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Development and assessment of an individualized nomogram to predict colorectal cancer liver metastases

机译:对个性化载体的开发和评估预测结肠直肠癌肝转放酶

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Background: This article aims to develop and assess the radiomics paradigm for predicting colorectal cancer liver metastasis (CRLM) from the primary tumor. Methods: This retrospective study included 100 patients from the First Hospital of Jilin University from June 2017 to December 2017. The 100 patients comprised 50 patients with and 50 without CRLM. The maximum-level enhanced computed tomography (CT) image of primary cancer in the portal venous phase of each patient was selected as the original image data. To automatically implement radiomics-related paradigms, we developed a toolkit called Radiomics Intelligent Analysis Toolkit (RIAT). Results: With RIAT, the model based on logistic regression (LR) using both the radiomics and clinical information signatures showed the maximum net benefit. The area under the curve (AUC) value was 0.90±0.02 (sensitivity =0.85±0.02, specificity =0.79±0.04) for the training set, 0.86±0.11 (sensitivity =0.85±0.09, specificity =0.75±0.19) for the verification set, 0.906 (95% CI, 0.840–0.971; sensitivity =0.81, specificity =0.84) for the cross-validation set, and 0.899 (95% CI, 0.761–1.000; sensitivity =0.78, specificity =0.91) for the test set. Conclusions: The radiomics nomogram-based LR with clinical risk and radiomics features allows for a more accurate classification of CRLM using CT images with RIAT.
机译:背景:本文旨在开发和评估从原发性肿瘤预测结肠直肠癌肝转移(CRLM)的辐射瘤范式。方法:该回顾性研究包括从2017年6月到2017年12月的吉林大学第一医院100名患者。100名患者包含50名患者,50名没有CRLM。选择每个患者的门静脉相中的最大级增强计算断层扫描(CT)癌的主要癌症图像作为原始图像数据。为了自动实现与辐射族相关的范例,我们开发了一个名为RadioMics智能分析工具包(RIZ)的工具包。结果:使用RIAT,基于逻辑回归(LR)的模型使用射频和临床信息签名显示最大的净利润。训练集的曲线(AUC)值下的区域为0.90±0.02(灵敏度= 0.85±0.02),0.86±0.11(灵敏度= 0.85±0.09,特异性= 0.75±0.19)进行验证用于交叉验证组的0.906(95%CI,0.840-0.971;灵敏度= 0.81,特异性= 0.84),0.899(95%CI,0.761-1.000;灵敏度= 0.78,特异性= 0.91)用于测试集。结论:基于含有临床风险和辐射源特征的基于辐射瘤的LR允许使用带RIAT的CT图像更准确地分类CRL。

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