Validation of the Novel GLAS Algorithm for Early Detection of Liver Fibrosis and Cirrhosis Based on GP73, LG2m, Age, and Sex
Author:
Hemken Philip M.1, Qin Xuzhen2, Sokoll Lori J.3, Jackson Laurel1, Feng Fan1, Li Peng2, Gawel Susan H.1, Tu Bailin1, Lin Zhihong1, Hartnett James1, Hawksworth David1, Tieman Bryan C.1, Yoshimura Toru4, Kinukawa Hideki4, Ning Shaohua1, Liu Enfu1, Meng Fanju1, Chen Fei1, Miao Juru1, Mi Xuan1, Tong Xin1, Chan Daniel W.3, Davis Gerard J.1
Affiliation:
1. Abbott Diagnostics 2. Chinese Academy of Medical Sciences & Peking Union Medical College Hospital 3. The Johns Hopkins University 4. Abbott (Japan)
Abstract
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 it 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. 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 early-stage 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 early detection of liver fibrosis and cirrhosis 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.
Publisher
Research Square Platform LLC
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