Validation of the novel GLAS algorithm as an aid in the detection of liver fibrosis and cirrhosis based on GP73, LG2m, age, and sex.

IF 2.8 3区 医学 Q2 BIOCHEMICAL RESEARCH METHODS
Philip M Hemken, Xuzhen Qin, Lori J Sokoll, Laurel Jackson, Fan Feng, Peng Li, Susan H Gawel, Bailin Tu, Zhihong Lin, James Hartnett, David Hawksworth, Bryan C Tieman, Toru Yoshimura, Hideki Kinukawa, Shaohua Ning, Enfu Liu, Fanju Meng, Fei Chen, Juru Miao, Xuan Mi, Xin Tong, Daniel W Chan, Gerard J Davis
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引用次数: 0

Abstract

Background: Diagnosis of liver disease at earlier stages can improve outcomes and reduce the risk of progression to malignancy. Liver biopsy is the gold standard for diagnosis of liver disease, but is invasive and sample acquisition errors are common. Serum biomarkers for liver function and fibrosis, combined with patient factors, may allow for noninvasive detection of liver disease. In this pilot study, we tested and validated the performance of an algorithm that combines GP73 and LG2m serum biomarkers with age and sex (GLAS) to differentiate between patients with liver disease and healthy individuals in two independent cohorts.

Methods: To develop the algorithm, prototype immunoassays were used to measure GP73 and LG2m in residual serum samples collected between 2003 and 2016 from patients with staged fibrosis and cirrhosis of viral or non-viral etiology (n = 260) and healthy subjects (n = 133). The performance of five predictive models using combinations of age, sex, GP73, and/or LG2m from the development cohort were tested. Residual samples from a separate cohort with liver disease (fibrosis, cirrhosis, or chronic liver disease; n = 395) and healthy subjects (n = 106) were used to validate the best performing model.

Results: GP73 and LG2m concentrations were higher in patients with liver disease than healthy controls and higher in those with cirrhosis than fibrosis in both the development and validation cohorts. The best performing model included both GP73 and LG2m plus age and sex (GLAS algorithm), which had an AUC of 0.92 (95% CI: 0.90-0.95), a sensitivity of 88.8%, and a specificity of 75.9%. In the validation cohort, the GLAS algorithm had an estimated an AUC of 0.93 (95% CI: 0.90-0.95), a sensitivity of 91.1%, and a specificity of 80.2%. In both cohorts, the GLAS algorithm had high predictive probability for distinguishing between patients with liver disease versus healthy controls.

Conclusions: GP73 and LG2m serum biomarkers, when combined with age and sex (GLAS algorithm), showed high sensitivity and specificity for detection of liver disease in two independent cohorts. The GLAS algorithm will need to be validated and refined in larger cohorts and tested in longitudinal studies for differentiating between stable versus advancing liver disease over time.

验证基于GP73、LG2m、年龄和性别的新型GLAS算法在肝纤维化和肝硬化检测中的辅助作用。
背景:早期肝病的诊断可以改善预后并降低进展为恶性肿瘤的风险。肝活检是诊断肝病的金标准,但它是侵入性的,样本采集错误是常见的。肝功能和纤维化的血清生物标志物,结合患者因素,可能允许无创检测肝脏疾病。在这项初步研究中,我们测试并验证了一种算法的性能,该算法将GP73和LG2m血清生物标志物与年龄和性别(GLAS)结合起来,在两个独立的队列中区分肝病患者和健康个体。方法:为了开发算法,使用原型免疫分析法测量2003年至2016年期间收集的病毒或非病毒病因的分期纤维化和肝硬化患者(n = 260)和健康受试者(n = 133)残留血清样本中的GP73和LG2m。使用年龄、性别、GP73和/或来自发展队列的LG2m组合的五个预测模型的性能进行了测试。来自肝脏疾病(纤维化、肝硬化或慢性肝病)的单独队列的剩余样本;N = 395)和健康受试者(N = 106)来验证最佳模型。结果:在开发和验证队列中,肝病患者的GP73和LG2m浓度均高于健康对照组,肝硬化患者的GP73和LG2m浓度均高于纤维化患者。表现最好的模型包括GP73和LG2m加上年龄和性别(GLAS算法),AUC为0.92 (95% CI: 0.90-0.95),敏感性为88.8%,特异性为75.9%。在验证队列中,GLAS算法的估计AUC为0.93 (95% CI: 0.90-0.95),灵敏度为91.1%,特异性为80.2%。在这两个队列中,GLAS算法在区分肝病患者和健康对照者方面具有很高的预测概率。结论:GP73和LG2m血清生物标志物,当与年龄和性别(GLAS算法)联合使用时,在两个独立的队列中显示出较高的肝脏疾病检测敏感性和特异性。GLAS算法需要在更大的队列中进行验证和完善,并在纵向研究中进行测试,以区分稳定型和进展型肝病。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Clinical proteomics
Clinical proteomics BIOCHEMICAL RESEARCH METHODS-
CiteScore
5.80
自引率
2.60%
发文量
37
审稿时长
17 weeks
期刊介绍: Clinical Proteomics encompasses all aspects of translational proteomics. Special emphasis will be placed on the application of proteomic technology to all aspects of clinical research and molecular medicine. The journal is committed to rapid scientific review and timely publication of submitted manuscripts.
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