早期代谢功能障碍相关脂肪变性肝病的发展轨迹和预后预测:一项叙述性综述

IF 10 1区 医学 Q1 MEDICINE, GENERAL & INTERNAL
EClinicalMedicine Pub Date : 2026-04-24 eCollection Date: 2026-05-01 DOI:10.1016/j.eclinm.2026.103921
Brittany Bromfield, Jeremy Chimene-Weiss, Gregory Gheewalla, Theodore Feldman, Emilie K Mitten, Piero Portincasa, Gyorgy Baffy
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引用次数: 0

摘要

代谢功能障碍相关脂肪变性肝病(MASLD)是最常见的慢性肝脏疾病,其表现包括脂肪变性、脂肪性肝炎、晚期纤维化、肝硬化和肝细胞癌。在所有阶段,MASLD还与心血管疾病、2型糖尿病和肝外恶性肿瘤的风险增加有关。及时和准确地预测疾病的发病、进展和并发症仍然是一个未满足的需求。虽然肝纤维化是肝脏相关和全因死亡率的一个强有力的预测指标,但它反映的是相对晚期的疾病。越来越多的证据表明,脂肪变性可能标志着疾病轨迹的早期分化。因此,有效的MASLD预测需要早期风险评估和纵向评估。新兴方法将遗传风险与常规临床、行为和社会数据相结合,使机器学习方法能够更好地识别MASLD亚型并预测个体疾病病程。然而,成本和后勤方面的障碍限制了这种方法的广泛采用,而且需要进一步的研究来确定早期预测是否能够改善长期结果和医疗保健价值。
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 trajectories and outcomes in early-stage metabolic dysfunction-associated steatotic liver disease: a narrative review.

Metabolic dysfunction-associated steatotic liver disease (MASLD) is the most prevalent chronic liver disorder, with manifestations ranging from steatosis to steatohepatitis, advanced fibrosis, cirrhosis, and hepatocellular carcinoma. At all stages, MASLD is also associated with increased risks of cardiovascular disease, type 2 diabetes, and extrahepatic malignancies. Timely and accurate prediction of disease onset, progression, and complications remains an unmet need. Although hepatic fibrosis is a strong predictor of liver-related and all-cause mortality, it reflects relatively advanced disease. Growing evidence suggests that steatosis may mark early divergence of disease trajectories. Effective MASLD forecasting therefore requires early risk assessment and longitudinal evaluation. Emerging approaches combine genetic risk with routine clinical, behavioural, and social data, allowing machine learning methods to better identify MASLD subtypes and predict individual disease courses. However, cost and logistical barriers limit widespread adoption, and further research is needed to determine whether early forecasting can improve long-term outcomes and healthcare value.

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来源期刊
EClinicalMedicine
EClinicalMedicine Medicine-Medicine (all)
CiteScore
18.90
自引率
1.30%
发文量
506
审稿时长
22 days
期刊介绍: eClinicalMedicine is a gold open-access clinical journal designed to support frontline health professionals in addressing the complex and rapid health transitions affecting societies globally. The journal aims to assist practitioners in overcoming healthcare challenges across diverse communities, spanning diagnosis, treatment, prevention, and health promotion. Integrating disciplines from various specialties and life stages, it seeks to enhance health systems as fundamental institutions within societies. With a forward-thinking approach, eClinicalMedicine aims to redefine the future of healthcare.
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