使用预后模型预测人群中主要肝脏相关事件。

IF 3.8 3区 医学 Q2 GASTROENTEROLOGY & HEPATOLOGY
Gastroenterology Report Pub Date : 2025-03-14 eCollection Date: 2025-01-01 DOI:10.1093/gastro/goaf028
Fredrik Åberg, Ville Männistö
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引用次数: 0

摘要

肝脏疾病是一个重大的全球健康负担,与代谢功能障碍和/或饮酒相关的脂肪变性肝脏疾病是最普遍的类型。目前的风险分层策略强调检测晚期纤维化作为肝脏相关事件(LREs)的替代标志物,如住院、肝癌或死亡。然而,纤维化本身并不能充分预测即将发生的结果,特别是在评估时没有晚期纤维化的快速进展个体中。这强调需要专门设计模型来预测lre,以便及时采取干预措施。慢性肝病(CLivD)风险评分、动态天冬氨酸转氨酶与丙氨酸转氨酶比值(dAAR)和肝硬化结局风险评估器(CORE)被明确用于预测LRE风险,而不是检测纤维化。这些模型来源于普通人群队列,纳入了标准肝酶(dAAR和CORE)或危险因素(CLivD),能够在初级保健和基于人群的环境中广泛应用。他们直接估计了未来LREs的风险,改进了传统的以纤维化为中心的方法。相反,广泛使用的模型,如纤维化-4指数和较新的模型,如LiverRisk和LiverPRO评分,最初是为了检测显著/晚期纤维化或肝脏僵硬而开发的。虽然不是为LRE预测而设计的,但后来对此进行了分析。将纤维化筛查与以lre为重点的模型(如CLivD、dAAR和CORE)相结合,可以帮助医疗保健系统采取主动的预防性护理。这种方法强调识别面临严重后果风险的个体,可能确保更好的资源分配和个性化干预。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prediction of major liver-related events in the population using prognostic models.

Liver disease poses a significant global health burden, with steatotic liver disease related to metabolic dysfunction and/or alcohol use being the most prevalent type. Current risk stratification strategies emphasize detecting advanced fibrosis as a surrogate marker for liver-related events (LREs), such as hospitalization, liver cancer, or death. However, fibrosis alone does not adequately predict imminent outcomes, particularly in fast-progressing individuals without advanced fibrosis at evaluation. This underscores the need for models designed specifically to predict LREs, enabling timely interventions. The Chronic Liver Disease (CLivD) risk score, the dynamic aspartate aminotransferase-to-alanine aminotransferase ratio (dAAR), and the Cirrhosis Outcome Risk Estimator (CORE) were explicitly developed to predict LRE risk rather than detect fibrosis. Derived from general population cohorts, these models incorporate either standard liver enzymes (dAAR and CORE) or risk factors (CLivD), enabling broad application in primary care and population-based settings. They directly estimate the risk of future LREs, improving on traditional fibrosis-focused approaches. Conversely, widely used models like the Fibrosis-4 index and newer ones, such as the LiverRisk and LiverPRO scores, were initially developed to detect significant/advanced fibrosis or liver stiffness. While not designed for LRE prediction, they have later been analyzed for this purpose. Integrating fibrosis screening with LRE-focused models like CLivD, dAAR, and CORE can help healthcare systems adopt proactive, preventive care. This approach emphasizes identifying individuals at imminent risk of severe outcomes, potentially ensuring better resource allocation and personalized interventions.

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来源期刊
Gastroenterology Report
Gastroenterology Report Medicine-Gastroenterology
CiteScore
4.60
自引率
2.80%
发文量
63
审稿时长
8 weeks
期刊介绍: Gastroenterology Report is an international fully open access (OA) online only journal, covering all areas related to gastrointestinal sciences, including studies of the alimentary tract, liver, biliary, pancreas, enteral nutrition and related fields. The journal aims to publish high quality research articles on both basic and clinical gastroenterology, authoritative reviews that bring together new advances in the field, as well as commentaries and highlight pieces that provide expert analysis of topical issues.
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