改进脓毒症早期预测的神经网络性能

ByeongTak Lee, Kyung-Jae Cho, Oyeon Kwon, Yeha Lee
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引用次数: 2

摘要

脓毒症的早期预测在临床上很重要,但仍然具有挑战性。随着机器学习的发展,已经有许多方法可以使用基于神经网络的模型来预测败血症。在这项工作中,我们提出了多种方法,包括特征工程,正则化技术和训练数据采样方法,可以提高模型的性能。我们的方法由三个部分组成:特征工程、辅助损失和训练分布的操纵。在特征工程中,我们采用了一种结合输入衰减、掩蔽、缺失持续时间和输入变换的新颖输入输入方法。对于正则化,我们使用重构误差作为辅助损失。同时,我们采用正态点重抽样和基于总体抽样的方法对训练样本的分布进行了处理。在验证集上,我们的方法将LSTM的性能提高到AUROC/AUPRC为0。0.045 /0.017,提高了变压器的AUROC/AUPRC为0.034/0.024。最后,我们将用所提出的方法训练的变压器提交到官方测试集中,得到了0.291的效用分数(Team name:vn, Rank:23)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improving the Performance of a Neural Network for Early Prediction of Sepsis
Early prediction of sepsis is a clinically important, yet remains challenging. As machine learning develops, there have been many approaches for prediction of sepsis using neural network-based models. In this work, We propose various methods including feature engineering, regularization technique, and train data sampling methods, which can boost the performance of the model. Our approach consist of three-component: a feature engineering, an auxiliary loss, and a manipulation of training distribution. In feature engineering, we employed a novel input imputation method that combines input decay, masking, and duration of missing and input transformation. As for regularization, we used the reconstruction error as the auxiliary loss. Meanwhile, we manipulated the distribution of training sample using normal point re-sampling and population-based sampling. On the validation set, our approach improved the performance of LSTM as AUROC/AUPRC of 0. 045/0.017, and the performance of transformer is enhanced AUROC/AUPRC of 0.034/0.024. Finally, we submitted our transformer trained with proposed method on the official test set and obtained the utility score of 0.291 (Team name:vn, Rank:23).
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