Department of Radiation Oncology, University of Washington, Seattle, WA, USA.
Department of Radiology, University of Washington, Seattle, WA, USA.
Med Phys. 2019 Feb;46(2):456-464. doi: 10.1002/mp.13338. Epub 2018 Dec 28.
Patient-specific quality assurance (QA) for intensity-modulated radiation therapy (IMRT) is a ubiquitous clinical procedure, but conventional methods have often been criticized as being insensitive to errors or less effective than other common physics checks. Recently, there has been interest in the application of radiomics, quantitative extraction of image features, to radiotherapy QA. In this work, we investigate a deep learning approach to classify the presence or absence of introduced radiotherapy treatment delivery errors from patient-specific QA.
Planar dose maps from 186 IMRT beams from 23 IMRT plans were evaluated. Each plan was transferred to a cylindrical phantom CT geometry. Three sets of planar doses were exported from each plan corresponding to (a) the error-free case, (b) a random multileaf collimator (MLC) error case, and (c) a systematic MLC error case. Each plan was delivered to the electronic portal imaging device (EPID), and planned and measured doses were used to calculate gamma images in an EPID dosimetry software package (for a total of 558 gamma images). Two radiomic approaches were used. In the first, a convolutional neural network with triplet learning was used to extract image features from the gamma images. In the second, a handcrafted approach using texture features was used. The resulting metrics from both approaches were input into four machine learning classifiers (support vector machines, multilayer perceptrons, decision trees, and k-nearest-neighbors) in order to determine whether images contained the introduced errors. Two experiments were considered: the two-class experiment classified images as error-free or containing any MLC error, and the three-class experiment classified images as error-free, containing a random MLC error, or containing a systematic MLC error. Additionally, threshold-based passing criteria were calculated for comparison.
In total, 303 gamma images were used for model training and 255 images were used for model testing. The highest classification accuracy was achieved with the deep learning approach, with a maximum accuracy of 77.3% in the two-class experiment and 64.3% in the three-class experiment. The performance of the handcrafted approach with texture features was lower, with a maximum accuracy of 66.3% in the two-class experiment and 53.7% in the three-class experiment. Variability between the results of the four machine learning classifiers was lower for the deep learning approach vs the texture feature approach. Both radiomic approaches were superior to threshold-based passing criteria.
Deep learning with convolutional neural networks can be used to classify the presence or absence of introduced radiotherapy treatment delivery errors from patient-specific gamma images. The performance of the deep learning network was superior to a handcrafted approach with texture features, and both radiomic approaches were better than threshold-based passing criteria. The results suggest that radiomic QA is a promising direction for clinical radiotherapy.
针对强度调制放射治疗(IMRT)的患者特异性质量保证(QA)是一种普遍的临床程序,但传统方法经常受到批评,认为其对误差不敏感或不如其他常见物理检查有效。最近,人们对放射组学的应用产生了兴趣,放射组学是对图像特征进行定量提取,以用于放射治疗 QA。在这项工作中,我们研究了一种深度学习方法,用于从患者特异性 QA 中分类是否存在引入的放射治疗传递误差。
评估了 23 个 IMRT 计划中的 186 个 IMRT 射束的平面剂量图。每个计划都被转移到圆柱形体模 CT 几何形状中。从每个计划中导出了三组平面剂量,分别对应于(a)无误差情况,(b)随机多叶准直器(MLC)误差情况,和(c)系统 MLC 误差情况。每个计划都被传递到电子射野影像装置(EPID),并使用计划和测量的剂量在 EPID 剂量学软件包中计算伽马图像(总共 558 个伽马图像)。使用了两种放射组学方法。在第一种方法中,使用三胞胎学习的卷积神经网络从伽马图像中提取图像特征。在第二种方法中,使用纹理特征的手工制作方法。将两种方法的结果指标输入到四个机器学习分类器(支持向量机、多层感知机、决策树和 K 最近邻)中,以确定图像是否包含引入的误差。考虑了两个实验:两分类实验将图像分类为无误差或包含任何 MLC 误差,三分类实验将图像分类为无误差、包含随机 MLC 误差或包含系统 MLC 误差。此外,还计算了基于阈值的通过标准进行比较。
总共使用了 303 个伽马图像进行模型训练,使用了 255 个图像进行模型测试。在两种实验中,深度学习方法的分类准确性最高,分别达到了 77.3%和 64.3%。使用纹理特征的手工制作方法的性能较低,分别达到了 66.3%和 53.7%。与纹理特征方法相比,深度学习方法的四个机器学习分类器的结果之间的变异性更低。两种放射组学方法均优于基于阈值的通过标准。
使用卷积神经网络的深度学习可用于从患者特异性伽马图像中分类是否存在引入的放射治疗传递误差。深度学习网络的性能优于使用纹理特征的手工制作方法,并且两种放射组学方法都优于基于阈值的通过标准。结果表明,放射组学 QA 是放射治疗临床的一个有前途的方向。