared to plans generated by a human planner. Target coverage and homogeneity slightly reduced [-0.2 %;-14.7 %] while plan complexity showed only minor changes. Increasing the sample size resulted in more reliable predictions and improved goodness-of-fit, while increasing the mean sample quality improved the outcomes but slightly reduced the models reliability.

CONCLUSIONS

Repeated updates of clinical KBP models can enhance their robustness, reliability and the overall quality of automatically generated plans. The periodical expansion of the model sample accompanied by the removal of the unacceptable low quality plans should maximize the benefits of the updates while limiting the associated workload.

摘要

背景与目的

专门用于前列腺放射治疗的基于临床知识的规划(KBP)模型可能需要定期更新,以保持相关性,并适应临床可能发生的变化。本研究通过纵向分析提出了两种不同更新方法的配对比较。

材料与方法

通过定期更新两种方法来对一种经过临床验证的用于中度适形分割前列腺治疗的 KBP 模型进行更新:一种方法旨在实现最大的库大小(M),另一种方法旨在实现最高的平均样本质量(R)。完成了四个后续更新。测量并比较了结果的良好性、稳健性和质量,与常见祖先的结果进行比较。通过计划质量度量(PQM)评估计划质量,并监测计划复杂性。

结果

与人类规划师生成的计划相比,两种更新程序都可以使 OAR 之间的保护增加+3.9%至+19.2%。靶区覆盖和均匀性略有降低[-0.2%;-14.7%],而计划复杂性仅略有变化。增加样本量可以提高预测的可靠性和拟合优度,而增加平均样本质量可以改善结果,但会略微降低模型的可靠性。

结论

对临床 KBP 模型进行重复更新可以增强其稳健性、可靠性和自动生成计划的整体质量。随着模型样本的定期扩展以及不可接受的低质量计划的删除,应该最大限度地提高更新的好处,同时限制相关的工作量。

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