TY - JOUR
T1 - Kidney failure prediction models
T2 - A comprehensive external validation study in patients with advanced CKD
AU - Ramspek, Chava L.
AU - Evans, Marie
AU - Wanner, Christoph
AU - Drechsler, Christiane
AU - Chesnaye, Nicholas C.
AU - Szymczak, Maciej
AU - Krajewska, Magdalena
AU - Torino, Claudia
AU - Porto, Gaetana
AU - Hayward, Samantha
AU - Caskey, Fergus
AU - Dekker, Friedo W.
AU - Jager, Kitty J.
AU - van Diepen, Merel
AU - Cupisti, Adamasco
AU - Sagliocca, Adelia
AU - Ferraro, Alberto
AU - Musiała, Aleksandra
AU - Mele, Alessandra
AU - Naticchia, Alessandro
AU - Còsaro, Alex
AU - Woodman, Alistair
AU - Ranghino, Andrea
AU - Stucchi, Andrea
AU - Jonsson, Andreas
AU - Schneider, Andreas
AU - Pignataro, Angelo
AU - Schrander, Anita
AU - Torp, Anke
AU - McKeever, Anna
AU - Szymczak, Anna
AU - Blom, Anna Lena
AU - de Blasio, Antonella
AU - Pani, Antonello
AU - Tsalouichos, Aris
AU - Ullah, Asad
AU - McLaren, Barbara
AU - van Dam, Bastiaan
AU - Iwig, Beate
AU - Antonio, Bellasi
AU - Di Iorio, Biagio Raffaele
AU - Rogland, Björn
AU - Perras, Boris
AU - Alessandra, Butti
AU - Harron, Camille
AU - Wallquist, Carin
AU - Siegert, Carl
AU - Gaillard, Carlo
AU - Voskamp, Pauline
AU - Blankestijn, Peter
N1 - Funding Information:
The work on this study by M. van Diepen was supported by Nierstichting grant 16OKG12.
Publisher Copyright:
© 2021 American Society of Nephrology. All rights reserved.
PY - 2021/5
Y1 - 2021/5
N2 - Background Various prediction models have been developed to predict the risk of kidney failure in patients with CKD. However, guideline-recommended models have yet to be compared head to head, their validation in patients with advanced CKD is lacking, and most do not account for competing risks. Methods To externally validate 11 existing models of kidney failure, taking the competing risk of death into account, we included patients with advanced CKD from two large cohorts: the European Quality Study (EQUAL), an ongoing European prospective, multicenter cohort study of older patients with advanced CKD, and the Swedish Renal Registry (SRR), an ongoing registry of nephrology-referred patients with CKD in Sweden. The outcome of the models was kidney failure (defined as RRT-treated ESKD). We assessed model performance with discrimination and calibration. Results The study included 1580 patients from EQUAL and 13,489 patients from SRR. The average c statistic over the 11 validated models was 0.74 in EQUAL and 0.80 in SRR, compared with 0.89 in previous validations. Most models with longer prediction horizons overestimated the risk of kidney failure considerably. The 5-year Kidney Failure Risk Equation (KFRE) overpredicted risk by 10%-\18%. The four- and eight-variable 2-year KFRE and the 4-year Grams model showed excellent calibration and good discrimination in both cohorts. Conclusions Some existing models can accurately predict kidney failure in patients with advanced CKD. KFRE performed well for a shorter time frame (2 years), despite not accounting for competing events. Models predicting over a longer time frame (5 years) overestimated risk because of the competing risk of death. The Grams model, which accounts for the latter, is suitable for longer-term predictions (4 years).
AB - Background Various prediction models have been developed to predict the risk of kidney failure in patients with CKD. However, guideline-recommended models have yet to be compared head to head, their validation in patients with advanced CKD is lacking, and most do not account for competing risks. Methods To externally validate 11 existing models of kidney failure, taking the competing risk of death into account, we included patients with advanced CKD from two large cohorts: the European Quality Study (EQUAL), an ongoing European prospective, multicenter cohort study of older patients with advanced CKD, and the Swedish Renal Registry (SRR), an ongoing registry of nephrology-referred patients with CKD in Sweden. The outcome of the models was kidney failure (defined as RRT-treated ESKD). We assessed model performance with discrimination and calibration. Results The study included 1580 patients from EQUAL and 13,489 patients from SRR. The average c statistic over the 11 validated models was 0.74 in EQUAL and 0.80 in SRR, compared with 0.89 in previous validations. Most models with longer prediction horizons overestimated the risk of kidney failure considerably. The 5-year Kidney Failure Risk Equation (KFRE) overpredicted risk by 10%-\18%. The four- and eight-variable 2-year KFRE and the 4-year Grams model showed excellent calibration and good discrimination in both cohorts. Conclusions Some existing models can accurately predict kidney failure in patients with advanced CKD. KFRE performed well for a shorter time frame (2 years), despite not accounting for competing events. Models predicting over a longer time frame (5 years) overestimated risk because of the competing risk of death. The Grams model, which accounts for the latter, is suitable for longer-term predictions (4 years).
KW - Aged
KW - Aged, 80 and over
KW - Cohort Studies
KW - Disease Progression
KW - Europe
KW - Female
KW - Humans
KW - Kidney Failure, Chronic/diagnosis
KW - Male
KW - Models, Statistical
KW - Predictive Value of Tests
KW - Prognosis
KW - Risk Assessment
KW - Time Factors
UR - http://www.scopus.com/inward/record.url?scp=85106069149&partnerID=8YFLogxK
U2 - 10.1681/ASN.2020071077
DO - 10.1681/ASN.2020071077
M3 - Article
C2 - 33685974
AN - SCOPUS:85106069149
SN - 1046-6673
VL - 32
SP - 1174
EP - 1186
JO - Journal of the American Society of Nephrology
JF - Journal of the American Society of Nephrology
IS - 5
ER -