Early Prediction of Sepsis From Clinical Data Using Single Light-GBM Model

S. Chami, K. Tavakolian
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引用次数: 6

Abstract

Sepsis is a severe medical condition caused by body’s extreme response to an infection leading to tissue damage, organ failure, and even death. The emergence of advanced technologies such as Artificial Intelligence and machine learning, allowed faster exploration of advanced way to recognize sepsis cases. In this paper, we present two main approaches that have been tested using the clinical data. The first method is the combination of survival analysis and neural networks, and the second one is based on booting trees. Our team participated under the name of BERCLAB UND. The proposed model obtained 0.172 on holdout set and 0.005 on the full test set with ranking of 69.
利用单一光- gbm模型从临床数据早期预测脓毒症
败血症是一种严重的疾病,由身体对感染的极端反应引起,导致组织损伤、器官衰竭,甚至死亡。人工智能和机器学习等先进技术的出现,使人们能够更快地探索识别败血症病例的先进方法。在本文中,我们提出了两种主要的方法,已经使用临床数据进行了测试。第一种方法是生存分析和神经网络的结合,第二种方法是基于启动树的方法。我们的团队以BERCLAB UND的名义参加了比赛。该模型在拒绝集上获得0.172,在完整测试集上获得0.005,排名为69。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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