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一种用于预测肝素治疗后活化部分凝血活酶时间的递归神经网络模型:回顾性研究

A Recurrent Neural Network Model for Predicting Activated Partial Thromboplastin Time After Treatment With Heparin: Retrospective Study.

作者信息

Boie Sebastian Daniel, Engelhardt Lilian Jo, Coenen Nicolas, Giesa Niklas, Rubarth Kerstin, Menk Mario, Balzer Felix

机构信息

Charité - Universitätsmedizin Berlin, corporate member of Freie Universität Berlin and Humboldt-Universität zu Berlin, Institute of Medical Informatics, Berlin, Germany.

Charité - Universitätsmedizin Berlin, corporate member of Freie Universität Berlin and Humboldt-Universität zu Berlin, Department of Anesthesiology and Intensive Care Medicine, Berlin, Germany.

出版信息

JMIR Med Inform. 2022 Oct 13;10(10):e39187. doi: 10.2196/39187.

Abstract

BACKGROUND

Anticoagulation therapy with heparin is a frequent treatment in intensive care units and is monitored by activated partial thromboplastin clotting time (aPTT). It has been demonstrated that reaching an established anticoagulation target within 24 hours is associated with favorable outcomes. However, patients respond to heparin differently and reaching the anticoagulation target can be challenging. Machine learning algorithms may potentially support clinicians with improved dosing recommendations.

OBJECTIVE

This study evaluates a range of machine learning algorithms on their capability of predicting the patients' response to heparin treatment. In this analysis, we apply, for the first time, a model that considers time series.

METHODS

We extracted patient demographics, laboratory values, dialysis and extracorporeal membrane oxygenation treatments, and scores from the hospital information system. We predicted the numerical values of aPTT laboratory values 24 hours after continuous heparin infusion and evaluated 7 different machine learning models. The best-performing model was compared to recently published models on a classification task. We considered all data before and within the first 12 hours of continuous heparin infusion as features and predicted the aPTT value after 24 hours.

RESULTS

The distribution of aPTT in our cohort of 5926 hospital admissions was highly skewed. Most patients showed aPTT values below 75 s, while some outliers showed much higher aPTT values. A recurrent neural network that consumes a time series of features showed the highest performance on the test set.

CONCLUSIONS

A recurrent neural network that uses time series of features instead of only static and aggregated features showed the highest performance in predicting aPTT after heparin treatment.

摘要

背景

肝素抗凝治疗是重症监护病房常用的治疗方法,通过活化部分凝血活酶时间(aPTT)进行监测。已有研究表明,在24小时内达到既定的抗凝目标与良好的治疗效果相关。然而,患者对肝素的反应存在差异,达到抗凝目标可能具有挑战性。机器学习算法可能有助于临床医生做出更优化的给药建议。

目的

本研究评估了一系列机器学习算法预测患者对肝素治疗反应的能力。在本分析中,我们首次应用了一种考虑时间序列的模型。

方法

我们从医院信息系统中提取了患者的人口统计学数据、实验室检查值、透析和体外膜肺氧合治疗以及评分。我们预测了持续输注肝素24小时后的aPTT实验室检查值的数值,并评估了7种不同的机器学习模型。将表现最佳的模型与最近发表的用于分类任务的模型进行比较。我们将持续输注肝素前12小时内及之前的所有数据作为特征,并预测24小时后的aPTT值。

结果

在我们纳入的5926例住院患者队列中,aPTT的分布高度不均衡。大多数患者的aPTT值低于75秒,而一些异常值的aPTT值则高得多。一个消耗特征时间序列的循环神经网络在测试集上表现出最高的性能。

结论

一个使用特征时间序列而非仅使用静态和汇总特征的循环神经网络在预测肝素治疗后的aPTT方面表现出最高的性能。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/df9e/9614623/5778a25c833d/medinform_v10i10e39187_fig1.jpg

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