Prediction of all-cause mortality in haemodialysis patients using a Bayesian network

Author:

Siga Marleine Mefeugue1,Ducher Michel2,Florens Nans1,Roth Hubert3,Mahloul Nadir4,Fouque Denis5ORCID,Fauvel Jean-Pierre1

Affiliation:

1. Hospices Civils de Lyon, Hôpital Edouard Herriot, Service de Néphrologie, Université Claude Bernard Lyon 1, Lyon, France

2. Pharmacie, Hospices Civils de Lyon, EMR3738 Ciblage thérapeutique en oncologie, Université Claude Bernard Lyon 1, Lyon, France

3. Faculté de médecine, Université Grenoble Alpes, Domaine de la merci Place du Commandant Nal, La Tronche, France

4. Campus Sanofi Val de Bièvre, Gentilly, France

5. Hospices Civils de Lyon, Hôpital Lyon-Sud, Service de Néphrologie, Université Claude Bernard Lyon 1, Pierre Bénite, France

Abstract

Abstract Background All-cause mortality in haemodialysis (HD) is high, reaching 15.6% in the first year according to the European Renal Association. Methods A new clinical tool to predict all-cause mortality in HD patients is proposed. It uses a post hoc analysis of data from the prospective cohort study Photo-Graph V3. A total of 35 variables related to patient characteristics, laboratory values and treatments were used as predictors of all-cause mortality. The first step was to compare the results obtained using a logistic regression to those obtained by a Bayesian network. The second step aimed to increase the performance of the best prediction model using synthetic data. Finally, a compromise between performance and ergonomics was proposed by reducing the number of variables to be entered in the prediction tool. Results Among the 9010 HD patients included in the Photo-Graph V3 study, 4915 incident patients with known medical status at 2 years were analysed. All-cause mortality at 2 years was 34.1%. The Bayesian network provided the most reliable prediction. The final optimized models that used 14 variables had areas under the receiver operating characteristic curves of 0.78 ± 0.01, sensitivity of 72 ± 2%, specificity of 69 ± 2%, predictive positive value of 70 ± 1% and negative predictive value of 71 ± 2% for the prediction of all-cause mortality. Conclusions Using artificial intelligence methods, a new clinical tool to predict all-cause mortality in incident HD patients is proposed. The latter can be used for research purposes before its external validation at: https://www.hed.cc/? a=twoyearsallcausemortalityhemod&n=2-years%20All-cause%20Mortality%20Hemodialysis.neta.

Publisher

Oxford University Press (OUP)

Subject

Transplantation,Nephrology

Reference27 articles.

1. The European Renal Association – European Dialysis and Transplant Association (ERA-EDTA) Registry Annual Report 2015: a summary;Kramer;Clin Kidney J,2018

2. Cardiac function and hematocrit level;Harnett;Am J Kidney Dis,1995

3. Epidemiology of cardiovascular risk in patients with chronic kidney disease;Locatelli;Nephrol Dial Transplant,2003

4. Chronic kidney disease and the risk for cardiovascular disease, renal replacement, and death in the United States Medicare population, 1998 to 1999;Foley;J Am Soc Nephrol,2005

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