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Decentralized Machine Learning Approach on ICU Admission Prediction for Enhanced Patient Care Using COVID-19 Data 利用 COVID-19 数据的分散式机器学习方法预测重症监护室入院情况以加强患者护理
Pub Date : 2023-12-07 DOI: 10.47086/pims.1390925
Takeshi Matsuda, Tianlong Wang, Mehmet Di̇k
The Intensive Care Unit (ICU) represents a constrained healthcare resource, involving invasive procedures and high costs, with significant psychological effects on patients and their families. The traditional approach to ICU admissions relies on observable behavioral indicators like breathing patterns and consciousness levels, which may lead to delayed critical care due to deteriorating conditions. Therefore, in the ever-evolving healthcare landscape, predicting whether patients will require admission to the ICU plays a pivotal role in optimizing resource allocation, improving patient outcomes, and reducing healthcare costs. Essentially, in the context of the post-COVID-19 pandemic, aside from many other diseases, this prediction not only forecasts the likelihood of ICU admission but also identifies patients at an earlier stage, allowing for timely interventions that can potentially mitigate the need for ICU care, thereby improving overall patient outcomes and healthcare resource utilization. However, this task usually requires a lot of diverse data from different healthcare institutions for a good predictive model, leading to concerns regarding sensitive data privacy. This paper aims to build a decentralized model using deep learning techniques while maintaining data privacy among different institutions to address these challenges.
重症监护室(ICU)是一种有限的医疗资源,涉及侵入性手术和高昂的费用,对患者及其家属有重大的心理影响。ICU入院的传统方法依赖于呼吸模式和意识水平等可观察的行为指标,这可能导致病情恶化而导致重症监护延迟。因此,在不断发展的医疗环境中,预测患者是否需要入住ICU在优化资源分配、改善患者预后和降低医疗成本方面发挥着关键作用。从本质上讲,在covid -19大流行后的背景下,除了许多其他疾病外,这一预测不仅预测了入住ICU的可能性,还能在早期阶段识别患者,从而及时采取干预措施,可能会减少对ICU护理的需求,从而改善患者的整体预后和医疗资源利用率。然而,这项任务通常需要来自不同医疗保健机构的大量不同数据才能建立良好的预测模型,这导致了对敏感数据隐私的担忧。本文旨在使用深度学习技术建立一个分散的模型,同时维护不同机构之间的数据隐私,以应对这些挑战。
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