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用于识别非转移性结肠癌高危患者的放射组学癌症特征

Radiomic Cancer Hallmarks to Identify High-Risk Patients in Non-Metastatic Colon Cancer.

作者信息

Caruso Damiano, Polici Michela, Zerunian Marta, Del Gaudio Antonella, Parri Emanuela, Giallorenzi Maria Agostina, De Santis Domenico, Tarantino Giulia, Tarallo Mariarita, Dentice di Accadia Filippo Maria, Iannicelli Elsa, Garbarino Giovanni Maria, Canali Giulia, Mercantini Paolo, Fiori Enrico, Laghi Andrea

机构信息

Radiology Unit, Department of Medical Surgical Sciences and Translational Medicine, Sapienza University of Rome-Sant'Andrea University Hospital, Via di Grottarossa, 1035-1039, 00189 Rome, Italy.

Surgery Unit, Department of Medical Surgical Sciences and Translational Medicine, Sapienza University of Rome-Sant'Andrea University Hospital, Via di Grottarossa, 1035-1039, 00189 Rome, Italy.

出版信息

Cancers (Basel). 2022 Jul 15;14(14):3438. doi: 10.3390/cancers14143438.

Abstract

The study was aimed to develop a radiomic model able to identify high-risk colon cancer by analyzing pre-operative CT scans. The study population comprised 148 patients: 108 with non-metastatic colon cancer were retrospectively enrolled from January 2015 to June 2020, and 40 patients were used as the external validation cohort. The population was divided into two groups—High-risk and No-risk—following the presence of at least one high-risk clinical factor. All patients had baseline CT scans, and 3D cancer segmentation was performed on the portal phase by two expert radiologists using open-source software (3DSlicer v4.10.2). Among the 107 radiomic features extracted, stable features were selected to evaluate the inter-class correlation (ICC) (cut-off ICC > 0.8). Stable features were compared between the two groups (T-test or Mann−Whitney), and the significant features were selected for univariate and multivariate logistic regression to build a predictive radiomic model. The radiomic model was then validated with an external cohort. In total, 58/108 were classified as High-risk and 50/108 as No-risk. A total of 35 radiomic features were stable (0.81 ≤ ICC <  0.92). Among these, 28 features were significantly different between the two groups (p < 0.05), and only 9 features were selected to build the radiomic model. The radiomic model yielded an AUC of 0.73 in the internal cohort and 0.75 in the external cohort. In conclusion, the radiomic model could be seen as a performant, non-invasive imaging tool to properly stratify colon cancers with high-risk disease.

摘要

该研究旨在通过分析术前CT扫描结果,开发一种能够识别高危结肠癌的放射组学模型。研究人群包括148例患者:2015年1月至2020年6月回顾性纳入108例非转移性结肠癌患者,40例患者作为外部验证队列。根据是否存在至少一种高危临床因素,将人群分为高危组和非高危组。所有患者均进行了基线CT扫描,两名专家放射科医生使用开源软件(3DSlicer v4.10.2)在门静脉期进行了三维肿瘤分割。在提取的107个放射组学特征中,选择稳定特征评估组内相关系数(ICC)(截断值ICC>0.8)。比较两组之间的稳定特征(t检验或曼-惠特尼检验),选择有显著差异的特征进行单因素和多因素逻辑回归,以建立预测性放射组学模型。然后用外部队列对放射组学模型进行验证。总共108例患者中,58例被分类为高危,50例为非高危。共有35个放射组学特征稳定(0.81≤ICC<0.92)。其中,两组之间有28个特征存在显著差异(p<0.05),仅选择9个特征建立放射组学模型。放射组学模型在内部队列中的AUC为0.73,在外部队列中的AUC为0.75。总之,放射组学模型可被视为一种性能良好的非侵入性成像工具,用于对高危结肠癌进行合理分层。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/d400/9319440/1b0eabc48b39/cancers-14-03438-g001.jpg

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