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索拉非尼治疗肝细胞癌患者的生存预测改善和预后模型比较。

Improved survival prediction and comparison of prognostic models for patients with hepatocellular carcinoma treated with sorafenib.

机构信息

Cancer Center Amsterdam, Amsterdam, The Netherlands.

Department of Medical Oncology, Amsterdam University Medical Centers, University of Amsterdam, Amsterdam, The Netherlands.

出版信息

Liver Int. 2020 Jan;40(1):215-228. doi: 10.1111/liv.14270. Epub 2019 Nov 18.

Abstract

BACKGROUND

The 'Prediction Of Survival in Advanced Sorafenib-treated HCC' (PROSASH) model addressed the heterogeneous survival of patients with hepatocellular carcinoma (HCC) treated with sorafenib in clinical trials but requires validation in daily clinical practice. This study aimed to validate, compare and optimize this model for survival prediction.

METHODS

Patients treated with sorafenib for HCC at five tertiary European centres were retrospectively staged according to the PROSASH model. In addition, the optimized PROSASH-II model was developed using the data of four centres (training set) and tested in an independent dataset. These models for overall survival (OS) were then compared with existing prognostic models.

RESULTS

The PROSASH model was validated in 445 patients, showing clear differences between the four risk groups (OS 16.9-4.6 months). A total of 920 patients (n = 615 in training set, n = 305 in validation set) were available to develop PROSASH-II. This optimized model incorporated fewer and less subjective parameters: the serum albumin, bilirubin and alpha-foetoprotein, and macrovascular invasion, extrahepatic spread and largest tumour size on imaging. Both PROSASH and PROSASH-II showed improved discrimination (C-index 0.62 and 0.63, respectively) compared with existing prognostic scores (C-index ≤0.59).

CONCLUSIONS

In HCC patients treated with sorafenib, individualized prediction of survival and risk group stratification using baseline prognostic and predictive parameters with the PROSASH model was validated. The refined PROSASH-II model performed at least as good with fewer and more objective parameters. PROSASH-II can be used as a tool for tailored treatment of HCC in daily practice and to define pre-planned subgroups for future studies.

摘要

背景

“索拉非尼治疗晚期肝细胞癌患者生存预测”(PROSASH)模型解决了临床试验中接受索拉非尼治疗的肝细胞癌(HCC)患者生存存在异质性的问题,但需要在日常临床实践中验证。本研究旨在验证、比较和优化该模型以进行生存预测。

方法

回顾性地根据 PROSASH 模型对五家欧洲三级中心接受索拉非尼治疗的 HCC 患者进行分期。此外,使用四个中心(训练集)的数据开发了优化的 PROSASH-II 模型,并在独立数据集进行了测试。然后将这些用于总体生存(OS)的模型与现有的预后模型进行比较。

结果

PROSASH 模型在 445 例患者中得到验证,四个风险组之间存在明显差异(OS 16.9-4.6 个月)。共有 920 例患者(训练集中 n=615,验证集中 n=305)可用于开发 PROSASH-II。该优化模型纳入了更少且更客观的参数:血清白蛋白、胆红素和甲胎蛋白,以及影像学上的大血管侵犯、肝外扩散和最大肿瘤大小。与现有预后评分(C 指数≤0.59)相比,PROSASH 和 PROSASH-II 均显示出更好的区分度(C 指数分别为 0.62 和 0.63)。

结论

在接受索拉非尼治疗的 HCC 患者中,使用 PROSASH 模型基于基线预后和预测参数进行个体化生存预测和风险分层得到了验证。经过精炼的 PROSASH-II 模型使用更少且更客观的参数进行预测,效果至少一样好。PROSASH-II 可作为日常实践中为 HCC 患者制定个体化治疗方案和为未来研究定义预先计划亚组的工具。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/078c/6973249/5505cfdc132a/LIV-40-215-g001.jpg

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