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Published in: BMC Endocrine Disorders 1/2021

Open Access 01-12-2021 | Acute Kidney Injury | Research article

Nomogram to predict the risk of acute kidney injury in patients with diabetic ketoacidosis: an analysis of the MIMIC-III database

Authors: Tingting Fan, Haosheng Wang, Jiaxin Wang, Wenrui Wang, Haifei Guan, Chuan Zhang

Published in: BMC Endocrine Disorders | Issue 1/2021

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Abstract

Background

This study aimed to develop and validate a nomogram for predicting acute kidney injury (AKI) during the Intensive Care Unit (ICU) stay of patients with diabetic ketoacidosis (DKA).

Methods

A total of 760 patients diagnosed with DKA from the Medical Information Mart for Intensive Care III (MIMIC-III) database were included and randomly divided into a training set (70%, n = 532) and a validation set (30%, n = 228). Clinical characteristics of the data set were utilized to establish a nomogram for the prediction of AKI during ICU stay. The least absolute shrinkage and selection operator (LASSO) regression was utilized to identified candidate predictors. Meanwhile, a multivariate logistic regression analysis was performed based on variables derived from LASSO regression, in which variables with P < 0.1 were included in the final model. Then, a nomogram was constructed applying these significant risk predictors based on a multivariate logistic regression model. The discriminatory ability of the model was determined by illustrating a receiver operating curve (ROC) and calculating the area under the curve (AUC). Moreover, the calibration plot and Hosmer-Lemeshow goodness-of-fit test (HL test) were conducted to evaluate the performance of our newly bullied nomogram. Decision curve analysis (DCA) was performed to evaluate the clinical net benefit.

Results

A multivariable model that included type 2 diabetes mellitus (T2DM), microangiopathy, history of congestive heart failure (CHF), history of hypertension, diastolic blood pressure (DBP), urine output, Glasgow coma scale (GCS), and respiratory rate (RR) was represented as the nomogram. The predictive model demonstrated satisfied discrimination with an AUC of 0.747 (95% CI, 0.706–0.789) in the training dataset, and 0.712 (95% CI, 0.642–0.782) in the validation set. The nomogram showed well-calibrated according to the calibration plot and HL test (P > 0.05). DCA showed that our model was clinically useful.

