Predicting mortality in incident dialysis patients: an analysis of the United Kingdom Renal Registry.

BACKGROUND The risk of death in dialysis patients is high, but varies significantly among patients. No prediction tool is used widely in current clinical practice. We aimed to predict long-term mortality in incident dialysis patients using easily obtainable variables. STUDY DESIGN Prospective nationwide multicenter cohort study in the United Kingdom (UK Renal Registry); models were developed using Cox proportional hazards. SETTING & PARTICIPANTS Patients initiating hemodialysis or peritoneal dialysis therapy in 2002-2004 who survived at least 3 months on dialysis treatment were followed up for 3 years. Analyses were restricted to participants for whom information for comorbid conditions and laboratory measurements were available (n = 5,447). The data set was divided into data sets for model development (n = 3,631; training) and validation (n = 1,816) using random selection. PREDICTORS Basic patient characteristics, comorbid conditions, and laboratory variables. OUTCOMES All-cause mortality censored for kidney transplant, recovery of kidney function, and loss to follow-up. RESULTS In the training data set, 1,078 patients (29.7%) died within the observation period. The final model for the training data set included patient characteristics (age, race, primary kidney disease, and treatment modality), comorbid conditions (diabetes, history of cardiovascular disease, and smoking), and laboratory variables (hemoglobin, serum albumin, creatinine, and calcium levels); reached a C statistic of 0.75 (95% CI, 0.73-0.77); and could discriminate accurately among patients with low (6%), intermediate (19%), high (33%), and very high (59%) mortality risk. The model was applied further to the validation data set and achieved a C statistic of 0.73 (95% CI, 0.71-0.76). LIMITATIONS Number of missing comorbidity data and lack of an external validation data set. CONCLUSIONS Basic patient characteristics, comorbid conditions, and laboratory variables can predict 3-year mortality in incident dialysis patients with sufficient accuracy. Identification of subgroups of patients according to mortality risk can guide future research and subsequently target treatment decisions in individual patients.

[1]  N. Levin,et al.  Mortality among hemodialysis patients in Europe, Japan, and the United States: case-mix effects. , 2004, American journal of kidney diseases : the official journal of the National Kidney Foundation.

[2]  A. Gorst-rasmussen,et al.  NT-pro-BNP is an independent predictor of mortality in patients with end-stage renal disease. , 2009, Clinical nephrology.

[3]  K. Polkinghorne,et al.  Are traditional risk factors valid for assessing cardiovascular risk in end‐stage renal failure patients? , 2008, Nephrology.

[4]  David W. Johnson,et al.  Relationship between dialysis modality and mortality. , 2009, Journal of the American Society of Nephrology : JASN.

[5]  Kdoqi II. Clinical practice guidelines and clinical practice recommendations for anemia in chronic kidney disease in adults. , 2006, American journal of kidney diseases : the official journal of the National Kidney Foundation.

[6]  N. Powe,et al.  Predicting 1 year mortality in an outpatient haemodialysis population: a comparison of comorbidity instruments. , 2004, Nephrology, dialysis, transplantation : official publication of the European Dialysis and Transplant Association - European Renal Association.

[7]  A. Murray,et al.  Chronic kidney disease and the risk for cardiovascular disease, renal replacement, and death in the United States Medicare population, 1998 to 1999. , 2005, Journal of the American Society of Nephrology : JASN.

[8]  C. Wanner,et al.  Inflammation enhances cardiovascular risk and mortality in hemodialysis patients. , 1999, Kidney international.

[9]  D. Fogarty,et al.  UK Renal Registry 11th Annual Report (December 2008): Chapter 6 Comorbidities and current smoking status amongst patients starting Renal Replacement Therapy in England, Wales and Northern Ireland: national and centre-specific analyses , 2009, Nephron Clinical Practice.

[10]  G. Beck,et al.  Relationship between C-reactive protein, albumin, and cardiovascular disease in patients with chronic kidney disease. , 2003, American journal of kidney diseases : the official journal of the National Kidney Foundation.

[11]  M. Pencina,et al.  Evaluating the added predictive ability of a new marker: From area under the ROC curve to reclassification and beyond , 2008, Statistics in medicine.

[12]  J. Habbema,et al.  Prognostic Modeling with Logistic Regression Analysis , 2001, Medical decision making : an international journal of the Society for Medical Decision Making.

