Wang Xiao, Zhu Ming-Xiang, Wang Jun-Feng, Liu Pan, Zhang Li-Yuan, Zhou You, Lin Xi-Xiang, Du Ying-Dong, He Kun-Lun
Department of Hepatobiliary Surgery, Chinese PLA 970 Hospital, Yantai 264001, Shandong Province, China.
Medical Big Data Research Center, Chinese PLA General Hospital, Beijing 100853, China.
World J Hepatol. 2025 Apr 27;17(4):103330. doi: 10.4254/wjh.v17.i4.103330.
Partial hepatectomy continues to be the primary treatment approach for liver tumors, and post-hepatectomy liver failure (PHLF) remains the most critical life-threatening complication following surgery.
To comprehensively review the PHLF prognostic models developed in recent years and objectively assess the risk of bias in these models.
This review followed the Checklist for Critical Appraisal and Data Extraction for Systematic Reviews of Prediction Modelling Studies and the Preferred Reporting Items for Systematic Reviews and Meta-Analyses guideline. Three databases were searched from November 2019 to December 2022, and references as well as cited literature in all included studies were manually screened in March 2023. Based on the defined inclusion criteria, articles on PHLF prognostic models were selected, and data from all included articles were extracted by two independent reviewers. The PROBAST was used to evaluate the quality of each included article.
A total of thirty-four studies met the eligibility criteria and were included in the analysis. Nearly all of the models (32/34, 94.1%) were developed and validated exclusively using private data sources. Predictive variables were categorized into five distinct types, with the majority of studies (32/34, 94.1%) utilizing multiple types of data. The area under the curve for the training models included ranged from 0.697 to 0.956. Analytical issues resulted in a high risk of bias across all studies included.
The validation performance of the existing models was substantially lower compared to the development models. All included studies were evaluated as having a high risk of bias, primarily due to issues within the analytical domain. The progression of modeling technology, particularly in artificial intelligence modeling, necessitates the use of suitable quality assessment tools.
肝部分切除术仍然是肝肿瘤的主要治疗方法,肝切除术后肝衰竭(PHLF)仍然是手术后最严重的危及生命的并发症。
全面回顾近年来开发的PHLF预后模型,并客观评估这些模型的偏倚风险。
本综述遵循预测模型研究系统评价的关键评估和数据提取清单以及系统评价和Meta分析的首选报告项目指南。2019年11月至2022年12月检索了三个数据库,并于2023年3月人工筛选了所有纳入研究中的参考文献以及引用文献。根据定义的纳入标准,选择关于PHLF预后模型的文章,并由两名独立审稿人提取所有纳入文章的数据。使用PROBAST评估每篇纳入文章的质量。
共有34项研究符合纳入标准并纳入分析。几乎所有模型(32/34,94.1%)仅使用私人数据源进行开发和验证。预测变量分为五种不同类型,大多数研究(32/34,94.1%)使用多种类型的数据。纳入的训练模型的曲线下面积范围为0.697至0.956。分析问题导致所有纳入研究都存在较高的偏倚风险。
与开发模型相比,现有模型的验证性能显著较低。所有纳入研究均被评估为具有较高的偏倚风险,主要是由于分析领域内的问题。建模技术的进步,特别是人工智能建模,需要使用合适的质量评估工具。