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机器学习算法有助于预测巴塞罗那临床肝癌分期 C 期肝细胞癌的预后和治疗选择。

A Machine Learning Algorithm Facilitates Prognosis Prediction and Treatment Selection for Barcelona Clinic Liver Cancer Stage C Hepatocellular Carcinoma.

机构信息

The Catholic University Liver Research Center, College of Medicine, The Catholic University of Korea, Seoul, Republic of Korea.

Division of Gastroenterology and Hepatology, Department of Internal Medicine, Seoul St. Mary's Hospital, College of Medicine, The Catholic University of Korea, Seoul, Republic of Korea.

出版信息

Clin Cancer Res. 2024 Jul 1;30(13):2812-2821. doi: 10.1158/1078-0432.CCR-23-3978.

Abstract

PURPOSE

Given its heterogeneity and diverse clinical outcomes, precise subclassification of Barcelona Clinic Liver Cancer stage C (BCLC-C) hepatocellular carcinoma (HCC) is required for appropriately determining patient prognosis and selecting treatment.

EXPERIMENTAL DESIGN

We recruited 2,626 patients with BCLC-C HCC from multiple centers, comprising training/test (n = 1,693) and validation cohorts (n = 933). The XGBoost model was chosen for maximum performance among the machine learning (ML) models. Patients were categorized into low-, intermediate-, high-, and very high-risk subgroups based on the estimated prognosis, and this subclassification was named the CLAssification via Machine learning of BCLC-C (CLAM-C).

RESULTS

The areas under the receiver operating characteristic curve of the CLAM-C for predicting the 6-, 12-, and 24-month survival of patients with BCLC-C were 0.800, 0.831, and 0.715, respectively-significantly higher than those of the conventional models, which were consistent in the validation cohort. The four subgroups had significantly different median overall survivals, and this difference was maintained among various patient subgroups and treatment modalities. Immune-checkpoint inhibitors and transarterial therapies were associated with significantly better survival than tyrosine kinase inhibitors (TKI) in the low- and intermediate-risk subgroups. In cases with first-line systemic therapy, the CLAM-C identified atezolizumab-bevacizumab as the best therapy, particularly in the high-risk group. In cases with later-line systemic therapy, nivolumab had better survival than TKIs in the low-to-intermediate-risk subgroup, whereas TKIs had better survival in the high- to very high-risk subgroup.

CONCLUSIONS

ML modeling effectively subclassified patients with BCLC-C HCC, potentially aiding treatment allocation. Our study underscores the potential utilization of ML modeling in terms of prognostication and treatment allocation in patients with BCLC-C HCC.

摘要

目的

巴塞罗那临床肝癌分期 C(BCLC-C)肝癌具有异质性和多样化的临床结局,因此需要进行精确的亚分类,以准确预测患者预后并选择治疗方案。

实验设计

我们从多个中心招募了 2626 名 BCLC-C 肝癌患者,包括训练/测试(n=1693)和验证队列(n=933)。在机器学习(ML)模型中,我们选择 XGBoost 模型以获得最佳性能。根据估计的预后,患者被分为低危、中危、高危和极高危亚组,这种分类方法命名为通过机器学习对 BCLC-C 进行分类(CLAM-C)。

结果

CLAM-C 预测 BCLC-C 患者 6、12 和 24 个月生存率的受试者工作特征曲线下面积分别为 0.800、0.831 和 0.715,显著高于传统模型,在验证队列中结果一致。四个亚组的中位总生存期有显著差异,且在各种患者亚组和治疗方式中均保持一致。低危和中危亚组中免疫检查点抑制剂和经动脉治疗与酪氨酸激酶抑制剂(TKI)相比,生存获益显著。在一线全身治疗中,CLAM-C 确定阿替利珠单抗联合贝伐珠单抗为最佳治疗方案,尤其是在高危组。在二线全身治疗中,纳武利尤单抗在低危到中危亚组中的生存获益优于 TKI,而 TKI 在高危到极高危亚组中的生存获益优于纳武利尤单抗。

结论

ML 模型可有效对 BCLC-C 肝癌患者进行亚分类,可能有助于治疗分配。我们的研究强调了 ML 模型在预测和治疗 BCLC-C 肝癌患者方面的潜在应用。

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