[13]  F. Dekker,et al.  Predictors of poor outcome in chronic dialysis patients: The Netherlands Cooperative Study on the Adequacy of Dialysis. The NECOSAD Study Group. , 2000, American journal of kidney diseases : the official journal of the National Kidney Foundation.

[14]  Joseph L Schafer,et al.  Analysis of Incomplete Multivariate Data , 1997 .

[15]  Johanna T Dwyer,et al.  Effect of dialysis dose and membrane flux in maintenance hemodialysis. , 2002, The New England journal of medicine.

[16]  J. Griffith,et al.  Effects of anemia and left ventricular hypertrophy on cardiovascular disease in patients with chronic kidney disease. , 2005, Journal of the American Society of Nephrology : JASN.

[17]  M. Rosenthal,et al.  Early experience with pay-for-performance: from concept to practice. , 2005, JAMA.

[18]  David M Kent,et al.  Limitations of applying summary results of clinical trials to individual patients: the need for risk stratification. , 2007, JAMA.

[19]  M. Clèries,et al.  Design and validation of a model to predict early mortality in haemodialysis patients. , 2008, Nephrology, dialysis, transplantation : official publication of the European Dialysis and Transplant Association - European Renal Association.

[20]  Michael I. Mandel,et al.  Evaluating survival model performance: a graphical approach , 2005, Statistics in medicine.

[21]  Kath Checkland,et al.  Impact of financial incentives on clinical autonomy and internal motivation in primary care: ethnographic study , 2007, BMJ : British Medical Journal.

[22]  N. Tangri,et al.  Predicting technique survival in peritoneal dialysis patients: comparing artificial neural networks and logistic regression , 2008, Nephrology, dialysis, transplantation : official publication of the European Dialysis and Transplant Association - European Renal Association.

[23]  Y. Ben-Shlomo,et al.  Ethnicity, socioeconomic status, and attainment of clinical practice guideline standards in dialysis patients in the United kingdom. , 2009, Clinical journal of the American Society of Nephrology : CJASN.

[24]  D. Ansell UK Renal Registry 11th Annual Report (December 2008): Chapter 1 Summary of findings in the 2008 UK Renal Registry Report , 2009, Nephron Clinical Practice.

[25]  Hiroshi Takahashi,et al.  Prognostic value of reduced left ventricular ejection fraction at start of hemodialysis therapy on cardiovascular and all-cause mortality in end-stage renal disease patients. , 2010, Clinical journal of the American Society of Nephrology : CJASN.

[26]  F. Dekker,et al.  Changes in adiponectin and the risk of sudden death, stroke, myocardial infarction, and mortality in hemodialysis patients. , 2009, Kidney international.

[27]  Zhi Huang,et al.  An improved comorbidity index for outcome analyses among dialysis patients. , 2010, Kidney international.

[28]  N. Powe,et al.  Comorbidity and its change predict survival in incident dialysis patients. , 2003, American journal of kidney diseases : the official journal of the National Kidney Foundation.

[29]  F. Port,et al.  Association of serum phosphorus and calcium x phosphate product with mortality risk in chronic hemodialysis patients: a national study. , 1998, American journal of kidney diseases : the official journal of the National Kidney Foundation.

[30]  Henry Mandin,et al.  Prediction of early death in end-stage renal disease patients starting dialysis. , 1997, American journal of kidney diseases : the official journal of the National Kidney Foundation.

[31]  H. Tighiouart,et al.  Key comorbid conditions that are predictive of survival among hemodialysis patients. , 2009, Clinical journal of the American Society of Nephrology : CJASN.

[32]  A. Zwinderman,et al.  The ERA-EDTA cohort study--comparison of methods to predict survival on renal replacement therapy. , 2006, Nephrology, dialysis, transplantation : official publication of the European Dialysis and Transplant Association - European Renal Association.

[33]  A. Moss,et al.  Utility of the "surprise" question to identify dialysis patients with high mortality. , 2008, Clinical journal of the American Society of Nephrology : CJASN.

[34]  R. Birne,et al.  A simple vascular calcification score predicts cardiovascular risk in haemodialysis patients. , 2004, Nephrology, dialysis, transplantation : official publication of the European Dialysis and Transplant Association - European Renal Association.

[35]  M. Sarnak,et al.  Cardiovascular complications in chronic kidney disease. , 2003, American journal of kidney diseases : the official journal of the National Kidney Foundation.