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Published in: Intensive Care Medicine 6/2017

01-06-2017 | Original

AKIpredictor, an online prognostic calculator for acute kidney injury in adult critically ill patients: development, validation and comparison to serum neutrophil gelatinase-associated lipocalin

Authors: Marine Flechet, Fabian Güiza, Miet Schetz, Pieter Wouters, Ilse Vanhorebeek, Inge Derese, Jan Gunst, Isabel Spriet, Michaël Casaer, Greet Van den Berghe, Geert Meyfroidt

Published in: Intensive Care Medicine | Issue 6/2017

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Abstract

Purpose

Early diagnosis of acute kidney injury (AKI) remains a major challenge. We developed and validated AKI prediction models in adult ICU patients and made these models available via an online prognostic calculator. We compared predictive performance against serum neutrophil gelatinase-associated lipocalin (NGAL) levels at ICU admission.

Methods

Analysis of the large multicenter EPaNIC database. Model development (n = 2123) and validation (n = 2367) were based on clinical information available (1) before and (2) upon ICU admission, (3) after 1 day in ICU and (4) including additional monitoring data from the first 24 h. The primary outcome was a comparison of the predictive performance between models and NGAL for the development of any AKI (AKI-123) and AKI stages 2 or 3 (AKI-23) during the first week of ICU stay.

Results

Validation cohort prevalence was 29% for AKI-123 and 15% for AKI-23. The AKI-123 model before ICU admission included age, baseline serum creatinine, diabetes and type of admission (medical/surgical, emergency/planned) and had an AUC of 0.75 (95% CI 0.75–0.75). The AKI-23 model additionally included height and weight (AUC 0.77 (95% CI 0.77–0.77)). Performance consistently improved with progressive data availability to AUCs of 0.82 (95% CI 0.82–0.82) for AKI-123 and 0.84 (95% CI 0.83–0.84) for AKI-23 after 24 h. NGAL was less discriminant with AUCs of 0.74 (95% CI 0.74–0.74) for AKI-123 and 0.79 (95% CI 0.79–0.79) for AKI-23.

