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Machine learning approach using routine immediate postoperative laboratory values for predicting postoperative mortality

Authors
Cho, J | Park, J | Jeong, E | Shin, J | Ahn, S | Park, MG | Park, RW  | Park, Y
Citation
Journal of personalized medicine, 11(12). : 1271-1271, 2021
Journal Title
Journal of personalized medicine
ISSN
2075-4426
Abstract
Background: Several prediction models have been proposed for preoperative risk stratifica-tion for mortality. However, few studies have investigated postoperative risk factors, which have a significant influence on survival after surgery. This study aimed to develop prediction models using routine immediate postoperative laboratory values for predicting postoperative mortality. Methods: Two tertiary hospital databases were used in this research: one for model development and another for external validation of the resulting models. The following algorithms were utilized for model development: LASSO logistic regression, random forest, deep neural network, and XGBoost. We built the models on the lab values from immediate postoperative blood tests and compared them with the SASA scoring system to demonstrate their efficacy. Results: There were 3817 patients who had immediate postoperative blood test values. All models trained on immediate postoperative lab values outperformed the SASA model. Furthermore, the developed random forest model had the best AUROC of 0.82 and AUPRC of 0.13, and the phosphorus level contributed the most to the random forest model. Conclusions: Machine learning models trained on routine immediate postoperative laboratory values outperformed previously published approaches in predicting 30-day postoperative mortality, indicating that they may be beneficial in identifying patients at increased risk of postoperative death.
Keywords

DOI
10.3390/jpm11121271
PMID
34945743
Appears in Collections:
Journal Papers > School of Medicine / Graduate School of Medicine > Biomedical Informatics
Ajou Authors
박, 래웅
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