基于生命时间序列特征的脓毒症早期预测

Qiang Yu, Xiaolin Huang, Weifeng Li, Cheng Wang, Ying Chen, Yun Ge
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引用次数: 1

摘要

为了对脓毒症进行早期预测,我们建议提取更多保留潜在生物医学动态系统时间演化信息的时变特征,包括微分、积分、时变统计、变异和卷积。考虑到训练集中两类不平衡的情况,采用简易集成算法得到多个基学习器。对于基础学习器,我们尝试了三种模型:random forest, XGBoost和LightGBM。通过提升多个基学习器的结果,我们构建了集成模型。我们的团队名字是njuedu,在官方测试中排名第25位,在全测试集中得分为0.282。由于提交的模型版本只使用了训练集A来训练我们的模型,所以模型在测试集A的得分更高,为0.401,在测试集B的得分为0.278,在测试集C的得分仅为-0.207分。
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Using Features Extracted From Vital Time Series for Early Prediction of Sepsis
To get early prediction of sepsis, we propose to extract more time-dependent characteristics that retain the temporal evolvement information of the underlying biomedical dynamic system, including differential, integration, time-dependent statistics, variations and convolutions.Considering that two categories are unbalanced in the training set, we employed easy ensemble algorithm to get multiple base learners. As for the base learner, we tried three models: random forest, XGBoost and LightGBM. By boosting the results of multiple base learners, we constructed our ensemble model.Our team which name is njuedu ranked 25th in the official test and scored 0.282 in full test set.Since the submitted model version only used training set A to train our model, the model had a higher score of 0.401 in test set A, and 0.278 in test set B, and only -0.207 points in test set C.
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