Conclusion

The nomogram predicted model for predicting AKI in patients with DKA was constructed. This predicted model can help clinical physicians to identify the patients with high risk earlier and prevent the occurrence of AKI and intervene timely to improve prognosis.
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Literature
1.
go back to reference H D, X S, H L, L Z. Association between red blood cell distribution width and mortality in diabetic ketoacidosis. J Int Med Res. 2020;48(3):300060520911494. H D, X S, H L, L Z. Association between red blood cell distribution width and mortality in diabetic ketoacidosis. J Int Med Res. 2020;48(3):300060520911494.
2.
go back to reference M F, FJ P, GE U. Management of Hyperglycemic Crises: diabetic ketoacidosis and hyperglycemic hyperosmolar state. Med Clin N Am. 2017;101(3):587–606.CrossRef M F, FJ P, GE U. Management of Hyperglycemic Crises: diabetic ketoacidosis and hyperglycemic hyperosmolar state. Med Clin N Am. 2017;101(3):587–606.CrossRef
3.
go back to reference Venkatesh B, Pilcher D, Prins J, Bellomo R, Morgan TJ, Bailey M. Incidence and outcome of adults with diabetic ketoacidosis admitted to ICUs in Australia and New Zealand. Critical care (London, England). 2015;19:451.CrossRef Venkatesh B, Pilcher D, Prins J, Bellomo R, Morgan TJ, Bailey M. Incidence and outcome of adults with diabetic ketoacidosis admitted to ICUs in Australia and New Zealand. Critical care (London, England). 2015;19:451.CrossRef
4.
go back to reference Hoste EAJ, Bagshaw SM, Bellomo R, Cely CM, Colman R, Cruz DN, et al. Epidemiology of acute kidney injury in critically ill patients: the multinational AKI-EPI study. Intensive Care Med. 2015;41(8):1411–23.CrossRef Hoste EAJ, Bagshaw SM, Bellomo R, Cely CM, Colman R, Cruz DN, et al. Epidemiology of acute kidney injury in critically ill patients: the multinational AKI-EPI study. Intensive Care Med. 2015;41(8):1411–23.CrossRef
5.
go back to reference Lewington A, Cerdá J, Mehta R. Raising awareness of acute kidney injury: a global perspective of a silent killer. Kidney Int. 2013;84(3):457–67.CrossRef Lewington A, Cerdá J, Mehta R. Raising awareness of acute kidney injury: a global perspective of a silent killer. Kidney Int. 2013;84(3):457–67.CrossRef
6.
go back to reference Clec'h C, Darmon M, Lautrette A, Chemouni F, Azoulay E, Schwebel C, et al. Efficacy of renal replacement therapy in critically ill patients: a propensity analysis. Critical care (London, England). 2012;16(6):R236.CrossRef Clec'h C, Darmon M, Lautrette A, Chemouni F, Azoulay E, Schwebel C, et al. Efficacy of renal replacement therapy in critically ill patients: a propensity analysis. Critical care (London, England). 2012;16(6):R236.CrossRef
7.
go back to reference Bai J, Zhao J, Cui D, Wang F, Song Y, Cheng L, et al. Protective effect of hydroxysafflor yellow a against acute kidney injury via the TLR4/NF-κB signaling pathway. Sci Rep. 2018;8(1):9173.CrossRef Bai J, Zhao J, Cui D, Wang F, Song Y, Cheng L, et al. Protective effect of hydroxysafflor yellow a against acute kidney injury via the TLR4/NF-κB signaling pathway. Sci Rep. 2018;8(1):9173.CrossRef
8.
go back to reference Orban J-C, Maizière E-M, Ghaddab A, Van Obberghen E, Ichai C. Incidence and characteristics of acute kidney injury in severe diabetic ketoacidosis. PLoS One. 2014;9(10):e110925.CrossRef Orban J-C, Maizière E-M, Ghaddab A, Van Obberghen E, Ichai C. Incidence and characteristics of acute kidney injury in severe diabetic ketoacidosis. PLoS One. 2014;9(10):e110925.CrossRef
9.
go back to reference Chen J, Zeng H, Ouyang X, Zhu M, Huang Q, Yu W, et al. The incidence, risk factors, and long-term outcomes of acute kidney injury in hospitalized diabetic ketoacidosis patients. BMC Nephrol. 2020;21(1):48.CrossRef Chen J, Zeng H, Ouyang X, Zhu M, Huang Q, Yu W, et al. The incidence, risk factors, and long-term outcomes of acute kidney injury in hospitalized diabetic ketoacidosis patients. BMC Nephrol. 2020;21(1):48.CrossRef
