Division of Hepatobiliary and Pancreas Surgery, Department of General Surgery, The First Affiliated Hospital of Nanchang University (The First Clinical Medical College of Nanchang University), Nanchang City, Jiangxi Province, China.
Department of Hepatobiliary Surgery, Zhongshan People's Hospital (Zhongshan Hospital Affiliated to Sun Yat-sen University), Zhongshan City, Guangdong Province, China.
J Natl Compr Canc Netw. 2023 Dec 20;22(1D):e237069. doi: 10.6004/jnccn.2023.7069.
Early relapse after hepatectomy presents a significant challenge in the treatment of hepatocellular carcinoma (HCC). The aim of this study was to construct and validate a novel nomogram model for predicting early relapse and survival after hepatectomy for HCC.
We conducted a large-scale, multicenter retrospective analysis of 1,505 patients with surgically treated HCC from 4 medical centers. All patients were randomly divided into either the training cohort (n=1,053) or the validation cohort (n=452) in a 7:3 ratio. A machine learning-based nomogram model for prediction of HCC was established by integrating multiple risk factors that influence early relapse and survival, which were identified from preoperative clinical data and postoperative pathologic characteristics of the patients.
The median time to early relapse was 7 months, whereas the median time from early relapse to death was only 19 months. The concordance indexes of the postoperative nomogram for predicting disease-free survival and overall survival were 0.741 and 0.739, respectively, with well-calibrated curves demonstrating good consistency between predicted and observed outcomes. Moreover, the accuracy and predictive performance of the postoperative nomograms were significantly superior to those of the preoperative nomogram and the other 7 HCC staging systems. The patients in the intermediate- and high-risk groups of the model had significantly higher probabilities of early and critical recurrence (P<.001), whereas those in the low-risk group had higher probabilities of late and local recurrence (P<.001).
This postoperative nomogram model can better predict early recurrence and survival and can serve as a useful tool to guide clinical treatment decisions for patients with HCC.
肝癌(HCC)患者行肝切除术后早期复发是治疗中的一大挑战。本研究旨在构建并验证一种新的列线图模型,用于预测 HCC 患者行肝切除术后的早期复发和生存情况。
我们对 4 家医疗中心的 1505 例接受手术治疗的 HCC 患者进行了大规模、多中心回顾性分析。所有患者按照 7:3 的比例随机分为训练队列(n=1053)和验证队列(n=452)。通过整合术前临床数据和患者术后病理特征中影响早期复发和生存的多个风险因素,建立了一种基于机器学习的预测 HCC 的列线图模型。
早期复发的中位时间为 7 个月,而从早期复发到死亡的中位时间仅为 19 个月。预测无病生存和总生存的术后列线图的一致性指数分别为 0.741 和 0.739,校准曲线表明预测结果与实际结果具有良好的一致性。此外,术后列线图的准确性和预测性能明显优于术前列线图和其他 7 种 HCC 分期系统。模型中中高危组患者早期和关键复发的概率明显更高(P<.001),而低危组患者晚期和局部复发的概率更高(P<.001)。
该术后列线图模型能够更好地预测早期复发和生存情况,可作为指导 HCC 患者临床治疗决策的有用工具。