Construction of a 2.5D Deep Learning Model for Predicting Early Postoperative Recurrence of Hepatocellular Carcinoma Using Multi-View and Multi-Phase CT Images.

IF 4.2 3区 医学 Q2 ONCOLOGY
Journal of Hepatocellular Carcinoma Pub Date : 2024-11-16 eCollection Date: 2024-01-01 DOI:10.2147/JHC.S493478
Yu-Bo Zhang, Zhi-Qiang Chen, Yang Bu, Peng Lei, Wei Yang, Wei Zhang
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引用次数: 0

Abstract

Purpose: To construct a 2.5-dimensional (2.5D) CT radiomics-based deep learning (DL) model to predict early postoperative recurrence of hepatocellular carcinoma (HCC).

Patients and methods: We retrospectively analyzed the data of patients who underwent HCC resection at 2 centers. The 232 patients from center 1 were randomly divided into the training (162 patients) and internal validation cohorts (70 patients); 91 patients from center 2 formed the external validation cohort. We developed a 2.5D DL model based on a central 2D image with the maximum tumor cross-section and adjacent slices. Multiple views (transverse, sagittal, and coronal) and phases (arterial, plain, and portal) were incorporated. Multi-instance learning techniques were applied to the extracted data; the resulting comprehensive feature set was modeled using Logistic Regression, RandomForest, ExtraTrees, XGBoost, and LightGBM, with 5-fold cross validation and hyperparameter optimization with Grid-search. Receiver operating characteristic curves, calibration curves, DeLong test, and decision curve analysis were used to evaluate model performance.

Results: The 2.5D DL model performed well in the training (AUC: 0.920), internal validation (AUC: 0.825), and external validation cohorts (AUC: 0.795). The 3D DL model performed well in the training cohort and poorly in the internal and external validation cohorts (AUCs: 0.751, 0.666, and 0.567, respectively), indicating overfitting. The combined model (2.5D DL+clinical) performed well in all cohorts (AUCs: 0.921, 0.835, 0.804). The Hosmer-Lemeshow test, DeLong test, and decision curve analysis confirmed the superiority of the combined model over the other signatures.

Conclusion: The combined model integrating 2.5D DL and clinical features accurately predicts early postoperative HCC recurrence.

利用多视图和多期 CT 图像构建用于预测肝细胞癌术后早期复发的 2.5D 深度学习模型
目的:构建基于2.5维(2.5D)CT放射组学的深度学习(DL)模型,以预测肝细胞癌(HCC)术后早期复发:我们回顾性分析了在两个中心接受肝细胞癌切除术的患者数据。第一中心的 232 名患者被随机分为训练队列(162 名)和内部验证队列(70 名);第二中心的 91 名患者组成了外部验证队列。我们根据具有最大肿瘤横截面的中央二维图像和相邻切片开发了 2.5D DL 模型。该模型包含多个视图(横断面、矢状面和冠状面)和相位(动脉、平扫面和门脉)。对提取的数据采用了多实例学习技术;使用 Logistic Regression、RandomForest、ExtraTrees、XGBoost 和 LightGBM 对由此产生的综合特征集进行建模,并进行了 5 倍交叉验证和网格搜索超参数优化。使用接收器工作特征曲线、校准曲线、DeLong 检验和决策曲线分析来评估模型性能:2.5D DL 模型在训练(AUC:0.920)、内部验证(AUC:0.825)和外部验证队列(AUC:0.795)中表现良好。三维 DL 模型在训练队列中表现良好,但在内部和外部验证队列中表现不佳(AUC 分别为 0.751、0.666 和 0.567),表明存在过度拟合现象。组合模型(2.5D DL+临床)在所有队列中均表现良好(AUC:0.921、0.835、0.804)。Hosmer-Lemeshow检验、DeLong检验和决策曲线分析证实,综合模型优于其他特征:结论:整合 2.5D DL 和临床特征的组合模型可准确预测术后早期 HCC 复发。
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来源期刊
CiteScore
0.50
自引率
2.40%
发文量
108
审稿时长
16 weeks
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