10.
go back to reference Kashani K, Ronco C. Acute kidney injury electronic alert for nephrologist: reactive versus proactive? Blood Purif. 2016;42(4):323–8.CrossRef Kashani K, Ronco C. Acute kidney injury electronic alert for nephrologist: reactive versus proactive? Blood Purif. 2016;42(4):323–8.CrossRef
11.
go back to reference Hursh BE, Ronsley R, Islam N, Mammen C, Panagiotopoulos C. Acute kidney injury in children with type 1 diabetes hospitalized for diabetic ketoacidosis. JAMA Pediatr. 2017;171(5):e170020.CrossRef Hursh BE, Ronsley R, Islam N, Mammen C, Panagiotopoulos C. Acute kidney injury in children with type 1 diabetes hospitalized for diabetic ketoacidosis. JAMA Pediatr. 2017;171(5):e170020.CrossRef
12.
go back to reference Zhou Z-R, Wang W-W, Li Y, Jin K-R, Wang X-Y, Wang Z-W, et al. In-depth mining of clinical data: the construction of clinical prediction model with R. Ann Transl Med. 2019;7(23):796.CrossRef Zhou Z-R, Wang W-W, Li Y, Jin K-R, Wang X-Y, Wang Z-W, et al. In-depth mining of clinical data: the construction of clinical prediction model with R. Ann Transl Med. 2019;7(23):796.CrossRef
13.
go back to reference Johnson AEW, Pollard TJ, Shen L, Lehman L-WH, Feng M, Ghassemi M, et al. MIMIC-III, a freely accessible critical care database. Sci Data. 2016;3:160035.CrossRef Johnson AEW, Pollard TJ, Shen L, Lehman L-WH, Feng M, Ghassemi M, et al. MIMIC-III, a freely accessible critical care database. Sci Data. 2016;3:160035.CrossRef
14.
go back to reference Kellum JA, Lameire N. Diagnosis, evaluation, and management of acute kidney injury: a KDIGO summary (part 1). Crit Care (London, England). 2013;17(1):204.CrossRef Kellum JA, Lameire N. Diagnosis, evaluation, and management of acute kidney injury: a KDIGO summary (part 1). Crit Care (London, England). 2013;17(1):204.CrossRef
15.
go back to reference Beretta L, Santaniello A. Nearest neighbor imputation algorithms: a critical evaluation. BMC Med Inform Decis Making. 2016;1:74.CrossRef Beretta L, Santaniello A. Nearest neighbor imputation algorithms: a critical evaluation. BMC Med Inform Decis Making. 2016;1:74.CrossRef
16.
go back to reference Friedman J, Hastie T, Tibshirani R. Regularization paths for generalized linear models via coordinate descent. J Stat Softw. 2010;33(1):1–22.CrossRef Friedman J, Hastie T, Tibshirani R. Regularization paths for generalized linear models via coordinate descent. J Stat Softw. 2010;33(1):1–22.CrossRef
17.
go back to reference Harrell F, Lee K, Califf R, Pryor D, Rosati R. Regression modelling strategies for improved prognostic prediction. Stat Med. 1984;3(2):143–52.CrossRef Harrell F, Lee K, Califf R, Pryor D, Rosati R. Regression modelling strategies for improved prognostic prediction. Stat Med. 1984;3(2):143–52.CrossRef
18.
go back to reference Vickers A, Cronin A, Elkin E, Gonen M. Extensions to decision curve analysis, a novel method for evaluating diagnostic tests, prediction models and molecular markers. BMC Med Inform Decis Making. 2008;8:53.CrossRef Vickers A, Cronin A, Elkin E, Gonen M. Extensions to decision curve analysis, a novel method for evaluating diagnostic tests, prediction models and molecular markers. BMC Med Inform Decis Making. 2008;8:53.CrossRef
19.
go back to reference Lindenberger M, Lindström T, Länne T. Decreased circulatory response to hypovolemic stress in young women with type 1 diabetes. Diabetes Care. 2013;36(12):4076–82.CrossRef Lindenberger M, Lindström T, Länne T. Decreased circulatory response to hypovolemic stress in young women with type 1 diabetes. Diabetes Care. 2013;36(12):4076–82.CrossRef
20.
go back to reference Martini A, Sfakianos JP, Paulucci DJ, Abaza R, Eun DD, Bhandari A, et al. Predicting acute kidney injury after robot-assisted partial nephrectomy: implications for patient selection and postoperative management. Urol Oncol. 2019;37(7):445–51.CrossRef Martini A, Sfakianos JP, Paulucci DJ, Abaza R, Eun DD, Bhandari A, et al. Predicting acute kidney injury after robot-assisted partial nephrectomy: implications for patient selection and postoperative management. Urol Oncol. 2019;37(7):445–51.CrossRef
