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一种用于宫颈癌治疗中高剂量率近距离放疗的个性化剂量体积直方图预测模型。

A personalized DVH prediction model for HDR brachytherapy in cervical cancer treatment.

作者信息

Li Zhen, Chen Kehui, Yang Zhenyu, Zhu Qingyuan, Yang Xiaojing, Li Zhaobin, Fu Jie

机构信息

Shanghai Jiao Tong University Affiliated Sixth People's Hospital, Shanghai, China.

Shuguang Hospital Affiliated to Shanghai University of Traditional Chinese Medicine, Shanghai, China.

出版信息

Front Oncol. 2022 Aug 30;12:967436. doi: 10.3389/fonc.2022.967436. eCollection 2022.

Abstract

PURPOSE

Although the knowledge-based dose-volume histogram (DVH) prediction has been largely researched and applied in External Beam Radiation Therapy, it is still less investigated in the domain of brachytherapy. The purpose of this study is to develop a reliable DVH prediction method for high-dose-rate brachytherapy plans.

METHOD

A DVH prediction workflow combining kernel density estimation (KDE), k-nearest neighbor (kNN), and principal component analysis (PCA) was proposed. PCA and kNN were first employed together to select similar patients based on principal component directions. 79 cervical cancer patients with different applicators inserted was included in this study. The KDE model was built based on the relationship between distance-to-target (DTH) and the dose in selected cases, which can be subsequently used to estimate the dose probability distribution in the validation set. Model performance of bladder and rectum was quantified by |ΔD|, |ΔD|, |ΔD|, |ΔD|, and |ΔD| in the form of mean and standard deviation. The model performance between KDE only and the combination of kNN, PCA, and KDE was compared.

RESULT

20, 30 patients were selected for rectum and bladder based on KNN and PCA, respectively. The absolute residual between the actual plans and the predicted plans were 0.38 ± 0.29, 0.4 ± 0.32, 0.43 ± 0.36, 0.97 ± 0.66, and 0.13 ± 0.99 for |ΔD|, |ΔD|, |ΔD|, |ΔD|, and |ΔD| in the bladder, respectively. For rectum, the corresponding results were 0.34 ± 0.27, 0.38 ± 0.33, 0.63 ± 0.57, 1.41 ± 0.99 and 0.23 ± 0.17, respectively. The combination of kNN, PCA, and KDE showed a significantly better prediction performance than KDE only, with an improvement of 30.3% for the bladder and 33.3% for the rectum.

CONCLUSION

In this study, a knowledge-based machine learning model was proposed and verified to accurately predict the DVH for new patients. This model is proved to be effective in our testing group in the workflow of HDR brachytherapy.

摘要

目的

尽管基于知识的剂量体积直方图(DVH)预测在体外放射治疗中已得到大量研究和应用,但在近距离放射治疗领域的研究仍较少。本研究的目的是为高剂量率近距离放射治疗计划开发一种可靠的DVH预测方法。

方法

提出了一种结合核密度估计(KDE)、k近邻(kNN)和主成分分析(PCA)的DVH预测工作流程。首先将PCA和kNN一起用于基于主成分方向选择相似患者。本研究纳入了79例插入不同施源器的宫颈癌患者。基于所选病例中到靶区距离(DTH)与剂量之间的关系建立KDE模型,随后可用于估计验证集中的剂量概率分布。膀胱和直肠的模型性能通过|ΔD|、|ΔD|、|ΔD|、|ΔD|和|ΔD|以均值和标准差的形式进行量化。比较了仅使用KDE与kNN、PCA和KDE组合的模型性能。

结果

分别基于KNN和PCA为直肠和膀胱选择了20例、30例患者。膀胱中|ΔD|、|ΔD|、|ΔD|、|ΔD|和|ΔD|的实际计划与预测计划之间的绝对残差分别为0.38±0.29、0.4±0.32、0.43±0.36、0.97±0.66和0.13±0.99。直肠的相应结果分别为0.34±0.27、0.38±0.33、0.63±0.57、1.41±0.99和0.23±0.17。kNN、PCA和KDE的组合显示出比仅使用KDE显著更好的预测性能,膀胱提高了30.3%,直肠提高了33.3%。

结论

在本研究中,提出并验证了一种基于知识的机器学习模型,可准确预测新患者的DVH。该模型在我们测试组的高剂量率近距离放射治疗工作流程中被证明是有效的。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/ff96/9468814/50b53349c1dd/fonc-12-967436-g001.jpg

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