Liu Zefan, Zhu Guannan, Jiang Xian, Zhao Yunuo, Zeng Hao, Jing Jing, Ma Xuelei
Laboratory of Tumor Targeted and Immune Therapy, Clinical Research Center for Breast, West China Hospital, Sichuan University, Chengdu, China.
State Key Laboratory of Biotherapy, Department of Biotherapy, Cancer Center, West China Hospital, Sichuan University, Chengdu, China.
Front Oncol. 2020 Nov 27;10:604288. doi: 10.3389/fonc.2020.604288. eCollection 2020.
To establish a classifier for accurately predicting the overall survival of gallbladder cancer (GBC) patients by analyzing pre-treatment CT images using machine learning technology.
This retrospective study included 141 patients with pathologically confirmed GBC. After obtaining the pre-treatment CT images, manual segmentation of the tumor lesion was performed and LIFEx package was used to extract the tumor signature. Next, LASSO and Random Forest methods were used to optimize and model. Finally, the clinical information was combined to accurately predict the survival outcomes of GBC patients.
Fifteen CT features were selected through LASSO and random forest. On the basis of relative importance GLZLM-HGZE, GLCM-homogeneity and NGLDM-coarseness were included in the final model. The hazard ratio of the CT-based model was 1.462(95% CI: 1.014-2.107). According to the median of risk score, all patients were divided into high and low risk groups, and survival analysis showed that high-risk groups had a poor survival outcome ( = 0.012). After inclusion of clinical factors, we used multivariate COX to classify patients with GBC. The AUC values in the test set and validation set for 3 years reached 0.79 and 0.73, respectively.
GBC survival outcomes could be predicted by radiomics based on LASSO and Random Forest.
通过使用机器学习技术分析治疗前CT图像,建立一种能够准确预测胆囊癌(GBC)患者总生存期的分类器。
这项回顾性研究纳入了141例经病理证实的GBC患者。获取治疗前CT图像后,对肿瘤病变进行手动分割,并使用LIFEx软件包提取肿瘤特征。接下来,使用LASSO和随机森林方法进行优化和建模。最后,结合临床信息准确预测GBC患者的生存结果。
通过LASSO和随机森林选择了15个CT特征。基于相对重要性,最终模型纳入了GLZLM-HGZE、GLCM-同质性和NGLDM-粗糙度。基于CT的模型的风险比为1.462(95%CI:1.014-2.107)。根据风险评分中位数,将所有患者分为高风险组和低风险组,生存分析显示高风险组生存结果较差(P=0.012)。纳入临床因素后,我们使用多变量COX对GBC患者进行分类。测试集和验证集3年的AUC值分别达到0.79和0.73。
基于LASSO和随机森林的放射组学可以预测GBC的生存结果。