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Development and validation of a model to predict incident chronic liver disease in the general population: The CLivD score

Authors :
Fredrik Åberg
Panu K. Luukkonen
Anna But
Veikko Salomaa
Annie Britton
Kasper Meidahl Petersen
Stig Egil Bojesen
Mie Balling
Børge G. Nordestgaard
Pauli Puukka
Satu Männistö
Annamari Lundqvist
Markus Perola
Antti Jula
Martti Färkkilä
Clinicum
HUS Abdominal Center
IV kirurgian klinikka
HUS Internal Medicine and Rehabilitation
Department of Medicine
University of Helsinki
Department of Public Health
INDIVIDRUG - Individualized Drug Therapy
Centre of Excellence in Complex Disease Genetics
Source :
Åberg, F, Luukkonen, P K, But, A, Salomaa, V, Britton, A, Petersen, K M, Bojesen, S E, Balling, M, Nordestgaard, B G, Puukka, P, Männistö, S, Lundqvist, A, Perola, M, Jula, A & Färkkilä, M 2022, ' Development and validation of a model to predict incident chronic liver disease in the general population : The CLivD score ', Journal of Hepatology, vol. 77, no. 2, pp. 302-311 . https://doi.org/10.1016/j.jhep.2022.02.021
Publication Year :
2022
Publisher :
Elsevier BV, 2022.

Abstract

Background & Aims: Current screening strategies for chronic liver disease focus on detection of subclinical advanced liver fibrosis but cannot identify those at high future risk of severe liver disease. Our aim was to develop and validate a risk pre-diction model for incident chronic liver disease in the general population based on widely available factors. Methods: Multivariable Cox regression analyses were used to develop prediction models for liver-related outcomes with and without laboratory measures (Modellab and Modelnon-lab) in 25,760 individuals aged 40-70 years. Their data were sourced from the Finnish population-based health examination surveys FINRISK 1992-2012 and Health 2000 (derivation cohort). The models were externally validated in the Whitehall II (n = 5,058) and Copenhagen City Heart Study (CCHS) (n = 3,049) cohorts. Results: The absolute rate of incident liver outcomes per 100,000 person-years ranged from 53 to 144. The final prediction model included age, sex, alcohol use (drinks/week), waist-hip ratio, diabetes, and smoking, and Modellab also included gamma-glutamyltransferase values. Internally validated Wolbers' C -sta-tistics were 0.77 for Modellab and 0.75 for Modelnon-lab, while apparent 15-year AUCs were 0.84 (95% CI 0.75-0.93) and 0.82 (95% CI 0.74-0.91). The models identified a small proportion (< 2%) of the population with > 10% absolute 15-year risk for liver events. Of all liver events, only 10% occurred in participants in the lowest risk category. In the validation cohorts, 15-year AUCs were 0.78 (Modellab) and 0.65 (Modelnon-lab) in the CCHS cohort, and 0.78 (Modelnon-lab) in the Whitehall II cohort. Conclusions: Based on widely available risk factors, the Chronic Liver Disease (CLivD) score can be used to predict risk of future advanced liver disease in the general population. Lay summary: Liver disease often progresses silently without symptoms and thus the diagnosis is often delayed until severe complications occur and prognosis becomes poor. In order to identify individuals in the general population who have a high risk of developing severe liver disease in the future, we developed and validated a Chronic Liver Disease (CLivD) risk prediction score, based on age, sex, alcohol use, waist-hip ratio, diabetes, and smoking, with or without measurement of the liver enzyme gamma-glutamyltransferase. The CLivD score can be used as part of health counseling, and for planning further liver investigations and follow-up. (C) 2022 The Author(s). Published by Elsevier B.V. on behalf of European Association for the Study of the Liver.

Details

ISSN :
01688278
Volume :
77
Database :
OpenAIRE
Journal :
Journal of Hepatology
Accession number :
edsair.doi.dedup.....ef98632b0c7cc7b4809fbb799493a894