利用 QResearch® 数据库在英国初级保健人群中开发和验证用于早期发现和诊断原发性肝癌的个性化风险预测模型:研究方案和统计分析计划。

Weiqi Liao, Peter Jepsen, Carol Coupland, Hamish Innes, Philippa C Matthews, Cori Campbell, Eleanor Barnes, Julia Hippisley-Cox
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引用次数: 0

摘要

背景和研究目的:近年来,英国肝癌的发病率和死亡率不断上升。然而,对肝癌的研究仍然不足。肝细胞性肝癌的早期检测(DeLIVER-QResearch)项目旨在填补研究空白,创造新的知识,以改善全科医生和人群对原发性肝癌的早期检测和诊断。该项目有三个研究目标:(1) 了解英格兰原发性肝癌的流行病学现状;(2) 识别并量化与肝癌相关的症状和合并症;(3) 开发并验证适合在临床环境中实施的肝癌早期检测预测模型:这项基于人群的研究使用 QResearch® 数据库(第 46 版),研究对象包括年龄在 25-84 岁之间、在加入队列时未确诊为肝癌的成年患者(研究期间:2008 年 1 月 1 日至 2021 年 6 月 30 日)。研究小组进行了文献综述(包括额外的临床输入),为从 QResearch 数据库中提取数据纳入变量提供依据。我们将针对三个研究目标采用多种统计技术,包括描述性统计、缺失数据多重估算、条件逻辑回归以研究临床特征(症状和合并症)与结果之间的关联、分数多项式项以探索连续变量与结果之间的非线性关系,以及用于预测模型的 Cox/竞争风险回归。我们特别关注罹患肝癌的 1 年、5 年和 10 年绝对风险,因为不同时间点的风险具有不同的临床意义。我们将采用内部-外部交叉验证方法,对预测模型的区分度和校准进行评估:DeLIVER-QResearch项目利用大规模代表性人群数据来解决英格兰原发性肝癌早期检测和诊断方面最相关的研究问题。该项目极有可能为国家癌症战略计划提供信息,并产生巨大的公共和社会效益。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Development and validation of personalised risk prediction models for early detection and diagnosis of primary liver cancer among the English primary care population using the QResearch® database: research protocol and statistical analysis plan.

Development and validation of personalised risk prediction models for early detection and diagnosis of primary liver cancer among the English primary care population using the QResearch® database: research protocol and statistical analysis plan.

Background and research aim: The incidence and mortality of liver cancer have been increasing in the UK in recent years. However, liver cancer is still under-studied. The Early Detection of Hepatocellular Liver Cancer (DeLIVER-QResearch) project aims to address the research gap and generate new knowledge to improve early detection and diagnosis of primary liver cancer from general practice and at the population level. There are three research objectives: (1) to understand the current epidemiology of primary liver cancer in England, (2) to identify and quantify the symptoms and comorbidities associated with liver cancer, and (3) to develop and validate prediction models for early detection of liver cancer suitable for implementation in clinical settings.

Methods: This population-based study uses the QResearch® database (version 46) and includes adult patients aged 25-84 years old and without a diagnosis of liver cancer at the cohort entry (study period: 1 January 2008-30 June 2021). The team conducted a literature review (with additional clinical input) to inform the inclusion of variables for data extraction from the QResearch database. A wide range of statistical techniques will be used for the three research objectives, including descriptive statistics, multiple imputation for missing data, conditional logistic regression to investigate the association between the clinical features (symptoms and comorbidities) and the outcome, fractional polynomial terms to explore the non-linear relationship between continuous variables and the outcome, and Cox/competing risk regression for the prediction model. We have a specific focus on the 1-year, 5-year, and 10-year absolute risks of developing liver cancer, as risks at different time points have different clinical implications. The internal-external cross-validation approach will be used, and the discrimination and calibration of the prediction model will be evaluated.

Discussion: The DeLIVER-QResearch project uses large-scale representative population-based data to address the most relevant research questions for early detection and diagnosis of primary liver cancer in England. This project has great potential to inform the national cancer strategic plan and yield substantial public and societal benefits.

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