Table 2_Machine learning-based time-to-event survival analysis in pediatric patients with severe sepsis.xlsx
Background<p>Pediatric sepsis remains a leading cause of mortality in critically ill children worldwide. Current approaches to sepsis prognosis rely on clinical criteria and biomarkers with variable performance. This study aimed to develop and validate time-to-event survival prediction models...
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| Main Author: | Qianru Huang (10575437) (author) |
|---|---|
| Other Authors: | Li Zheng (15952) (author), Ruyi Cai (22481422) (author), Haiyang Chen (380033) (author) |
| Published: |
2025
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