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A general extensible learning approach for multi-disease recommendations in a telehealth environment

机译:远程环境中多疾病建议的一般可扩展学习方法

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In a telehealth environment, intelligent technologies are rapidly evolving toward improving the quality of patients' lives and providing better clinical decision-making especially those who suffer from chronic diseases and require continuous monitoring and chronic-related medical measurements. A short-term disease risk prediction is a challenging task but is a great importance for teleheath care systems to provide accurate and reliable recommendations to patients. In this work, a general extensible learning approach for multi-disease recommendations is proposed to provide accurate recommendations for patients with chronic diseases in a telehealth environment. This approach generates appropriate recommendations for patients suffering from chronic diseases such as heart failure and diabetes about the need to take a medical test or not on the coming day based on the analysis of their medical data. The statistical features extracted from the sub-bands obtained after a four-level decomposition of the patient's time series data are classified using a machine learning ensemble model. A combination of three classifiers - Least Squares-Support Vector Machine, Artificial Neural Network, and Naive Bayes - are utilized to construct the bagging-based ensemble model used to produce the final recommendations for patients. Two reallife datasets collected from chronic heart and diabetes disease patients are used for experimentations and evaluation. The experimental results show that the proposed approach yields a very good recommendation accuracy and offers an effective way to reduce the risk of incorrect recommendations as well as reduces the workload for chronic diseases patients who undergo body tests most days. Thus, the proposed approach is considered one of a promising tool for analyzing time series medical data of multi diseases and providing accurate and reliable recommendations to patients suffering from different types of chronic diseases. (c) 2018 Elsevier B.V. All rights reserved.
机译:在远程环境中,智能技术正在迅速发展,从而提高患者的生活质量,并提供更好的临床决策,特别是那些患有慢性病的人,需要连续监测和慢性相关的医疗测量。短期疾病风险预测是​​一个具有挑战性的任务,但对电信护理系统提供对患者的准确和可靠建议的重要性。在这项工作中,提出了一种用于多疾病建议的一般可扩展学习方法,为远程环境中慢性疾病的患者提供准确的建议。这种方法为患有慢性疾病(如心力衰竭和糖尿病)的患者产生了适当的建议,这是根据其医疗数据的分析在即将到来的目前需要在即将到来的情况下进行医疗测试。从患者时间序列数据的四级分解之后获得的子带中提取的统计特征是使用机器学习集合模型进行分类。三个分类器的组合 - 最小二乘支持向量机,人工神经网络和天真贝叶斯用于构建用于为患者产生最终建议的基于袋的合奏模型。从慢性心脏和糖尿病病患者收集的两个Reallife数据集用于实验和评估。实验结果表明,该拟议方法产生了非常好的推荐准确性,提供了一种有效的方法来降低不正确的建议的风险,并降低了大多数日子测试的慢性疾病患者的工作量。因此,所提出的方法被认为是分析多疾病的时间序列医学数据的有前途的工具之一,并为患有不同类型的慢性病的患者提供准确和可靠的建议。 (c)2018年elestvier b.v.保留所有权利。

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