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基于钆塞酸二钠增强磁共振成像的机器学习用于鉴别非典型肝内肿块型胆管癌与低分化肝细胞癌

Machine learning based on gadoxetic acid-enhanced MRI for differentiating atypical intrahepatic mass-forming cholangiocarcinoma from poorly differentiated hepatocellular carcinoma.

作者信息

Chen Xiang, Chen Ying, Chen Haobo, Zhu Jingfen, Huang Renjun, Xie Junjian, Zhang Tao, Xie An, Li Yonggang

机构信息

Department of Radiology, the First Affiliated Hospital of Soochow University, Suzhou, 215000, Jiangsu, People's Republic of China.

Department of Radiology, Affiliated Nantong Hospital 3 of Nantong University, Youth Middle Road 60#, Nantong, Jiangsu, People's Republic of China.

出版信息

Abdom Radiol (NY). 2023 Aug;48(8):2525-2536. doi: 10.1007/s00261-023-03870-9. Epub 2023 May 11.

Abstract

PURPOSE

The study was to develop a Gd-EOB-DTPA-enhanced MRI radiomics model for differentiating atypical intrahepatic mass-forming cholangiocarcinoma (aIMCC) from poorly differentiated hepatocellular carcinoma (pHCC).

MATERIALS AND METHODS

A total of 134 patients (51 aIMCC and 83 pHCC) who underwent Gadoxetic acid-enhanced MRI between March 2016 and March 2022 were enrolled in this study and then randomly assigned to the training and validation cohorts by 7:3 (93 patients and 41 patients, respectively). The radiomics features were extracted from the hepatobiliary phase of Gadoxetic acid-enhanced MRI. In the training cohort, the SelectKBest and the least absolute shrinkage and selection operator (LASSO) were used to select the radiomics features. The clinical, radiomics, and clinical-radiomics model were established using four machine learning algorithms. The performance of the model was evaluated by the receiver operating characteristic (ROC) curve. Comparison of the radiomics and clinical-radiomics model was done by the Delong test. The clinical usefulness of the model was evaluated using decision curve analysis (DCA).

RESULTS

In 1132 extracted radiomic features, 15 were selected to develop radiomics signature. For identifying aIMCC and pHCC, the radiomics model constructed by random forest algorithm showed the high performance (AUC = 0.90) in the training cohort. The performance of the clinical-radiomics model (AUC = 0.89) was not significantly different (P = 0.88) from that of the radiomics model constructed by random forest algorithm (AUC = 0.86) in the validation cohort. DCA demonstrated that the clinical-radiomics model constructed by random forest algorithm had a high net clinical benefit.

CONCLUSION

The clinical-radiomics model is an effective tool to distinguish aIMCC from pHCC and may provide additional value for the development of treatment plans.

摘要

目的

本研究旨在建立一种钆塞酸二钠增强磁共振成像(Gd-EOB-DTPA-enhanced MRI)的影像组学模型,用于鉴别非典型肝内肿块型胆管癌(aIMCC)与低分化肝细胞癌(pHCC)。

材料与方法

本研究纳入了2016年3月至2022年3月期间接受钆塞酸增强MRI检查的134例患者(51例aIMCC和83例pHCC),然后按7:3随机分为训练组和验证组(分别为93例和41例)。从钆塞酸增强MRI的肝胆期提取影像组学特征。在训练组中,使用SelectKBest和最小绝对收缩与选择算子(LASSO)来选择影像组学特征。使用四种机器学习算法建立临床、影像组学和临床-影像组学模型。通过受试者操作特征(ROC)曲线评估模型的性能。通过德龙检验比较影像组学模型和临床-影像组学模型。使用决策曲线分析(DCA)评估模型的临床实用性。

结果

在提取的1132个影像组学特征中,选择了15个来构建影像组学特征标签。对于鉴别aIMCC和pHCC,随机森林算法构建的影像组学模型在训练组中表现出高性能(AUC = 0.90)。在验证组中,随机森林算法构建的影像组学模型(AUC = 0.86)与临床-影像组学模型(AUC = 0.89)的性能无显著差异(P = 0.88)。DCA表明,随机森林算法构建的临床-影像组学模型具有较高的净临床效益。

结论

临床-影像组学模型是鉴别aIMCC和pHCC的有效工具,可为治疗方案的制定提供额外价值。

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