脓毒症的比例特征诊断

Shivnarayan Patidar
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引用次数: 3

摘要

脓毒症的早期预测对于在早期阶段提供最佳护理至关重要。这项工作的目的是利用机器学习进行脓毒症的早期预测,使用比率和基于功率的特征转换。通过应用基于遗传算法(GA)的方法对特征转换和特征选择过程进行优化,从给定的原始患者协变量中提取败血症特定的信息,从而在效用评分方面最大化底层分类性能。提出的方法从填充训练数据集中的缺失值开始。然后,策略性地应用遗传算法从原始患者协变量中识别影响比例和基于功率的特征。将效用分数最大化作为优化的目标。在优化过程中,RusBoost与默认设置一起用于底层分类。随后,用一组55个已识别的特征开发了最优RusBoost模型。利用2019年PhysioNet/CinC挑战数据集对所提出的方法进行独立性能评估,在完全隐藏测试数据上的效用得分为30.9%,正式达到第19位。这个作品以shivpatdar的形式出现在排行榜上。该预警系统在危重病临床具有潜在的应用价值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Diagnosis of Sepsis Using Ratio Based Features
Early prediction of sepsis is of utmost importance to provide optimal care at an early stage. This work aims to use machine learning for early prediction of sepsis using ratio and power-based feature transformation. The feature transformation and feature selection process is optimized by applying a genetic algorithm (GA) based approach to extract the information specific to the sepsis from the given raw patient covariates that maximizes the underlying classification performance in terms of utility score. The proposed method begins with filling the missing values in the training dataset. Then, GA is applied strategically to identify influential ratio and power-based features from the raw patient covariates. The utility score is maximized as an objective of the optimization. RusBoost is used with default settings for underlying classification during optimization. Subsequently, an optimal RusBoost model is developed with a set of 55 identified features. Independent performance evaluation of the proposed method with the 2019 PhysioNet/CinC Challenge dataset has officially achieved 19th rank with a utility score of 30.9% on the full hidden test data. This work appears as Shivpatidar on the leader-board. The proposed early warning system has potential clinical value in critical care clinics.
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