Conclusions

AKI can be predicted early with models that only use routinely collected clinical information and outperform NGAL measured at ICU admission. The AKI-123 models are available at http://​akipredictor.​com/​.
Trial registration Clinical Trials.gov NCT00512122
Appendix
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Literature
4.
go back to reference Nisula S, Kaukonen K-M, Vaara ST et al (2013) Incidence, risk factors and 90-day mortality of patients with acute kidney injury in Finnish intensive care units: the FINNAKI study. Intensive Care Med 39:420–428. doi:10.1007/s00134-012-2796-5 CrossRefPubMed Nisula S, Kaukonen K-M, Vaara ST et al (2013) Incidence, risk factors and 90-day mortality of patients with acute kidney injury in Finnish intensive care units: the FINNAKI study. Intensive Care Med 39:420–428. doi:10.​1007/​s00134-012-2796-5 CrossRefPubMed
5.
go back to reference Sutherland SM, Chawla LS, Kane-Gill SL et al (2016) Utilizing electronic health records to predict acute kidney injury risk and outcomes: workgroup statements from the 15th ADQI Consensus Conference. Can J Kidney Heal Dis 3:11. doi:10.1186/s40697-016-0099-4 CrossRef Sutherland SM, Chawla LS, Kane-Gill SL et al (2016) Utilizing electronic health records to predict acute kidney injury risk and outcomes: workgroup statements from the 15th ADQI Consensus Conference. Can J Kidney Heal Dis 3:11. doi:10.​1186/​s40697-016-0099-4 CrossRef
14.
go back to reference Kidney Disease: Improving Global Outcomes (KDIGO) Acute Kidney Injury Work Group (2012) KDIGO clinical practice guideline for acute kidney injury. Kidney inter 2(Suppl1):1–138 Kidney Disease: Improving Global Outcomes (KDIGO) Acute Kidney Injury Work Group (2012) KDIGO clinical practice guideline for acute kidney injury. Kidney inter 2(Suppl1):1–138
18.
20.
go back to reference Zhang Z (2015) Biomarkers, diagnosis and management of sepsis-induced acute kidney injury: a narrative review. Hear Lung Vessel 7:64–73 Zhang Z (2015) Biomarkers, diagnosis and management of sepsis-induced acute kidney injury: a narrative review. Hear Lung Vessel 7:64–73
23.
26.
go back to reference Eagle KA, Lim MJ, Dabbous OH et al (2004) A validated prediction model for all forms of acute coronary syndrome. JAMA 291:2727–2733CrossRefPubMed Eagle KA, Lim MJ, Dabbous OH et al (2004) A validated prediction model for all forms of acute coronary syndrome. JAMA 291:2727–2733CrossRefPubMed
33.
go back to reference Leening MJG, Steyerberg EW, Van Calster B et al (2014) Net reclassification improvement and integrated discrimination improvement require calibrated models: relevance from a marker and model perspective. Stat Med 33:3415–3418. doi:10.1002/sim.6133 CrossRefPubMed Leening MJG, Steyerberg EW, Van Calster B et al (2014) Net reclassification improvement and integrated discrimination improvement require calibrated models: relevance from a marker and model perspective. Stat Med 33:3415–3418. doi:10.​1002/​sim.​6133 CrossRefPubMed
36.
go back to reference Pedregosa F, Varoquax G, Gramfort A et al (2011) Scikit-learn: machine learning in python. J Mach Learn Res 12:2825–2830 Pedregosa F, Varoquax G, Gramfort A et al (2011) Scikit-learn: machine learning in python. J Mach Learn Res 12:2825–2830
39.
40.
42.
go back to reference Bagshaw SM, Bennett M, Haase M et al (2010) Plasma and urine neutrophil gelatinase-associated lipocalin in septic versus non-septic acute kidney injury in critical illness. Intensive Care Med 36:452–461. doi:10.1007/s00134-009-1724-9 CrossRefPubMed Bagshaw SM, Bennett M, Haase M et al (2010) Plasma and urine neutrophil gelatinase-associated lipocalin in septic versus non-septic acute kidney injury in critical illness. Intensive Care Med 36:452–461. doi:10.​1007/​s00134-009-1724-9 CrossRefPubMed
44.
go back to reference Vanmassenhove J, Vanholder R, Nagler E, Van Biesen W (2013) Urinary and serum biomarkers for the diagnosis of acute kidney injury: an in-depth review of the literature. Nephrol Dial Transplant 28:254–273. doi:10.1093/ndt/gfs380 CrossRefPubMed Vanmassenhove J, Vanholder R, Nagler E, Van Biesen W (2013) Urinary and serum biomarkers for the diagnosis of acute kidney injury: an in-depth review of the literature. Nephrol Dial Transplant 28:254–273. doi:10.​1093/​ndt/​gfs380 CrossRefPubMed
46.
go back to reference Forni LG, Dawes T, Sinclair H, Cheek E, Bewick V, Dennis M et al (2013) Identifying the patient at risk of acute kidney injury: a predictive scoring system for the development of acute kidney injury in acute medical patients. Nephron-Clin Pract 123:143–150CrossRefPubMed Forni LG, Dawes T, Sinclair H, Cheek E, Bewick V, Dennis M et al (2013) Identifying the patient at risk of acute kidney injury: a predictive scoring system for the development of acute kidney injury in acute medical patients. Nephron-Clin Pract 123:143–150CrossRefPubMed
47.
go back to reference Mehta RL, Cerdá J, Burdmann EA et al (2015) International Society of Nephrology’s 0 by 25 initiative for acute kidney injury (zero preventable deaths by 2025): a human rights case for nephrology. Lancet 385:2616–2643. doi:10.1016/S0140-6736(15)60126-X CrossRefPubMed Mehta RL, Cerdá J, Burdmann EA et al (2015) International Society of Nephrology’s 0 by 25 initiative for acute kidney injury (zero preventable deaths by 2025): a human rights case for nephrology. Lancet 385:2616–2643. doi:10.​1016/​S0140-6736(15)60126-X CrossRefPubMed
Metadata
Title
AKIpredictor, an online prognostic calculator for acute kidney injury in adult critically ill patients: development, validation and comparison to serum neutrophil gelatinase-associated lipocalin
Authors
Marine Flechet
Fabian Güiza
Miet Schetz
Pieter Wouters
Ilse Vanhorebeek
Inge Derese
Jan Gunst
Isabel Spriet
Michaël Casaer
Greet Van den Berghe
Geert Meyfroidt
Publication date
01-06-2017
Publisher
Springer Berlin Heidelberg
Published in
Intensive Care Medicine / Issue 6/2017
Print ISSN: 0342-4642
Electronic ISSN: 1432-1238
DOI
https://doi.org/10.1007/s00134-017-4678-3

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