21.
go back to reference Basi S, Pupim LB, Simmons EM, Sezer MT, Shyr Y, Freedman S, et al. Insulin resistance in critically ill patients with acute renal failure. Am J Physiol Ren Physiol. 2005;289(2):F259–64.CrossRef Basi S, Pupim LB, Simmons EM, Sezer MT, Shyr Y, Freedman S, et al. Insulin resistance in critically ill patients with acute renal failure. Am J Physiol Ren Physiol. 2005;289(2):F259–64.CrossRef
22.
go back to reference Holgado JL, Lopez C, Fernandez A, Sauri I, Uso R, Trillo JL, et al. Acute kidney injury in heart failure: a population study. ESC Heart Failure. 2020;7(2):415–22.CrossRef Holgado JL, Lopez C, Fernandez A, Sauri I, Uso R, Trillo JL, et al. Acute kidney injury in heart failure: a population study. ESC Heart Failure. 2020;7(2):415–22.CrossRef
23.
go back to reference Deng F, Peng M, Li J, Chen Y, Zhang B, Zhao S. Nomogram to predict the risk of septic acute kidney injury in the first 24 h of admission: an analysis of intensive care unit data. Ren Fail. 2020;42(1):428–36.CrossRef Deng F, Peng M, Li J, Chen Y, Zhang B, Zhao S. Nomogram to predict the risk of septic acute kidney injury in the first 24 h of admission: an analysis of intensive care unit data. Ren Fail. 2020;42(1):428–36.CrossRef
24.
go back to reference Chen Z, McCulloch CE, Powe NR, Heung M, Saran R, Pavkov ME, et al. Exploring reasons for state-level variation in incidence of dialysis-requiring acute kidney injury (AKI-D) in the United States. BMC Nephrol. 2020;21(1):336.CrossRef Chen Z, McCulloch CE, Powe NR, Heung M, Saran R, Pavkov ME, et al. Exploring reasons for state-level variation in incidence of dialysis-requiring acute kidney injury (AKI-D) in the United States. BMC Nephrol. 2020;21(1):336.CrossRef
25.
go back to reference Huang Y, Wan C, Wu G. Acute kidney injury after a stroke: a PRISMA-compliant meta-analysis. Brain Behav. 2020;1:e01722. Huang Y, Wan C, Wu G. Acute kidney injury after a stroke: a PRISMA-compliant meta-analysis. Brain Behav. 2020;1:e01722.
26.
go back to reference Kane-Gill S, Sileanu F, Murugan R, Trietley G, Handler S, Kellum J. Risk factors for acute kidney injury in older adults with critical illness: a retrospective cohort study. Am J Kidney Dis. 2015;65(6):860–9.CrossRef Kane-Gill S, Sileanu F, Murugan R, Trietley G, Handler S, Kellum J. Risk factors for acute kidney injury in older adults with critical illness: a retrospective cohort study. Am J Kidney Dis. 2015;65(6):860–9.CrossRef
27.
go back to reference Cloutier L, Lamarre-Cliche M. Hypertension in adults with type 2 diabetes: a review of blood pressure measurement methods, targets and therapy. Can J Diabetes. 2018;42(2):188–95.CrossRef Cloutier L, Lamarre-Cliche M. Hypertension in adults with type 2 diabetes: a review of blood pressure measurement methods, targets and therapy. Can J Diabetes. 2018;42(2):188–95.CrossRef
28.
go back to reference Greite R, Derlin K, Hensen B, Thorenz A, Rong S, Chen R, et al. Early antihypertensive treatment and ischemia-induced acute kidney injury. Am J Physiol Ren Physiol. 2020;1:319. Greite R, Derlin K, Hensen B, Thorenz A, Rong S, Chen R, et al. Early antihypertensive treatment and ischemia-induced acute kidney injury. Am J Physiol Ren Physiol. 2020;1:319.
29.
go back to reference Umpierrez G, Korytkowski M. Diabetic emergencies - ketoacidosis, hyperglycaemic hyperosmolar state and hypoglycaemia. Nat Rev Endocrinol. 2016;12(4):222–32.CrossRef Umpierrez G, Korytkowski M. Diabetic emergencies - ketoacidosis, hyperglycaemic hyperosmolar state and hypoglycaemia. Nat Rev Endocrinol. 2016;12(4):222–32.CrossRef
30.
go back to reference Infante B, Franzin R, Madio D, Calvaruso M, Maiorano A, Sangregorio F, et al. Molecular mechanisms of AKI in the elderly: from animal models to therapeutic intervention. J Clin Med. 2020;9:8.CrossRef Infante B, Franzin R, Madio D, Calvaruso M, Maiorano A, Sangregorio F, et al. Molecular mechanisms of AKI in the elderly: from animal models to therapeutic intervention. J Clin Med. 2020;9:8.CrossRef
