| Literature DB >> 32401985 |
Chao-Yuan Huang1, Fabian Güiza Grandas1, Marine Flechet1, Geert Meyfroidt1.
Abstract
OBJECTIVE: To report on the currently available prediction models for the development of acute kidney injury in heterogeneous adult intensive care units.Entities:
Mesh:
Year: 2020 PMID: 32401985 PMCID: PMC7206939 DOI: 10.5935/0103-507x.20200018
Source DB: PubMed Journal: Rev Bras Ter Intensiva ISSN: 0103-507X
Search strategy
| MeSH term | Title/abstract | |
|---|---|---|
| Acute kidney injury, renal replacement therapy, renal dialysis, renal insufficiency | OR | acute kidney injury, renal insufficiency*, acute renal failure, renal replacement therapy, dialysis*, peritoneal dialysis*, hemodialysis*, hemodiafiltration |
| AND | ||
| Decision support techniques | OR | predict* model, predict* rule, predict* score, prognosis* model, nomogram*, decision rule, risk model*, risk algorithm*, validation, risk index, risk predict*, clinical model |
| AND | ||
| Intensive care units, critical illness | OR | intensive care unit*, critical ill* |
Source: adapted from Wilson T, Quan S, Cheema K, Zarnke K, Quinn R, de Koning L, et al. Risk prediction models for acute kidney injury following major noncardiac surgery: systematic review. Nephrol Dial Transplant. 2016;31(2):231-40. ( MeSH - Medical Subject Headings.
Figure 1Preferred Reporting Items for Systematic Reviews and Meta-Analyses (PRISMA) four-phase flow diagram.(
ICU - intensive care unit; AKI - acute kidney injury.
Comparison of clinical prediction models for early acute kidney injury diagnosis in adult intensive care units
| Characteristic | Characteristic subgroup | Malhotra et al.( | Flechet et al. | Deng et al. | Chiofolo et al.( | Zimmerman et al. |
|---|---|---|---|---|---|---|
| Year of publication | 2017 | 2017 | 2017 | 2019 | 2019 | |
| Sample size | Development cohort | 573 | 2,123 | 1,084 | 4,572 | 19,160 |
| Internal validation cohort | 144 | 2,123 | 1,084 | 1,958 | 4,790 | |
| External validation cohort | 1,300 | 2,367 (independent split set of the original data) | Not applicable | Not applicable | Not applicable | |
| Study type | Prospective or retrospective | Prospective | Retrospective | Prospective | Retrospective | Retrospective |
| Single-center or multicenter | Multicenter | Multicenter | Multicenter | Single-center | Single-center | |
| Patient population | Adult patients admitted to ICU without known AKI at enrollment | Adult patients admitted to ICU without a history of ESRD and a baseline SCr ≥ 4mg/dL | Adult patients admitted to ICU | Adult patients admitted to ICU without ESRD and history of AKI | Adult patients admitted to ICU without CKD and AKI on admission | |
| AKI definition | Criteria | KDIGO SCr criteria | KDIGO SCr criteria | KDIGO SCr and/or UO criteria | AKIN SCr and/or UO criteria | KDIGO SCr criteria |
| Baseline SCr | SCr measurements 7 to 365 days before ICU admission | SCr measurements 1 week to 3 months before | SCr measurements 3 to > 365 days before ICU admission | SCr measurements 180 days before ICU admission | Day1 minimum SCr | |
| Imputed baseline SCr | SCr at ICU admission | MDRD back calculation | SCr at ICU admission, or follow-up up to 365 days | MDRD back calculation | Not applicable since no patients lacked baseline SCr | |
| Incidence of outcome (%) | Development cohort | 22 | 27.7 | 30.1 | 30 | 16.5 |
| Internal validation cohort | 24 | 27.7 | 30.1 | 30 | 16.5 | |
| External validation cohort | 45 | 29.2 (independent split set of the original data) | Not applicable | Not applicable | Not applicable | |
| Missing preadmission SCr values (%) | Development cohort | 24 | 22.8 | 36.0 | Not reported | Not reported |
| Internal validation cohort | 24 | 22.8 | 36.0 | Not reported | Not reported | |
| External validation cohort | 30 | 22.9 (independent split set of the original data) | Not applicable | Not applicable | Not applicable | |
| Timeframe | Collection of risk predictors | Within 48 hours after ICU admission | Within 1 day after ICU admission | Within 1 day after ICU admission | Up to 1 day before the time of prediction | Within 1 day after ICU admission |
