基于边缘分析的再入院早期预测:一个案例研究

Yucen Nan, Wei Li, Feng Lu, Flávia Coimbra Delicato, Albert Y. Zomaya
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引用次数: 0

摘要

越来越多的人建议脑卒中患者尽早出院并开始在家康复。考虑到卒中患者通常有很高的复发机会,良好的预后规划对于提高诊断能力,减少再入院率,进一步节省医疗资源至关重要。在这种情况下,各种机器学习方法被用来获得诊断结果并指导进一步的治疗。然而,这些方法主要集中在使用从医院获得的单一数据源进行分析,而忽略了不同组特征之间的信息互补性以及它们之间物理解释的一些微妙和离散的差异。在本文中,我们提出了一种基于边缘的卒中后监测预警预测系统设计,称为PSMART(卒中后移动辅助基础治疗),用于从多传感器(视图)处理缺血性卒中的富集致病因素,进行再入院预警预测。我们的方法可以极大地丰富原始数据的鲜明特征,并利用不同视图的一致性和互补性,从而获得更好的学习效果。我们在一个真实数据集上对所提出的方法进行了性能评估,准确率可以达到98.98%。此外,实验结果也表明,与单视图相比,我们的方法可以提供更好的精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Realising Edge Analytics for Early Prediction of Readmission: A Case Study
The post-discharge support is increasingly suggested for stroke patients to be discharged earlier and start rehabilitation at home. Considering that stroke patients usually have a high chance of recurrence, a good prognostic program is essential to improve diagnostic capabilities while reducing readmission rate to further save medical sources. In this context, various machine learning methods have been leveraged to obtain diagnostic findings and guide further treatments. However, those approaches mainly focus on performing analysis using a single data source obtained from the hospital, which could ignore the information complementarity between different groups of features and several subtle and discrete differences of physical interpretation among them. In this paper, we propose an Edge-based system design for post-stroke surveillance and warning prediction, called PSMART (Post-Stroke Mobile Auxiliary Rudiment Treatment), for processing enriched pathogenic factors of ischemic stroke from multi-sensors (views) to make readmission warning predictions. Our approach can considerably enrich the distinctive features from raw data, as well as exploit the consistency and complementary proprieties of different views, leading to better learning results. We evaluate the performance of the proposed approach on a real-world dataset, and the accuracy can reach up to 98.98%. Moreover, experiment results also show that our proposed approach can provide better accuracy when compared to the single-view ones.
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