| Literature DB >> 32138284 |
Joana Gameiro1, Tiago Branco2, José António Lopes1.
Abstract
Acute kidney injury (AKI) is a frequent complication in hospitalized patients, which is associated with worse short and long-term outcomes. It is crucial to develop methods to identify patients at risk for AKI and to diagnose subclinical AKI in order to improve patient outcomes. The advances in clinical informatics and the increasing availability of electronic medical records have allowed for the development of artificial intelligence predictive models of risk estimation in AKI. In this review, we discussed the progress of AKI risk prediction from risk scores to electronic alerts to machine learning methods.Entities:
Keywords: acute kidney injury; artificial intelligence; risk prediction
Year: 2020 PMID: 32138284 PMCID: PMC7141311 DOI: 10.3390/jcm9030678
Source DB: PubMed Journal: J Clin Med ISSN: 2077-0383 Impact factor: 4.241
Machine learning studies on acute kidney injury (AKI) prediction.
| Study | Design | Setting | N | AKI Definition | Timing of AKI | ML Algorithm | Predictive Ability | Sensitivity; Specificity; Confidence Interval | External Validation |
|---|---|---|---|---|---|---|---|---|---|
| Kate et al. (2016) | retrospective | medical and surgical | 25,521 | AKIN | during hospitalization | naïve Bayes; | AUROC | 75%; | no |
| Thottakkara et al. (2016) | retrospective | surgical | 50,318 | KDIGO | post surgery | naïve Bayes; | AUROC | 77%; | no |
| Davis et al. (2017) | retrospective | medical and surgical | 2003 | KDIGO | during hospitalization | random forest; | AUROC 0.730 | -; | no |
| Cheng et al. (2018) | retrospective | medical and surgical | 60,534 | KDIGO, AKIN, RIFLE | during hospitalization | random forest; | AUROC 0.765 | 69%; | no |
| Ibrahim et al. (2018) | prospective | contrast | 889 | KDIGO | pre and post intervention | logistic regression | AUROC 0.790 | 77%; | no |
| Koola et al. (2018) | retrospective | medical and surgical | 504 | KDIGO | during hospitalization | logistic regression; | AUROC 0.930 | 87%; | no |
| Lin et al. (2018) | retrospective | ICU | 19,044 | KDIGO | during hospitalization | support vector machine | AUROC 0.860 | - | no |
| Koyner et al. (2018) | retrospective | medical and surgical | 121,158 | KDIGO | 24 h post admission | gradient boosting | AUROC 0.900 | 95% CI | no |
| Huang et al. (2018) | retrospective | PCI | 947,091 | AKIN | during hospitalization | gradient boost; | AUROC 0.728 | -; | no |
| Huang et al. (2019) | retrospective | PCI | 2,076,694 | AKIN | pre and post intervention | generalized additive model | AUROC 0.777 | -; | no |
| Tomašev et al. (2019) | retrospective | medical and surgical | 703,782 | KDIGO | during hospitalization | recurrent neural network | AUROC 0.921 | 95%; | no |
| Adhikari et al. (2019) | retrospective | surgical | 2901 | KDIGO | post surgery | random forest | AUROC 0.860 | 68%; | no |
| Flechet et al. (2019) | prospective | ICU | 252 | KDIGO | during hospitalization | random forest | AUROC 0.780 | -; | no |
| Parreco et al. (2019) | retrospective | medical and surgical | 151,098 | KDIGO | during hospitalization | gradient boosting; | AUROC 0.834 | -; | no |
| Xu et al. (2019) | retrospective | medical and surgical | 58,976 | KDIGO | during hospitalization | gradient boosting | AUROC 0.749 | - | no |
| Tran et al. (2019) | prospective | burn | 50 | KDIGO | during hospitalization | k-nearest neighbor | AUROC 0.920 | 90%; | no |
| Zhang et al. (2019) | retrospective | ICU | 6682 | KDIGO | 24 h post admission | gradient boosting | AUROC 0.860 | -; | no |
| Zimmerman et al. (2019) | retrospective | ICU | 46,000 | KDIGO | 72 h post admission | logistic regression; | AUROC 0.783 | 68%; | no |
| Rashidi et al. (2020) | retrospective and prospective | burn and trauma | 50/51 | KDIGO vs New Biomarkers | 1st week post ICU admission | recurrent neural network | AUROC 0.920 | -; | no |
AKI-acute kidney injury, AKIN-acute kidney injury network, AUROC-area under the receiver operating characteristic curve, ICU-intensive care unit, KDIGO-kidney disease improving global outcomes, ML-machine learning, PCI-percutaneous coronary intervention, RIFLE-risk, injury, failure, loss of kidney function, end-stage kidney disease.