2024
DOI: 10.1038/s41598-024-78482-4
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Iterative random forest-based identification of a novel population with high risk of complications post non-cardiac surgery

Tomohisa Seki,
Toru Takiguchi,
Yu Akagi
et al.

Abstract: Assessing the risk of postoperative cardiovascular events before performing non-cardiac surgery is clinically important. The current risk score systems for preoperative evaluation may not adequately represent a small subset of high-risk populations. Accordingly, this study aimed at applying iterative random forest to analyze combinations of factors that could potentially be clinically valuable in identifying these high-risk populations. To this end, we used the Japan Medical Data Center database, which include… Show more

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