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一种基于CT影像组学的机器学习模型,用于术前鉴别肝内肿块型胆管癌和炎性假瘤。

A machine learning model based on CT radiomics for preoperatively differentiating intrahepatic mass-type cholangiocarcinoma and inflammatory pseudotumours.

作者信息

Wang Xiao-Chun, Liang Jing-Hong, Huang Xiao-Yao, Tang Wen-Jian, He Yan-Mei, Zhong Jun-Yuan, Zhang Ling, Lu Lun

机构信息

Department of Medical Imaging, Ganzhou Institute of Medical Imaging, Ganzhou Key Laboratory of Medical Imaging and Artificial Intelligence, Medical Imaging Center, Ganzhou People's Hospital, The Affiliated Ganzhou Hospital of Nanchang University, Ganzhou Hospital-Nanfang Hospital, Southern Medical University, Ganzhou, 341000, China.

Department of Radiology, Nanfang Hospital, Southern Medical University, Guangzhou, 510515, China.

出版信息

BMC Cancer. 2025 Jul 1;25(1):1106. doi: 10.1186/s12885-025-14488-z.

Abstract

OBJECTIVE

Intrahepatic cholangiocarcinoma (ICC) and hepatic inflammatory pseudotumours (IPTs) share similar imaging features, leading to unnecessary biopsies and surgeries. Accurate preoperative differentiation is essential. Current studies using traditional imaging analysis have limited accuracy. We developed a machine learning model based on clinical and CT radiomic features to improve diagnostic accuracy.

METHODS

From May 2008 to January 2024, the data of 112 patients with ICC and 34 patients with hepatic IPTs who underwent preoperative plain and enhanced CT scans and whose diseases were confirmed by surgery and pathology were retrospectively analysed. A radiomic feature set, a clinical feature set, and a radiomic + clinical feature set were developed, and each was used to construct 14 machine learning models. The optimal hyperparameters were identified using fivefold cross-validation and a grid search. Finally, the area under the curve (AUC), accuracy, recall, precision, F1, Kappa value and other indicators were used to evaluate the performance of the models in the test sets to determine the optimal model for each feature subset.

RESULTS

The machine learning model constructed with the radiomic features of all the CT sequences and the fused model constructed with both clinical features + all the CT sequence radiomic features performed well (AUC = 0.91 and 0.97, respectively), whereas the performance of the machine learning model constructed with the clinical features alone was relatively poor (AUC = 0.73). In terms of model performance in identifying the two diseases, the accuracy of the fused model was better in identifying ICCs than in identifying IPTs.

CONCLUSION

A diagnostic model constructed from clinical and CT radiomic features quickly differentiated between IPT from ICC. The model may be helpful for the preoperative identification of IPTs and ICC.

摘要

目的

肝内胆管癌(ICC)与肝脏炎性假瘤(IPT)具有相似的影像学特征,导致不必要的活检和手术。准确的术前鉴别至关重要。目前使用传统影像分析的研究准确性有限。我们基于临床和CT影像组学特征开发了一种机器学习模型,以提高诊断准确性。

方法

回顾性分析2008年5月至2024年1月期间112例接受术前平扫及增强CT扫描且疾病经手术和病理确诊的ICC患者及34例肝脏IPT患者的数据。开发了影像组学特征集、临床特征集和影像组学+临床特征集,并分别用于构建14个机器学习模型。使用五折交叉验证和网格搜索确定最佳超参数。最后,使用曲线下面积(AUC)、准确率、召回率、精确率、F1值、Kappa值等指标评估模型在测试集中的性能,以确定每个特征子集的最佳模型。

结果

由所有CT序列的影像组学特征构建的机器学习模型以及由临床特征+所有CT序列影像组学特征构建的融合模型表现良好(AUC分别为0.91和0.97),而仅由临床特征构建的机器学习模型性能相对较差(AUC = 0.73)。在鉴别这两种疾病的模型性能方面,融合模型在鉴别ICC方面的准确率优于鉴别IPT。

结论

由临床和CT影像组学特征构建的诊断模型能够快速区分IPT与ICC。该模型可能有助于IPT和ICC的术前鉴别。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/9152/12211452/01f049343d2b/12885_2025_14488_Fig1_HTML.jpg

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