Li Guangjun, Zhang Xiangyu, Song Xinyu, Duan Lian, Wang Guangyu, Xiao Qing, Li Jing, Liang Lan, Bai Long, Bai Sen
Department of Radiation Oncology, Cancer Center and State Key Laboratory of Biotherapy, West China Hospital, Sichuan University, Chengdu, China.
Department of Radiation Oncology, Perelman School of Medicine, University of Pennsylvania, Philadelphia, PA, USA.
Quant Imaging Med Surg. 2023 Mar 1;13(3):1605-1618. doi: 10.21037/qims-22-621. Epub 2023 Jan 9.
Internal tumor motion is commonly predicted using external respiratory signals. However, the internal/external correlation is complex and patient-specific. The purpose of this study was to develop various models based on the radiomic features of computed tomography (CT) images to predict the accuracy of tumor motion tracking using external surrogates and to find accurate and reliable tracking algorithms.
Images obtained from a total of 108 and 71 patients pathologically diagnosed with lung and liver cancers, respectively, were examined. Real-time position monitoring motion was fitted to tumor motion, and samples with fitting errors greater than 2 mm were considered positive. Radiomic features were extracted from internal target volumes of average intensity projections, and cross-validation least absolute shrinkage and selection operator (LassoCV) was used to conduct feature selection. Based on the radiomic features, a total of 26 separate models (13 for the lung and 13 for the liver) were trained and tested. Area under the receiver operating characteristic curve (AUC), sensitivity, and specificity were used to assess performance. Relative standard deviation was used to assess stability.
Thirty-three and 22 radiomic features were selected for the lung and liver, respectively. For the lung, the AUC varied from 0.848 (decision tree) to 0.941 [support vector classifier (SVC), logistic regression]; sensitivity varied from 0.723 (extreme gradient boosting) to 0.848 [linear support vector classifier (linearSVC)]; specificity varied from 0.834 (gaussian naive bayes) to 0.936 [multilayer perceptron (MLP), wide and deep (W&D)]; and MLP and W&D had better performance and stability than the median. For the liver, the AUC varied from 0.677 [light gradient boosting machine (Light)] to 0.892 (logistic regression); sensitivity varied from 0.717 (W&D) to 0.862 (MLP); specificity varied from 0.566 (Light) to 0.829 (linearSVC); and logistic regression, MLP, and SVC had better performance and stability than the median.
Respiratory-sensitive radiomic features extracted from CT images of lung and liver tumors were proved to contain sufficient information to establish an external/internal motion relationship. We developed a rapid and accurate method based on radiomics to classify the accuracy of monitoring a patient's external surface for lung and liver tumor tracking. Several machine learning algorithms-in particular, MLP-demonstrated excellent classification performance and stability.
通常利用外部呼吸信号来预测肿瘤内部运动。然而,内部/外部相关性复杂且因患者而异。本研究的目的是基于计算机断层扫描(CT)图像的放射组学特征开发各种模型,以预测使用外部替代物进行肿瘤运动跟踪的准确性,并找到准确可靠的跟踪算法。
分别对总共108例和71例经病理诊断为肺癌和肝癌的患者所获得的图像进行检查。将实时位置监测运动与肿瘤运动进行拟合,拟合误差大于2mm的样本被视为阳性。从平均强度投影的内部目标体积中提取放射组学特征,并使用交叉验证最小绝对收缩和选择算子(LassoCV)进行特征选择。基于放射组学特征,总共训练和测试了26个独立模型(13个用于肺癌,13个用于肝癌)。采用受试者操作特征曲线下面积(AUC)、敏感性和特异性来评估性能。使用相对标准差来评估稳定性。
分别为肺癌和肝癌选择了33个和22个放射组学特征。对于肺癌,AUC从0.848(决策树)到0.941[支持向量分类器(SVC),逻辑回归];敏感性从0.723(极端梯度提升)到0.848[线性支持向量分类器(linearSVC)];特异性从0.834(高斯朴素贝叶斯)到0.936[多层感知器(MLP),宽深(W&D)];并且MLP和W&D的性能和稳定性优于中位数。对于肝癌,AUC从0.677[轻梯度提升机(Light)]到0.892(逻辑回归);敏感性从0.717(W&D)到0.862(MLP);特异性从0.566(Light)到0.829(linearSVC);并且逻辑回归、MLP和SVC的性能和稳定性优于中位数。
从肺癌和肝癌的CT图像中提取的呼吸敏感放射组学特征被证明包含足够的信息来建立外部/内部运动关系。我们基于放射组学开发了一种快速准确的方法,用于对监测患者体表以跟踪肺癌和肝癌的准确性进行分类。几种机器学习算法——特别是MLP——表现出优异的分类性能和稳定性。