Department of Radiation Oncology, Duke University Medical Center, Durham, North Carolina 27708, USA.
Med Phys. 2011 Feb;38(2):719-26. doi: 10.1118/1.3539749.
To ensure plan quality for adaptive IMRT of the prostate, we developed a quantitative evaluation tool using a machine learning approach. This tool generates dose volume histograms (DVHs) of organs-at-risk (OARs) based on prior plans as a reference, to be compared with the adaptive plan derived from fluence map deformation.
Under the same configuration using seven-field 15 MV photon beams, DVHs of OARs (bladder and rectum) were estimated based on anatomical information of the patient and a model learned from a database of high quality prior plans. In this study, the anatomical information was characterized by the organ volumes and distance-to-target histogram (DTH). The database consists of 198 high quality prostate plans and was validated with 14 cases outside the training pool. Principal component analysis (PCA) was applied to DVHs and DTHs to quantify their salient features. Then, support vector regression (SVR) was implemented to establish the correlation between the features of the DVH and the anatomical information.
DVH/DTH curves could be characterized sufficiently just using only two or three truncated principal components, thus, patient anatomical information was quantified with reduced numbers of variables. The evaluation of the model using the test data set demonstrated its accuracy approximately 80% in prediction and effectiveness in improving ART planning quality.
An adaptive IMRT plan quality evaluation tool based on machine learning has been developed, which estimates OAR sparing and provides reference in evaluating ART.
为确保前列腺自适应调强放疗计划的质量,我们开发了一种使用机器学习方法的定量评估工具。该工具根据参考的先前计划生成危及器官(OAR)的剂量体积直方图(DVH),并与基于通量图变形得出的自适应计划进行比较。
在使用七野 15 MV 光子束的相同配置下,根据患者的解剖信息和从高质量先前计划数据库中学习到的模型,估计 OAR(膀胱和直肠)的 DVH。在本研究中,解剖信息由器官体积和靶区距离直方图(DTH)描述。该数据库包含 198 个高质量前列腺计划,并在 14 个不在训练集内的病例中进行了验证。主成分分析(PCA)被应用于 DVH 和 DTH,以量化它们的显著特征。然后,支持向量回归(SVR)被用于建立 DVH 特征与解剖信息之间的相关性。
仅使用两个或三个截断的主成分就可以充分描述 DVH/DTH 曲线,从而用较少的变量来量化患者的解剖信息。使用测试数据集对模型的评估表明,其在预测方面的准确性约为 80%,在提高自适应放疗计划质量方面具有有效性。
已经开发了一种基于机器学习的自适应调强放疗计划质量评估工具,它可以评估 OAR 保护,并为评估自适应放疗提供参考。