Identifying patients at high risk of decompensated liver disease through unscheduled care attendance data: a retrospective cohort study
摘要
Liver cirrhosis is one of the leading causes of mortality and morbidity in those of working age. Mortality from liver disease in the UK has continued to rise over the past decade. A significant proportion of patients presenting with decompensated liver disease have no prior diagnosis of liver disease despite multiple acute healthcare interactions providing opportunities for detection.
We aimed to characterise patients presenting to unscheduled care with no known liver disease who subsequently had a liver related admission (DLD), and determine if a simple predictive score could identify those at high risk.
MethodsAll patients attending unscheduled care in our health board between the beginning of 2018 and the end of 2020 were included with clinical follow up until end 2022. Exclusion criteria were known liver disease, early (< 6 months) presentation with DLD or missing key laboratory data. A predictive model was developed based on demographic and laboratory parameters.
ResultsFollowing exclusions, a group of 173,486 patients were included in our analysis, of whom 1,609 (0.9%) went on to have a DLD-related admission in the 5 year-follow up period. A model to predict future admission was developed based on Fib4 score (using the common blood tests Aspartate aminotransferase (AST), Alanine Transaminase (ALT) and platelet count), geographical deprivation decile, and sex. This model had a Harrell’s C statistic of 0.78.
ConclusionsUnscheduled care presentations provide an opportunity to identify those at high risk of advanced liver disease and decompensation. It is likely these patients have undiagnosed liver disease at the time of presentation, and a model using simple laboratory and demographic data may aid detection in this setting of those at risk of future liver-related admission. External validation of this model is required.