基于传统统计回归模型的脓毒症早期检测算法

Roshan Pawar, J. Bone, J. Ansermino, M. Görges
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引用次数: 1

摘要

脓毒症是许多感染的最后常见途径,人体的免疫反应会导致器官衰竭,最终导致死亡。它与高死亡率有关,如果存活下来,发病率也很高。早期发现对改善结果至关重要。然而,也需要避免高虚警率。本研究的目的是开发和评估一种早期败血症检测的简单算法。在数据集中遇到重要的缺失数据,将其向前填充或替换为总体均值。临床相关的变量组合与转化特征一起加入,包括二分类、z分数、一阶导数和基线变化。采用逻辑回归模型识别候选特征,构建总体风险评分函数进行预测。三个测试数据集的最终候选得分在受试者工作特征曲线下的面积分别为0.747、0.760和0.783。它的准确率分别为0.795、0.889和0.815,使用0.024的截止值,整个测试集的总体效用得分为0.249。评估表明进一步优化的潜力巨大,包括减少假阳性预测。添加捕捉随时间变化的特性有望为进一步的研究提供范围。
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An Algorithm for Early Detection of Sepsis Using Traditional Statistical Regression Modeling
Sepsis is the final common pathway for many infections, whereby the body’s immune response leads to organ failure, and eventually death. It is associated with high mortality rates and, if survived, significant morbidity. Early detection is imperative to improve outcomes. Yet, there is also a need to avoid a high false alarm rate. The aim of this study was to develop and evaluate a simple algorithm for early sepsis detection.Significant missing data were encountered in the dataset, which were forward-filled or substituted with population means. Clinically relevant variable combinations were added along with transformation features including dichotomization, z-scores, first derivative, and changes from baseline. A logistic regression model was used to identify candidate features and build the overall risk score function for prediction.The final candidate score had areas under the receiver operating characteristic curve of 0.747, 0.760, and 0.783 for the three test data sets. It had accuracies of 0.795, 0.889, 0.815, respectively, and an overall utility score for the full test set of 0.249 using a cutoff of 0.024.Evaluation indicated significant potential for further optimization, including reduction of false-positive predictions. Adding features capturing change over time is expected to provide scope for further investigation.
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