HEAR-MHE 研究:自动语音分析可识别轻微肝性脑病,并可预测未来的明显肝性脑病

IF 12.9 1区 医学 Q1 GASTROENTEROLOGY & HEPATOLOGY Hepatology Pub Date : 2024-09-12 DOI:10.1097/hep.0000000000001086
Patricia P. Bloom, Caitlyn J. Fisher, Nicholas Tedesco, Neil Kamdar, Luis Garrido-Trevino, Jessica Robin, Sumeet K. Asrani, Anna S. Lok
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引用次数: 0

摘要

背景& 目的:肝性脑病(HE)是导致肝硬化患者生活质量低下的主要原因。目前还缺乏一种简单的诊断测试来识别轻微肝性脑病(MHE)并预测未来的明显肝性脑病(OHE)。我们的目的是评估使用现代语音平台进行的语音模式分析是否1)与有效的 HE 测试相关;2)与 MHE 相关;3)预测未来的 OHE。方法与amp; 结果:在一项由两个中心进行的前瞻性队列研究中,200 名肝硬化门诊患者和 50 名对照组患者接受了基线语音记录,并通过心理测量肝功能评分 (PHES) 进行了有效的肝功能诊断测试。对患者进行了为期 6 个月的随访,以确定是否发生了 OHE。使用自动语音分析平台提取了 752 个语音变量,这些变量反映了语音的声学、词汇和语义方面。肝硬化患者的年龄中位数为 63 岁(IQR 54-68),49.5%(99 人)为女性。超过 100 个语音变量与 PHES 有明显相关性(经 FDR 调整,p <0.05 )。三变量语音模型(两个声学变量、一个语音节奏变量)在预测 MHE 方面与动物命名测试相似(AUC 0.76 vs. 0.69; p=0.11)。加入年龄和 MELD-Na 可提高语音模型的准确性(AUC:0.82)。临床与语音相结合的模型("HEAR-MHE 模型")可预测到 OHE 的时间,一致性为 0.74(p=0.06)。结论自动语音分析与有效的 HE 测试高度相关,与 MHE 相关,并可预测未来的 OHE。未来的研究需要对这一工具进行验证,并了解如何将其应用于临床实践。
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HEAR-MHE study: Automated speech analysis identifies minimal hepatic encephalopathy and may predict future overt hepatic encephalopathy
Background & Aims: Hepatic encephalopathy (HE) is a major cause of poor quality of life in patients with cirrhosis. A simple diagnostic test to identify minimal HE (MHE) and predict future overt HE (OHE) is lacking. We aimed to evaluate if analysis of speech patterns using a modern speech platform: 1) correlates with validated HE tests, 2) correlates with MHE, and 3) predicts future OHE. Approach & Results: In a two-center prospective cohort study of 200 outpatients with cirrhosis and 50 controls, patients underwent baseline speech recording and validated HE diagnostic testing with psychometric HE score (PHES). Patients were followed for 6 months to identify episodes of OHE. 752 speech variables were extracted using an automated speech analysis platform, reflecting the acoustic, lexical, and semantic aspects of speech. Patients with cirrhosis were median 63 years old (IQR 54, 68), 49.5% (99) were female. Over 100 speech variables were significantly associated with PHES (p <0.05 with FDR adjustment). A three-variable speech model (two acoustic, one speech tempo variable) was similar to animal naming test in predicting MHE (AUC 0.76 vs. 0.69; p=0.11). Adding age and MELD-Na improved accuracy of the speech model (AUC: 0.82). A combined clinical-speech model (“HEAR-MHE model”) predicted time to OHE with a concordance of 0.74 (p=0.06). Conclusions: Automated speech analysis highly correlated with validated HE tests, associated with MHE, and may predict future OHE. Future research is needed to validate this tool and to understand how it can be implemented in clinical practice.
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来源期刊
Hepatology
Hepatology 医学-胃肠肝病学
CiteScore
27.50
自引率
3.70%
发文量
609
审稿时长
1 months
期刊介绍: HEPATOLOGY is recognized as the leading publication in the field of liver disease. It features original, peer-reviewed articles covering various aspects of liver structure, function, and disease. The journal's distinguished Editorial Board carefully selects the best articles each month, focusing on topics including immunology, chronic hepatitis, viral hepatitis, cirrhosis, genetic and metabolic liver diseases, liver cancer, and drug metabolism.
期刊最新文献
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