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基于增强磁共振成像的≤3cm小肝细胞癌中肿瘤簇包绕血管的列线图预测

Nomogram prediction of vessels encapsulating tumor clusters in small hepatocellular carcinoma ≤ 3 cm based on enhanced magnetic resonance imaging.

作者信息

Chen Hui-Lin, He Rui-Lin, Gu Meng-Ting, Zhao Xing-Yu, Song Kai-Rong, Zou Wen-Jie, Jia Ning-Yang, Liu Wan-Min

机构信息

School of Health Science and Engineering, University of Shanghai for Science and Technology, Shanghai 200093, China.

Department of Radiology, The Third Affiliated Hospital of Shanghai Naval Military Medical University, Shanghai 200438, China.

出版信息

World J Gastrointest Oncol. 2024 May 15;16(5):1808-1820. doi: 10.4251/wjgo.v16.i5.1808.

Abstract

BACKGROUND

Vessels encapsulating tumor clusters (VETC) represent a recently discovered vascular pattern associated with novel metastasis mechanisms in hepatocellular carcinoma (HCC). However, it seems that no one have focused on predicting VETC status in small HCC (sHCC). This study aimed to develop a new nomogram for predicting VETC positivity using preoperative clinical data and image features in sHCC (≤ 3 cm) patients.

AIM

To construct a nomogram that combines preoperative clinical parameters and image features to predict patterns of VETC and evaluate the prognosis of sHCC patients.

METHODS

A total of 309 patients with sHCC, who underwent segmental resection and had their VETC status confirmed, were included in the study. These patients were recruited from three different hospitals: Hospital 1 contributed 177 patients for the training set, Hospital 2 provided 78 patients for the test set, and Hospital 3 provided 54 patients for the validation set. Independent predictors of VETC were identified through univariate and multivariate logistic analyses. These independent predictors were then used to construct a VETC prediction model for sHCC. The model's performance was evaluated using the area under the curve (AUC), calibration curve, and clinical decision curve. Additionally, Kaplan-Meier survival analysis was performed to confirm whether the predicted VETC status by the model is associated with early recurrence, just as it is with the actual VETC status and early recurrence.

RESULTS

Alpha-fetoprotein_lg10, carbohydrate antigen 199, irregular shape, non-smooth margin, and arterial peritumoral enhancement were identified as independent predictors of VETC. The model incorporating these predictors demonstrated strong predictive performance. The AUC was 0.811 for the training set, 0.800 for the test set, and 0.791 for the validation set. The calibration curve indicated that the predicted probability was consistent with the actual VETC status in all three sets. Furthermore, the decision curve analysis demonstrated the clinical benefits of our model for patients with sHCC. Finally, early recurrence was more likely to occur in the VETC-positive group compared to the VETC-negative group, regardless of whether considering the actual or predicted VETC status.

CONCLUSION

Our novel prediction model demonstrates strong performance in predicting VETC positivity in sHCC (≤ 3 cm) patients, and it holds potential for predicting early recurrence. This model equips clinicians with valuable information to make informed clinical treatment decisions.

摘要

背景

包裹肿瘤簇的血管(VETC)是一种最近发现的与肝细胞癌(HCC)新转移机制相关的血管模式。然而,似乎没有人关注预测小肝癌(sHCC)中的VETC状态。本研究旨在利用sHCC(≤3 cm)患者的术前临床数据和图像特征开发一种新的列线图来预测VETC阳性。

目的

构建一个结合术前临床参数和图像特征的列线图,以预测VETC模式并评估sHCC患者的预后。

方法

本研究纳入了309例行节段性切除且VETC状态得到确认的sHCC患者。这些患者来自三家不同的医院:医院1为训练集贡献了177例患者,医院2为测试集提供了78例患者,医院3为验证集提供了54例患者。通过单因素和多因素逻辑分析确定VETC的独立预测因素。然后使用这些独立预测因素构建sHCC的VETC预测模型。使用曲线下面积(AUC)、校准曲线和临床决策曲线评估该模型的性能。此外,进行Kaplan-Meier生存分析以确认模型预测的VETC状态是否与早期复发相关,就像实际VETC状态与早期复发相关一样。

结果

甲胎蛋白_lg10、糖类抗原199、不规则形状、边缘不光滑以及肿瘤周围动脉强化被确定为VETC的独立预测因素。纳入这些预测因素的模型表现出强大的预测性能。训练集的AUC为0.811,测试集为0.800,验证集为0.791。校准曲线表明,在所有三个数据集中预测概率与实际VETC状态一致。此外,决策曲线分析证明了我们的模型对sHCC患者的临床益处。最后,无论考虑实际还是预测的VETC状态,VETC阳性组比VETC阴性组更易发生早期复发。

结论

我们的新型预测模型在预测sHCC(≤3 cm)患者的VETC阳性方面表现出强大性能,并且具有预测早期复发的潜力。该模型为临床医生提供了有价值的信息,以便做出明智的临床治疗决策。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/0d07/11099422/264c523d002d/WJGO-16-1808-g001.jpg

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