| Prediction | Within 1 week after study enrollment | Within 1 week after ICU admission | Within 1 week after ICU enrollment | Every 15 minutes after ICU admission | Within 72 hours after ICU admission | |
| Number of risk factors for any AKI | 10 | 12 | 5 | 19 | 16 | |
| Techniques | Variable selection | Stepwise forward elimination | Backward elimination method | Stepwise method | Stepwise regression algorithm | Backward elimination method |
| Modeling algorithm | MLR | Random forest | ULR and MLR | Random forest | MLR | |
| Internal validation | 5-fold cross-validation | Bootstrapping | Bootstrapping | Random split | 5-fold cross-validation | |
| External validation | Independent prospective cohort | Independent split set of the original data | Not applicable | Not applicable | Not applicable | |
| Discrimination (AUROC) | Development cohort | Not reported | 0.86 (0.86 - 0.86) | 0.821 (0.792 - 0.850) | 0.949 (0.943 - 0.954) | Not reported |
| Internal validation cohort | 0.792 (0.697 - 0.887) | 0.86 (0.86 - 0.86) | 0.821 (0.792 - 0.850) | 0.882 (0.867 - 0.897) | 0.78 | |
| External validation cohort | 0.81 (0.78 - 0.83) | 0.81 (0.81 - 0.81) | Not applicable | Not applicable | Not applicable | |
| Calibration | Development cohort | Not reported | Calibration slope: 0.87 (0.87 - 0.88), | Not applicable | H-L test p-value: | Not applicable |
| Calibration in the large: -0.00, and calibration curve | 0.3, and calibration curve | |||||
| Internal validation cohort | Hosmer-Lemeshow test p-value: 0.293, and calibration curve | Calibration slope: 0.87 (0.87 - 0.88), | Not applicable | Hosmer-Lemeshow test p-value: 0.3, and calibration curve | Not applicable | |
| calibration in the large: -0.00 (-0.01 - 0.00), and calibration curve | ||||||
| External validation cohort | Calibration curve | Calibration slope: 0.78 (0.78 - 0.79), calibration in the large: -0.01 (-0.01 – -0.01), and calibration curve | Not applicable | Not applicable | Not applicable |
ICU - intensive care unit; AKI - acute kidney injury; ESRD - end-stage renal disease; SCr - serum creatinine; CKD - chronic kidney disease; KDIGO - Kidney Disease: Improving Global Outcomes; MDRD - Modification of Diet in Renal Disease; UO - urine output; AKIN - Acute Kidney Injury Network; MLR - multivariate logistic regression; ULR - univariate logistic regression; AUROC - area under the receiver operating characteristics.
Data from Flechet et al. are only reported for the prediction model for any AKI on the first day;
data from Deng et al. are only reported for the prediction model for any AKI;
data from Zimmerman et al. are only reported for the multivariate logistic regression model derived with the backward elimination method.
Comparison between biomarkers, prediction models, and combined models for early acute kidney injury diagnosis in adult intensive care units
| Characteristic | Characteristic sub-groups | Malhotra et al.( | Flechet et al. | Deng et al. | Chiofolo et al.( | Zimmerman et al. |
|---|---|---|---|---|---|---|
| Biomarkers used for comparison | Not applicable | sNGAL | sCysC and uNAG | Not applicable | Not applicable | |
| Discrimination of biomarkers (AUROC) | Not applicable | For NGAL in validation NGAL cohort: 0.74 (0.74 - 0.74) | 0.756 (0.723 - 0.789) | Not applicable | Not applicable | |
| Discrimination of prediction models (AUROC) | Development cohort | Not reported | 0.86 (0.86 - 0.86) | 0.821 (0.792 - 0.850) | 0.949 (0.943 - 0.954) | Not reported |
| Internal validation cohort | 0.792 (0.697 - 0.887) | 0.86 (0.86 - 0.86) | 0.821 (0.792 - 0.850) | 0.882 (0.867 - 0.897) | 0.78 | |
| External validation cohort | 0.81 (0.78 - 0.83) | 0.81 (0.81 - 0.81) | Not applicable | Not applicable | Not applicable | |
| Discrimination of prediction models with biomarkers (AUROC) | Not applicable | For combined model in validation NGAL cohort: 0.80 (0.80 - 0.80) | 0.836 (0.808 - 0.864) | Not applicable | Not applicable |
sNGAL - serum neutrophil gelatinase-associated lipocalin; sCysC - serum cystatin C; uNAG - urinary N-acetyl-β-D-glucosaminidase; AUROC - area under the receiver operating characteristics; NGAL - neutrophil gelatinase-associated lipocalin.
