Mu Tingting, Zheng Xinde, Song Danjun, Chen Jiejun, Yue Xuewang, Wang Wentao, Rao Shengxiang
Department of Radiology, Zhongshan Hospital, Fudan University, China.
Department of Medical Imaging, Dongying People's Hospital, Dongying, China.
Eur J Radiol Open. 2024 Nov 15;13:100610. doi: 10.1016/j.ejro.2024.100610. eCollection 2024 Dec.
To evaluate the effectiveness of a constructed deep learning model in predicting early recurrence after surgery in hepatocellular carcinoma (HCC) patients with solitary tumors ≤5 cm.
Our study included a total of 331 HCC patients who underwent curative resection, with all patients having preoperative dynamic contrast-enhanced MRI (DCE-MRI). Patients who recurred within two years after surgery were defined as early recurrence. The enrolled patients were randomly divided into the training group and the testing group. A ResNet-based deep learning model with eight conventional neural network branches was built to predict the early recurrence status of these patients. Patient characteristics and laboratory tests were further filtered by regression models and then integrated with deep learning models to improve the prediction performance.
Among 331 HCC patients, 70 (21.1 %) experienced early recurrence. In multivariate Cox regression analysis, only tumor size (Hazard ratio (HR=1.394, 95 %CI:1.011-1.920, p value=0.043) and deep learning extracted image features (HR: 38440, 95 %CI:2321-636600, p value<0.001) were significant risk factors for early recurrence. In the training and testing cohort, the AUCs of the image-based deep learning prediction model were 0.839 and 0.833. By integrating tumor size with image-based deep learning model to construct a combined model, we found that the AUCs of the combined model to assess early recurrence in the training and validation cohort were 0.846 and 0.842. We further developed a nomogram to visualize the preoperative combined model, and the prediction performance of nomogram showed a good fitness in the testing cohort.
The proposed deep learning-based prediction model using DCE-MRI is useful for assessing early recurrence in HCC patients with single tumors ≤5 cm.
评估构建的深度学习模型在预测直径≤5 cm的孤立性肿瘤肝细胞癌(HCC)患者术后早期复发方面的有效性。
我们的研究共纳入331例行根治性切除术的HCC患者,所有患者术前行动态对比增强磁共振成像(DCE-MRI)检查。将术后两年内复发的患者定义为早期复发。将纳入的患者随机分为训练组和测试组。构建了一个具有八个传统神经网络分支的基于ResNet的深度学习模型,以预测这些患者的早期复发状态。通过回归模型进一步筛选患者特征和实验室检查结果,然后将其与深度学习模型相结合,以提高预测性能。
在331例HCC患者中,70例(21.1%)出现早期复发。多因素Cox回归分析显示,仅肿瘤大小(风险比(HR)=1.394,95%置信区间:1.011-1.920,p值=0.043)和深度学习提取的图像特征(HR:38440,95%置信区间:2321-636600,p值<0.001)是早期复发的显著危险因素。在训练组和测试组中,基于图像的深度学习预测模型的曲线下面积(AUC)分别为0.839和0.833。通过将肿瘤大小与基于图像的深度学习模型相结合构建联合模型,我们发现训练组和验证组中评估早期复发的联合模型的AUC分别为0.846和0.842。我们进一步开发了列线图以直观显示术前联合模型,列线图在测试组中的预测性能显示出良好的拟合度。
所提出的基于深度学习的DCE-MRI预测模型可用于评估直径≤5 cm的单发肿瘤HCC患者的早期复发。