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A Comparison of Machine Learning Tools for Early Prediction of Sepsis from ICU Data

机译:利用ICU数据进行脓毒症早期预测的机器学习工具比较

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We explore the efficacy of modern machine learning methods for the task of modeling sepsis progression. We applied a novel imputation and feature selection scheme based on signal processing technology and our medical expertise. We compared the performance of several approaches including neural networks, sparse quantile regression, and baseline classification algorithms such as random forest and SVMs. Among all the experimented methods, CNN-LSTM neural network performed the best with the full test utility score of the challenge being 0.076. We conclude that the application of neural network, random forest, sparse quantile regression, neighborhood algorithms, and naive Bayes classifiers yields superior performance with respect to accuracy, sensitivity, and specificity. [Team: Sepsis ReSepsion]
机译:我们探索现代机器学习方法对败血症进展建模任务的功效。我们基于信号处理技术和我们的医学专业知识应用了一种新颖的归因和特征选择方案。我们比较了几种方法的性能,包括神经网络,稀疏分位数回归和基线分类算法(例如随机森林和SVM)。在所有实验方法中,CNN-LSTM神经网络表现最佳,挑战的完整测试效用得分为0.076。我们得出的结论是,神经网络,随机森林,稀疏分位数回归,邻域算法和朴素贝叶斯分类器的应用在准确性,敏感性和特异性方面产生了卓越的性能。 [团队:败血症重生]

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