School of Information Science and Engineering, Shandong University, Qingdao, Shandong, 266237, People's Republic of China.
Department of Radiation Oncology, Duke University Cancer Center, Durham, NC, 27710, USA.
Radiat Oncol. 2018 Oct 5;13(1):197. doi: 10.1186/s13014-018-1140-9.
To investigate the effect of machine learning methods on predicting the Overall Survival (OS) for non-small cell lung cancer based on radiomics features analysis.
A total of 339 radiomic features were extracted from the segmented tumor volumes of pretreatment computed tomography (CT) images. These radiomic features quantify the tumor phenotypic characteristics on the medical images using tumor shape and size, the intensity statistics and the textures. The performance of 5 feature selection methods and 8 machine learning methods were investigated for OS prediction. The predicted performance was evaluated with concordance index between predicted and true OS for the non-small cell lung cancer patients. The survival curves were evaluated by the Kaplan-Meier algorithm and compared by the log-rank tests.
The gradient boosting linear models based on Cox's partial likelihood method using the concordance index feature selection method obtained the best performance (Concordance Index: 0.68, 95% Confidence Interval: 0.62~ 0.74).
The preliminary results demonstrated that certain machine learning and radiomics analysis method could predict OS of non-small cell lung cancer accuracy.
为了研究机器学习方法在基于放射组学特征分析预测非小细胞肺癌总生存期(OS)方面的效果。
从预处理计算机断层扫描(CT)图像的分割肿瘤体积中提取了 339 个放射组学特征。这些放射组学特征使用肿瘤形状和大小、强度统计和纹理来量化医学图像上的肿瘤表型特征。研究了 5 种特征选择方法和 8 种机器学习方法在 OS 预测中的性能。使用非小细胞肺癌患者的预测 OS 和真实 OS 之间的一致性指数来评估预测性能。通过 Kaplan-Meier 算法评估生存曲线,并通过对数秩检验进行比较。
基于 Cox 部分似然法的梯度提升线性模型,使用一致性指数特征选择方法,获得了最佳性能(一致性指数:0.68,95%置信区间:0.62~0.74)。
初步结果表明,某些机器学习和放射组学分析方法可以准确预测非小细胞肺癌的 OS。