Incorporation of quantitative imaging data using artificial intelligence improves risk prediction in veterans with liver disease.

IF 12.9 1区 医学 Q1 GASTROENTEROLOGY & HEPATOLOGY
Hepatology Pub Date : 2024-10-01 Epub Date: 2023-12-29 DOI:10.1097/HEP.0000000000000750
Grace L Su, Peng Zhang, Patrick X Belancourt, Bradley Youles, Binu Enchakalody, Ponni Perumalswami, Akbar Waljee, Sameer Saini
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引用次数: 0

Abstract

Background and aims: Utilization of electronic health records data to derive predictive indexes such as the electronic Child-Turcotte-Pugh (eCTP) Score can have significant utility in health care delivery. Within the records, CT scans contain phenotypic data which have significant prognostic value. However, data extractions have not traditionally been applied to imaging data. In this study, we used artificial intelligence to automate biomarker extraction from CT scans and examined the value of these features in improving risk prediction in patients with liver disease.

Approach and results: Using a regional liver disease cohort from the Veterans Health System, we retrieved administrative, laboratory, and clinical data for Veterans who had CT scans performed for any clinical indication between 2008 and 2014. Imaging biomarkers were automatically derived using the analytic morphomics platform. In all, 4614 patients were included. We found that the eCTP Score had a Concordance index of 0.64 for the prediction of overall mortality while the imaging-based model alone or with eCTP Score performed significantly better [Concordance index of 0.72 and 0.73 ( p <0.001)]. For the subset of patients without hepatic decompensation at baseline (n=4452), the Concordance index for predicting future decompensation was 0.67, 0.79, and 0.80 for eCTP Score, imaging alone, or combined, respectively.

Conclusions: This proof of concept demonstrates that the potential of utilizing automated extraction of imaging features within CT scans either alone or in conjunction with classic health data can improve risk prediction in patients with chronic liver disease.

利用人工智能纳入定量成像数据可提高退伍军人肝病的风险预测能力。
背景和目的:利用电子健康记录数据得出预测性指标,如电子儿童 Turcotte Pugh 评分,可在医疗保健服务中发挥重要作用。在记录中,CT 扫描包含表型数据,具有重要的预后价值。然而,数据提取传统上并不适用于成像数据。在这项研究中,我们利用人工智能从 CT 扫描中自动提取生物标志物,并研究了这些特征在改善肝病患者风险预测方面的价值:我们利用退伍军人健康系统的区域肝病队列,检索了 2008 年至 2014 年期间因任何临床适应症而进行 CT 扫描的退伍军人的管理、实验室和临床数据。利用形态组学分析平台自动得出了成像生物标记物:结果:共纳入 4614 名患者。我们发现,电子儿童 Turcotte Pugh 评分在预测总死亡率方面的一致性指数为 0.64,而基于成像的模型单独或与电子儿童 Turcotte Pugh 评分的一致性指数分别为 0.72 和 0.73(p 结论:这一概念验证证明了基于成像的模型在预测总死亡率方面的潜力:这一概念验证表明,利用 CT 扫描中的影像特征自动提取功能,无论是单独使用还是与传统健康数据结合使用,都能提高慢性肝病患者的风险预测能力。
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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.
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