用数据科学分析新生儿护理单位的住院时间——初步结果

J. Cordeiro, O. Postolache
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引用次数: 1

摘要

本文介绍了新生儿重症监护病房的住院时间(LOS)分析的初步结果,以10年数据集为基础,其中包括来自所有新生儿葡萄牙单位的数据。与基于统计分析的传统研究不同,本研究使用数据科学技术,包括机器学习超参数优化自动化和可解释的人工智能(XAI)工具,来了解因素的相关性及其对LOS的影响。本文设计并实现了一个精确的LOS预测模型,其结果已在文中发表。通过XAI技术的应用,已经有可能确认最新研究所声称的见解,即出生体重和胎龄对LOS的重要性以及医院获得性感染的重要性。该工作新颖地提出了这些因素的权重(量化),并引入了两个新的因素,这是迄今为止没有考虑到的。该研究是正在进行的工作的一部分,并将继续为更好地投资新生儿护理单位的LOS提供更好的见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Length of Stay Analysis at Neonatal Care Units with Data Science - Preliminary Results
The paper presents preliminary results to the length-of-stay (LOS) analysis on neonatal intensive care units, taking as base a 10 year dataset that encompasses data from all neonatal Portuguese units. Unlike conventional studies based on statistical analysis, this investigation uses data science techniques, including machine learning hyperparameters optimization automatization and explainable artificial intelligence (XAI) tools, to understand the relevance of factors and their impact on LOS. In this work was designed and implemented an accurate LOS prediction model which results have been included in the paper. Through XAI techniques application, it was already possible to confirm insights claimed by state-of-the-art studies, namely about the importance of birth weight and gestational age for LOS as well as the importance of hospital-acquired infections. The work presents as novelty the weights (quantification) of these factors as well as the introduction of two new factors, which were not considered until now. The study makes part of ongoing work and will continue to provide better insights for better investment LOS in neonatal care units.
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