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基于机器学习的直肠癌壁外静脉侵犯检测影像组学列线图

Machine Learning-Based Radiomics Nomogram for Detecting Extramural Venous Invasion in Rectal Cancer.

作者信息

Liu Siye, Yu Xiaoping, Yang Songhua, Hu Pingsheng, Hu Yingbin, Chen Xiaoyan, Li Yilin, Zhang Zhe, Li Cheng, Lu Qiang

机构信息

Department of Diagnostic Radiology, Hunan Cancer Hospital and the Affiliated Cancer Hospital of Xiangya School of Medicine, Central South University, Changsha, China.

Department of Intestinal Oncology Surgery, Hunan Cancer Hospital and the Affiliated Cancer Hospital of Xiangya School of Medicine, Central South University, Changsha, China.

出版信息

Front Oncol. 2021 Mar 26;11:610338. doi: 10.3389/fonc.2021.610338. eCollection 2021.

Abstract

OBJECTIVE

To establish and validate a radiomics nomogram based on the features of the primary tumor for predicting preoperative pathological extramural venous invasion (EMVI) in rectal cancer using machine learning.

METHODS

The clinical and imaging data of 281 patients with primary rectal cancer from April 2012 to May 2018 were retrospectively analyzed. All the patients were divided into a training set (n = 198) and a test set (n = 83) respectively. The radiomics features of the primary tumor were extracted from the enhanced computed tomography (CT), the T2-weighted imaging (T2WI) and the gadolinium contrast-enhanced T1-weighted imaging (CE-TIWI) of each patient. One optimal radiomics signature extracted from each modal image was generated by receiver operating characteristic (ROC) curve analysis after dimensionality reduction. Three kinds of models were constructed based on training set, including the clinical model (the optimal radiomics signature combining with the clinical features), the magnetic resonance imaging model (the optimal radiomics signature combining with the mrEMVI status) and the integrated model (the optimal radiomics signature combining with both the clinical features and the mrEMVI status). Finally, the optimal model was selected to create a radiomics nomogram. The performance of the nomogram to evaluate clinical efficacy was verified by ROC curves and decision curve analysis curves.

RESULTS

The radiomics signature constructed based on T2WI showed the best performance, with an AUC value of 0.717, a sensitivity of 0.742 and a specificity of 0.621. The radiomics nomogram had the highest prediction efficiency, of which the AUC was 0.863, the sensitivity was 0.774 and the specificity was 0.801.

CONCLUSION

The radiomics nomogram had the highest efficiency in predicting EMVI. This may help patients choose the best treatment strategy and may strengthen personalized treatment methods to further optimize the treatment effect.

摘要

目的

利用机器学习,基于原发性肿瘤的特征建立并验证一种用于预测直肠癌术前病理壁外静脉侵犯(EMVI)的影像组学列线图。

方法

回顾性分析2012年4月至2018年5月期间281例原发性直肠癌患者的临床和影像数据。所有患者分别分为训练集(n = 198)和测试集(n = 83)。从每位患者的增强计算机断层扫描(CT)、T2加权成像(T2WI)和钆对比增强T1加权成像(CE-T1WI)中提取原发性肿瘤的影像组学特征。在降维后,通过受试者操作特征(ROC)曲线分析从每个模态图像中提取一个最优影像组学特征。基于训练集构建三种模型,包括临床模型(最优影像组学特征与临床特征相结合)、磁共振成像模型(最优影像组学特征与mrEMVI状态相结合)和综合模型(最优影像组学特征与临床特征和mrEMVI状态均相结合)。最后,选择最优模型创建影像组学列线图。通过ROC曲线和决策曲线分析曲线验证列线图评估临床疗效的性能。

结果

基于T2WI构建的影像组学特征表现最佳,AUC值为0.717,灵敏度为0.742,特异性为0.621。影像组学列线图具有最高的预测效率,其中AUC为0.863,灵敏度为0.774,特异性为0.801。

结论

影像组学列线图在预测EMVI方面效率最高。这可能有助于患者选择最佳治疗策略,并可能加强个性化治疗方法以进一步优化治疗效果。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/dac9/8033032/06042950ed9c/fonc-11-610338-g001.jpg

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