| Literature DB >> 31581237 |
Ellen R Berni1, Bethan I Jones1, Thomas R Berni1, James Whitehouse2, Mark Hudson3,4, James Orr3,4, Pete Conway1, Bharat Amlani2, Craig J Currie1,5.
Abstract
The purpose of this study was to produce two statistical survival models in those with cirrhosis utilising only routine parameters, including non-liver-related clinical factors that influence survival. The first model identified and utilised factors impacting short-term survival to 90-days post incident diagnosis, and a further model characterised factors that impacted survival following this acute phase. Data were from the Clinical Practice Research Datalink linked with Hospital Episode Statistics. Incident cases in patients ≥18 years were identified between 1998 and 2014. Patients that had prior history of cancer or had received liver transplants prior were excluded. Model-1 used a logistic regression model to predict mortality. Model-2 used data from those patients who survived 90 days, and used an extension of the Cox regression model, adjusting for time-dependent covariables. At 90 days, 23% of patients had died. Overall median survival was 3.7 years. Model-1: numerous predictors, prior comorbidities and decompensating events were incorporated. All comorbidities contributed to increased odds of death, with renal disease having the largest adjusted odds ratio (OR = 3.35, 95%CI 2.97-3.77). Model-2: covariables included cumulative admissions for liver disease-related events and admissions for infections. Significant covariates were renal disease (adjusted hazard ratio (HR = 2.89, 2.47-3.38)), elevated bilirubin levels (aHR = 1.38, 1.26-1.51) and low sodium levels (aHR = 2.26, 1.84-2.78). An internal validation demonstrated reliability of both models. In conclusion: two survival models that included parameters commonly recorded in routine clinical practice were generated that reliably forecast the risk of death in patients with cirrhosis: in the acute, post diagnosis phase, and following this critical, 90 day phase. This has implications for practice and helps better forecast the risk of mortality from cirrhosis using routinely recorded parameters without inputs from specialists.Entities:
Year: 2019 PMID: 31581237 PMCID: PMC6776387 DOI: 10.1371/journal.pone.0223253
Source DB: PubMed Journal: PLoS One ISSN: 1932-6203 Impact factor: 3.240
Baseline characteristics.
| Parameter | n (%) or mean (SD) | % of missing data | |
|---|---|---|---|
| Male | 6,557 | (60) | 0 |
| Age | 60.0 | (14.4) | 0 |
| Body Mass Index (kg/m2) | 27.4 | (6.5) | 6027 (55.0%) |
| Systolic blood pressure (mm/Hg) | 131 | (20) | 3411 (31.1%) |
| Total cholesterol (mmol/L) | 4.6 | (1.6) | 6701 (61.2%) |
| Albumin (g/L) | 35.3 | (7.1) | 3687 (25.3%) |
| Bilirubin (μmol/L) | 39.4 | (64.3) | 3576 (32.6%) |
| eGFR (ml/min/1.73 m2) | 84.9 | (26.2) | 3506 (32.0%) |
| Alanine aminotransferase (U/L) | 55.2 | (70.3) | 4744 (43.3%) |
| Aspartate aminotransferase (U/L) | 89.7 | (93.1) | 8878 (81%) |
| Sodium (mmol/L) | 137.5 | (4.6) | 3570 (32.6%) |
| GP contacts preceding year (n) | 11.5 | (10.5) | 0 |
| Charlson Index | 3.7 | (2.4) | 0 |
| Alcohol Status: | |||
| Never drank | 1,332 | (12.2) | |
| Ex-drinker | 892 | (8.1) | |
| Current drinker | 7,758 | (70.8) | |
| Missing | 971 | (8.9) | |
| Units of alcohol per week | 24.9 | (43.6) | 3228 (29.5%) |
| Comorbidities: | |||
| Diabetes | 2,132 | (19.5) | NA |
| Stroke | 392 | (3.6) | NA |
| End stage renal disease | 2,892 | (26.4) | NA |
| Admission for variceal haemorrhage | 775 | (7.1) | NA |
| Admission for ascites | 2,885 | (26.3) | NA |
| Admission for infection | 5,396 | (49.3) | NA |
Fig 1Kaplan-Meier curves illustrating survival pattern in people newly diagnosed with liver cirrhosis.
(A) All subjects. (B) Survival to 90 days post diagnosis. (C) Survival in those who survived ≥ 90 days.
Fig 2MoMIC: Logistic regression model of mortality within 90 days following incident cirrhosis.
Fig 3LOMiC: A time dependent Cox proportional hazard model of long-term mortality of subjects who survive ≥90 days.
Fig 4Proportion of patients dead and alive within deciles of risk score at each year in Model-2.