利用信息缺失进行败血症的早期预测

Janmajay Singh, Kentaro Oshiro, R. Krishnan, Masahiro Sato, T. Ohkuma, N. Kato
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引用次数: 5

摘要

目的:医生必须对ICU患者的健康做出常规的关键决定。脓毒症影响约35%的ICU患者,导致约25%的患者死亡。在本文中,我们旨在通过研究生理变量的缺失,并结合数据的整体趋势来预测脓毒症的早期发生。方法:选择XGBoost作为基础模型,通过改变超参数、窗口大小和插补方法进行了多种尝试。为了进一步改进模型,我们使用掩蔽向量来表示数据集中缺失的特征。其他修改包括将脓毒症标签转移到更早的时间步长,并调整分类概率阈值,以进一步提高模型的性能。结果:滑动窗口大小为5的XGBoost模型,没有输入,利用所有时间变量的信息缺失,并在最优前3小时移动的标签上进行训练,在整个测试集上获得了0.337的效用分数。我们在挑战赛中被认定为“CTL-Team”,并在此基础上正式排名第五。
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Utilizing Informative Missingness for Early Prediction of Sepsis
Aims: Physicians have to routinely make crucial decisions about patients’ health in the ICU. Sepsis affects about 35% of ICU patients, killing approximately 25% of the afflicted. In this paper, we aim to predict the occurrence of sepsis early by studying the missingness of physiological variables and using it with the overall trends in data.Methods: We chose XGBoost as our base model and tried several variations by changing hyperparameters, window sizes and imputation methods. To further improve the model, we used masking vectors to represent the missingness of features in the dataset. Additional modifications include shifting the Sepsis Label to earlier time steps and tuning the classification probability threshold to further improve the model’s performance.Results: The XGBoost model with a sliding window of size 5, no imputation, utilizing informative missingness of all temporal variables and trained on labels shifted by 3 hours before toptimal, achieved a Utility Score of 0.337 on the full test set. We identified as "CTL-Team" in the challenge and were officially ranked 5th on the basis of this score.
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