31.
go back to reference Nett S, Noble J, Levin D, Cvijanovich N, Vavilala M, Jarvis J, et al. Biomarkers and genetics of brain injury risk in diabetic ketoacidosis: a pilot study. J Pediatr Intens Care. 2014;3:2. Nett S, Noble J, Levin D, Cvijanovich N, Vavilala M, Jarvis J, et al. Biomarkers and genetics of brain injury risk in diabetic ketoacidosis: a pilot study. J Pediatr Intens Care. 2014;3:2.
32.
go back to reference Guisado R, Arieff AI. Neurologic manifestations of diabetic comas: correlation with biochemical alterations in the brain. Metab Clin Exp. 1975;24(5):665–79.CrossRef Guisado R, Arieff AI. Neurologic manifestations of diabetic comas: correlation with biochemical alterations in the brain. Metab Clin Exp. 1975;24(5):665–79.CrossRef
33.
go back to reference Ramaesh A. Incidence and long-term outcomes of adult patients with diabetic ketoacidosis admitted to intensive care: a retrospective cohort study. J Intensive Care Soc. 2016;17(3):222–33.CrossRef Ramaesh A. Incidence and long-term outcomes of adult patients with diabetic ketoacidosis admitted to intensive care: a retrospective cohort study. J Intensive Care Soc. 2016;17(3):222–33.CrossRef
34.
go back to reference Gallo de Moraes A, Surani S. Effects of diabetic ketoacidosis in the respiratory system. World J Diabetes. 2019;10(1):16–22.CrossRef Gallo de Moraes A, Surani S. Effects of diabetic ketoacidosis in the respiratory system. World J Diabetes. 2019;10(1):16–22.CrossRef
35.
go back to reference Kendrick J, Chonchol M, You Z, Jovanovic A. Lower serum bicarbonate is associated with an increased risk of acute kidney injury. J Nephrol. 2020. Kendrick J, Chonchol M, You Z, Jovanovic A. Lower serum bicarbonate is associated with an increased risk of acute kidney injury. J Nephrol. 2020.
36.
go back to reference Chen JCY, Hu B, Frank RD, Kashani KB. Inpatient kidney function recovery among septic shock patients who initiated kidney replacement therapy in the hospital. Nephron. 2020:1–9. Chen JCY, Hu B, Frank RD, Kashani KB. Inpatient kidney function recovery among septic shock patients who initiated kidney replacement therapy in the hospital. Nephron. 2020:1–9.
37.
go back to reference Calliari LE, Almeida FJ, Noronha RM. Infections in children with diabetes. J Pediatr. 2020;96:39–46.CrossRef Calliari LE, Almeida FJ, Noronha RM. Infections in children with diabetes. J Pediatr. 2020;96:39–46.CrossRef
38.
go back to reference Guan C, Li C, Xu L, Zhen L, Zhang Y, Zhao L, et al. Risk factors of cardiac surgery-associated acute kidney injury: development and validation of a perioperative predictive nomogram. J Nephrol. 2019;32(6):937–45.CrossRef Guan C, Li C, Xu L, Zhen L, Zhang Y, Zhao L, et al. Risk factors of cardiac surgery-associated acute kidney injury: development and validation of a perioperative predictive nomogram. J Nephrol. 2019;32(6):937–45.CrossRef
39.
go back to reference Lei L, Xue Y, Guo Z, Liu B, He Y, Liu J, et al. Nomogram for contrast-induced acute kidney injury in patients with chronic kidney disease undergoing coronary angiography in China: a cohort study. BMJ Open. 2020;10(5):e037256.CrossRef Lei L, Xue Y, Guo Z, Liu B, He Y, Liu J, et al. Nomogram for contrast-induced acute kidney injury in patients with chronic kidney disease undergoing coronary angiography in China: a cohort study. BMJ Open. 2020;10(5):e037256.CrossRef
Metadata
Title
Nomogram to predict the risk of acute kidney injury in patients with diabetic ketoacidosis: an analysis of the MIMIC-III database
Authors
Tingting Fan
Haosheng Wang
Jiaxin Wang
Wenrui Wang
Haifei Guan
Chuan Zhang
Publication date
01-12-2021
Publisher
BioMed Central
Published in
BMC Endocrine Disorders / Issue 1/2021
Electronic ISSN: 1472-6823
DOI
https://doi.org/10.1186/s12902-021-00696-8

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