水准点(测量)
重症监护
预处理器
计算机科学
败血症
重症监护医学
队列
机械通风
医学
重症监护室
机器学习
数据挖掘
插补(统计学)
队列研究
人工智能
数据预处理
稳健性(进化)
临床试验
杠杆(统计)
医疗保健
预测建模
休克(循环)
感染性休克
标杆管理
梅德林
急诊医学
一致性
SAPS II型
作者
Yong Huang,Zhongqi Yang,Amir Rahmani
标识
DOI:10.1109/bhi67747.2025.11269536
摘要
Sepsis is a leading cause of mortality in intensive care units (ICUs), yet existing research often relies on outdated datasets, non-reproducible preprocessing pipelines, and limited coverage of clinical interventions. We introduce MIMIC-Sepsis, a curated cohort and benchmark framework derived from the MIMIC-IV database, designed to support reproducible modeling of sepsis trajectories. Our cohort includes 35,239 ICU patients with time-aligned clinical variables and standardized treatment data, including vasopressors, fluids, mechanical ventilation and antibiotics. We describe a transparent preprocessing pipeline—based on Sepsis-3 criteria, structured imputation strategies, and treatment inclusion—and release it alongside benchmark tasks focused on early mortality prediction, length-of-stay estimation, and shock onset classification. Empirical results demonstrate that incorporating treatment variables substantially improves model performance, particularly for Transformer-based architectures. MIMIC-Sepsis serves as a robust platform for evaluating predictive and sequential models in critical care research.
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