Predicting Prolonged Hospital Stays in Elderly Patients With Hip Fractures Managed During the COVID-19 Pandemic in Chile: An Artificial Neural Networks Study.

Pub Date : 2023-05-01 DOI:10.1177/15563316221120582
Claudio Diaz-Ledezma, Rodrigo Mardones
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引用次数: 1

Abstract

Background: Prolonged length of stay (LOS) after a hip fracture is associated with increased mortality. Purpose: We sought to create a model to predict prolonged LOS in elderly Chilean patients with hip fractures managed during the COVID-19 pandemic. Methods: Employing an official database, we created an artificial neural network (ANN), a computational model corresponding to a subset of machine learning, to predict prolonged LOS (≥14 days) among 2686 hip fracture patients managed in 43 Chilean public hospitals during 2020. We identified 18 clinically relevant variables as potential predictors; 80% of the sample was used to train the ANN and 20% was used to test it. The performance of the ANN was evaluated via measuring its discrimination power through the area under the curve of the receiver operating characteristic curve (AUC-ROC). Results: Of the 2686 patients, 820 (30.2%) had prolonged LOS. In the training sample (2,125 cases), the ANN correctly classified 1,532 cases (72.09%; AUC-ROC: 0.745). In the test sample (561 cases), the ANN correctly classified 401 cases (71.48%; AUC-ROC: 0.742). The most relevant variables to predict prolonged LOS were the patient's admitting hospital (relative importance [RI]: 0.11), the patient's geographical health service providing health care (RI: 0.11), and the patient's surgery being conducted within 2 days of admission (RI: 0.10). Conclusions: Using national-level big data, we developed an ANN that predicted with fair accuracy prolonged LOS in elderly Chilean patients with hip fractures during the COVID-19 pandemic. The main predictors of a prolonged LOS were unrelated to the patient's individual health and concerned administrative and organizational factors.

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预测在智利COVID-19大流行期间髋部骨折的老年患者延长住院时间:一项人工神经网络研究。
背景:髋部骨折后延长住院时间(LOS)与死亡率增加有关。目的:我们试图建立一个模型来预测2019冠状病毒病大流行期间髋部骨折的智利老年患者的长期LOS。方法:利用官方数据库,我们创建了一个人工神经网络(ANN),这是一个与机器学习子集相对应的计算模型,用于预测2020年智利43家公立医院管理的2686名髋部骨折患者延长的LOS(≥14天)。我们确定了18个临床相关变量作为潜在的预测因子;80%的样本用于训练人工神经网络,20%用于测试。通过受试者工作特征曲线(AUC-ROC)曲线下面积测量其识别能力来评价人工神经网络的性能。结果:2686例患者中,820例(30.2%)出现延长的LOS。在训练样本(2125例)中,人工神经网络正确分类了1532例(72.09%;AUC-ROC: 0.745)。在561例样本中,人工神经网络正确分类401例(71.48%);AUC-ROC: 0.742)。预测长期LOS的最相关变量是患者的入院医院(相对重要性[RI]: 0.11)、患者提供医疗保健的地理卫生服务(RI: 0.11)以及患者在入院后2天内进行的手术(RI: 0.10)。结论:利用国家级大数据,我们开发了一种人工神经网络,可以相当准确地预测2019冠状病毒病大流行期间智利老年髋部骨折患者延长的LOS。延长LOS的主要预测因素与患者的个人健康无关,而与行政和组织因素有关。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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