Suppr超能文献

用于预测失代偿和肝脏预后的人工智能-肝硬化-心电图(ACE)评分

AI-Cirrhosis-ECG (ACE) score for predicting decompensation and liver outcomes.

作者信息

Ahn Joseph C, Rattan Puru, Starlinger Patrick, Juanola Adrià, Moreta Maria José, Colmenero Jordi, Aqel Bashar, Keaveny Andrew P, Mullan Aidan F, Liu Kan, Attia Zachi I, Allen Alina M, Friedman Paul A, Shah Vijay H, Noseworthy Peter A, Heimbach Julie K, Kamath Patrick S, Gines Pere, Simonetto Douglas A

机构信息

Department of Medicine, Division of Gastroenterology and Hepatology, Mayo Clinic, Rochester, MA, USA.

Department of Surgery, Division of Hepatobiliary and Pancreas Surgery, Mayo Clinic, Rochester, MA, USA.

出版信息

JHEP Rep. 2025 Feb 19;7(5):101356. doi: 10.1016/j.jhepr.2025.101356. eCollection 2025 May.

Abstract

BACKGROUND & AIMS: Accurate prediction of disease severity and prognosis are challenging in patients with cirrhosis. We evaluated whether the deep learning-based AI-Cirrhosis-ECG (ACE) score could detect hepatic decompensation and predict clinical outcomes in cirrhosis.

METHODS

We analyzed 2,166 ECGs from 472 patients in a retrospective Mayo Clinic cohort, 420 patients in a prospective Mayo transplant cohort, and 341 patients in an external validation cohort from Hospital Clínic de Barcelona. The ACE score's performance was assessed using receiver-operating characteristic analysis for decompensation detection and competing risks Cox regression for outcome prediction.

RESULTS

The ACE score showed high accuracy in detecting hepatic decompensation (area under the curve 0.933, 95% CI: 0.923-0.942) with 88.0% sensitivity and 84.3% specificity at an optimal threshold of 0.25. In multivariable analysis, each 0.1-point increase in ACE score was independently associated with increased risk of liver-related death (hazard ratio [HR] 1.44, 95% CI 1.32-1.58, <0.001). Adding ACE to model for end-stage liver disease-sodium significantly improved prediction of adverse outcomes across all cohorts (c-statistics: retrospective cohort 0.903 0.844; prospective cohort 0.779 0.735; external validation 0.744 0.732; all <0.001).

CONCLUSIONS

The ACE score accurately identifies hepatic decompensation and independently predicts liver-related outcomes in cirrhosis. This non-invasive tool enhances current prognostic models and may improve risk stratification in cirrhosis management.

IMPACT AND IMPLICATIONS

This study demonstrates the potential of artificial intelligence to enhance prognostication in liver disease, addressing the critical need for improved risk stratification in cirrhosis management. The AI-Cirrhosis-ECG (ACE) score, derived from widely available ECGs, shows promise as a non-invasive tool for detecting hepatic decompensation and predicting liver-related outcomes, which could significantly impact clinical decision-making and resource allocation in hepatology. These findings are particularly important for hepatologists, transplant surgeons, and patients with cirrhosis, as they offer a novel approach to complement existing prognostic models such as model for end-stage liver disease-sodium. In practical terms, the ACE score could be integrated into routine clinical assessments to provide more accurate risk predictions, potentially improving the timing of interventions, optimizing transplant listing decisions, and ultimately enhancing patient outcomes. However, further validation in diverse populations and integration with other established predictors is necessary before widespread clinical implementation.

摘要

背景与目的

准确预测肝硬化患者的疾病严重程度和预后具有挑战性。我们评估了基于深度学习的人工智能肝硬化心电图(ACE)评分能否检测肝失代偿并预测肝硬化的临床结局。

方法

我们分析了梅奥诊所回顾性队列中472例患者的2166份心电图、梅奥移植前瞻性队列中420例患者的心电图以及巴塞罗那临床医院外部验证队列中341例患者的心电图。使用受试者操作特征分析评估ACE评分在检测失代偿方面的表现,使用竞争风险Cox回归评估其在结局预测方面的表现。

结果

ACE评分在检测肝失代偿方面显示出高准确性(曲线下面积为0.933,95%可信区间:0.923 - 0.942),在最佳阈值0.25时,敏感性为88.0%,特异性为84.3%。在多变量分析中,ACE评分每增加0.1分与肝相关死亡风险增加独立相关(风险比[HR] 1.44,95%可信区间1.32 - 1.58,<0.001)。将ACE纳入终末期肝病 - 钠模型可显著改善所有队列中不良结局的预测(c统计量:回顾性队列0.903对0.844;前瞻性队列0.779对0.735;外部验证队列0.744对0.732;所有P <0.001)。

结论

ACE评分能准确识别肝失代偿并独立预测肝硬化患者的肝相关结局。这种非侵入性工具增强了当前的预后模型,可能改善肝硬化管理中的风险分层。

影响与意义

本研究证明了人工智能在改善肝病预后方面的潜力,满足了肝硬化管理中改善风险分层的迫切需求。源自广泛可用心电图的人工智能肝硬化心电图(ACE)评分有望成为检测肝失代偿和预测肝相关结局的非侵入性工具,这可能对肝病学中的临床决策和资源分配产生重大影响。这些发现对肝病学家、移植外科医生和肝硬化患者尤为重要,因为它们提供了一种新方法来补充现有的预后模型,如终末期肝病 - 钠模型。实际上,ACE评分可纳入常规临床评估以提供更准确的风险预测,可能改善干预时机、优化移植名单决策并最终改善患者结局。然而,在广泛临床应用之前,需要在不同人群中进行进一步验证并与其他既定预测指标整合。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/621a/12018547/af16e292811a/ga1.jpg

文献检索

告别复杂PubMed语法,用中文像聊天一样搜索,搜遍4000万医学文献。AI智能推荐,让科研检索更轻松。

立即免费搜索

文件翻译

保留排版,准确专业,支持PDF/Word/PPT等文件格式,支持 12+语言互译。

免费翻译文档

深度研究

AI帮你快速写综述,25分钟生成高质量综述,智能提取关键信息,辅助科研写作。

立即免费体验