Data from Flechet et al. are only reported for the prediction model for any acute kidney injury on the first day;
data from Deng et al. are only reported for the prediction model for any acute kidney injury;
data for Zimmerman et al. are only reported for the multivariate logistic regression model derived with backward selection.
Risk factors used in clinical prediction models for acute kidney injury in the intensive care unit across studies
| Characteristics | Malhotra et al.( | Flechet et al. | Deng et al. | Chiofolo et al.( | Zimmerman et al. | Total |
|---|---|---|---|---|---|---|
| Demographic variables | ||||||
| Age | ✓ | ✓ | ✓ | 3 | ||
| Gender | ✓ | ✓ | 2 | |||
| Ethnicity | ✓ | 1 | ||||
| Chronic variables | ||||||
| Baseline SCr | ✓ | 1 | ||||
| Hypertension | ✓ | 1 | ||||
| Diabetes | ✓ | 1 | ||||
| Chronic kidney disease | ✓ | 1 | ||||
| Chronic liver disease | ✓ | ✓ | 2 | |||
| Congestive heart failure | ✓ | 1 | ||||
| Atherosclerotic coronary vascular disease | ✓ | 1 | ||||
| Acute variables | ||||||
| pH value | ✓ | ✓ | 2 | |||
| Mechanical ventilation | ✓ | ✓ | 2 | |||
| Hemoglobin level | ✓ | ✓ | 2 | |||
| Surgical medical category | ✓ | 1 | ||||
| Planned admission | ✓ | ✓ | 2 | |||
| Blood glucose upon ICU admission | ✓ | 1 | ||||
| Hemodynamic support upon ICU admission | ✓ | 1 | ||||
| Maximum lactate | ✓ | 1 | ||||
| Bilirubin | ✓ | 1 | ||||
| Creatinine level | ✓ | ✓ | ✓ | 3 | ||
| APACHE II score | ✓ | 1 | ||||
| Nephrotoxic drugs | ✓ | 1 | ||||
| Sepsis | ✓ | ✓ | ✓ | 3 | ||
| Blood urea nitrogen | ✓ | ✓ | 2 | |||
| Noninvasive diastolic blood pressure | ✓ | 1 | ||||
| Temperature | ✓ | 1 | ||||
| Noninvasive mean arterial blood pressure | ✓ | 1 | ||||
| Hematocrit | ✓ | 1 | ||||
| Sodium level | ✓ | 1 | ||||
| Potassium level | ✓ | ✓ | 2 | |||
| Calcium level | ✓ | 1 | ||||
| Estimated GFR | ✓ | ✓ | 2 | |||
| Median urine output at 12 hours | ✓ | 1 | ||||
| Median urine output at 24 hours | ✓ | 1 | ||||
| Shock index based on noninvasive diastolic blood pressure | ✓ | 1 | ||||
| Shock index based on invasive diastolic blood pressure | ✓ | 1 | ||||
| Pulse pressure | ✓ | 1 | ||||
| Delivered tidal volume | ✓ | 1 | ||||
| Partial pressure of arterial oxygen to fraction of inspired oxygen ratio | ✓ | 1 | ||||
| Net fluid balance | ✓ | 1 | ||||
| Cumulative dose of normal saline | ✓ | 1 | ||||
| Systolic blood pressure | ✓ | 1 | ||||
| SpO2 | ✓ | 1 | ||||
| Bicarbonate level | ✓ | 1 | ||||
| Platelet count | ✓ | 1 | ||||
| Partial thromboplastin time | ✓ | 1 | ||||
| International normalized ratio | ✓ | 1 |
SCr - serum creatinine; ICU - intensive care unit; APACHE - Acute Physiology and Chronic Health Evaluation; GFR - glomerular filtration rate; SpO2: oxygen saturation.
Data from Flechet et al. are only reported for the prediction model for any acute kidney injury on the first day;
data from Deng et al. are only reported for the prediction model for any acute kidney injury;
data from Zimmerman et al. are only reported for the multivariate logistic regression model derived with backward selection.