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Data-based algorithms and models using diabetics real data for blood glucose and hypoglycaemia prediction - A systematic literature review

机译:基于数据的算法和模型使用糖尿病血糖和低血糖预测的真实数据 - 系统文献综述

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Background and aim: Hypoglycaemia prediction play an important role in diabetes management being able to reduce the number of dangerous situations. Thus, it is relevant to present a systematic review on the currently available prediction algorithms and models for hypoglycaemia (or hypoglycemia in US English) prediction. Methods: This study aims to systematically review the literature on data-based algorithms and models using diabetics real data for hypoglycaemia prediction. Five electronic databases were screened for studies published from January 2014 to June 2020: ScienceDirect, IEEE Xplore, ACM Digital Library, SCOPUS, and PubMed. Results: Sixty-three eligible studies were retrieved that met the inclusion criteria. The review identifies the current trend in this topic: most of the studies perform short-term predictions (82.5%). Also, the review pinpoints the inputs and shows that information fusion is relevant for hypoglycaemia prediction. Regarding data-based models (80.9%) and hybrid models (19.1%) different predictive techniques are used: Artificial neural network (22.2%), ensemble learning (27.0%), supervised learning (20.6%), statistic/probabilistic (7.9%), autoregressive (7.9%), evolutionary (6.4%), deep learning (4.8%) and adaptative filter (3.2%). Artificial Neural networks and hybrid models show better results. Conclusions: The data-based models for blood glucose and hypoglycaemia prediction should be able to provide a good balance between the applicability and performance, integrating complementary data from different sources or from different models. This review identifies trends and possible opportunities for research in this topic.
机译:背景和目的:低血糖预测在糖尿病管理中发挥着重要作用,能够减少危险情况的数量。因此,它与对当前可用的预测算法和用于低血糖(或美国英语)预测的模型提供系统审查。方法:本研究旨在系统地审查基于数据的算法和模型的文献,使用糖尿病患者进行低血糖预测。从2014年1月至6月20日发布的研究筛选了五个电子数据库:SCIERDINECTECT,IEEE XPLORE,ACM数字图书馆,SCOPUS和PUBMED。结果:检索符合六十三项合格研究,符合纳入标准。审查确定了本主题的当前趋势:大多数研究表现了短期预测(82.5%)。此外,审查查询输入并显示信息融合与低血糖预测相关。关于基于数据的模型(80.9%)和混合模型(19.1%)使用不同的预测技术:人工神经网络(22.2%),集成学习(27.0%),监督学习(20.6%),统计/概率(7.9%) ),自回归(7.9%),进化(6.4%),深度学习(4.8%)和适应性过滤器(3.2%)。人工神经网络和混合模型显示出更好的结果。结论:血糖和低血糖预测的基于数据的模型应该能够在适用性和性能之间提供良好的平衡,从不同来源或来自不同模型的互补数据。此述评标识了本主题研究的趋势和可能的机会。

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