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Significance of platelets in the early warning of new-onset AKI in the ICU by using supervise learning: a retrospective analysis. | LitMetric

Significance of platelets in the early warning of new-onset AKI in the ICU by using supervise learning: a retrospective analysis.

Ren Fail

Department of Critical Care Medicine, State Key Laboratory of Complex Severe and Rare Diseases, Peking Union Medical College Hospital, Peking Union Medical College and Chinese Academy of Medical Sciences, Beijing, China.

Published: December 2023

Objective: To explore a machine learning model for the early prediction of acute kidney injury (AKI) and to screen the related factors affecting new-onset AKI in the ICU.

Methods: A retrospective analysis was performed used the MIMIC-III data source. New onset of AKI defined based on the serum creatinine changed. We included 19 variables for AKI assessment using four machine learning models: support vector machines, logistic regression, and random forest. and XGBoost, using accuracy, specificity, precision, recall, F1 score, and AUROC (area under the ROC curve) to evaluate model performance. The four models predicted new-onset AKI 3-6-9-12 h ahead. The SHapley Additive exPlanation (SHAP) value is used to evaluate the feature importance of the model.

Results: We finally respectively extracted 1130 AKI patients and non-AKI patients from the MIMIC-III database. With the extension of the early warning time, the prediction performance of each model showed a downward trend, but the relative performance was consistent. The prediction performance comparison of the four models showed that the XGBoost model performed the best in all evaluation indicators in all the time point at new-onset AKI 3-6-9-12 h ahead (accuracy 0.809 vs 0.78 vs 0.744 vs 0.741, specificity 0.856 vs 0.826 vs 0.797 vs 0.787, precision 0.842 vs 0.81 vs 0.775 vs 0.766, recall 0.759 vs 0.734 vs 0.692 vs 0.694, Fl score 0.799 vs 0.769 vs 0.731 vs 0.729, AUROC 0.892 vs 0.857 vs 0.827 vs 0.818). In the prediction of AKI 6, 9 and 12 h ahead, the importance of creatinine, platelets, and height was the most important based on SHapley.

Conclusions: The machine learning model described in this study can predict AKI 3-6-9-12 h before the new-onset of AKI in ICU. In particular, platelet plays an important role.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC10075490PMC
http://dx.doi.org/10.1080/0886022X.2023.2194433DOI Listing

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