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Data Analysis and Forecasting of Tuberculosis Prevalence Rates for Smart Healthcare Based on a Novel Combination Model

机译:基于新型组合模型的智能医疗结核病患病率数据分析与预测

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摘要

In recent years, healthcare has attracted much attention, which is looking for more and more data analytics in healthcare to relieve medical problems in medical staff shortage, ageing population, people living alone, and quality of life. Data mining, analysis, and forecasting play a vital role in modern social and medical fields. However, how to select a proper model to mine and analyze the relevant medical information in the data is not only an extremely challenging problem, but also a concerning problem. Tuberculosis remains a major global health problem despite recent and continued progress in prevention and treatment. There is no doubt that the effective analysis and accurate forecasting of global tuberculosis prevalence rates lay a solid foundation for the construction of an epidemic disease warning and monitoring system from a global perspective. In this paper, the tuberculosis prevalence rate time series for four World Bank income groups are targeted. Kruskal–Wallis analysis of variance and multiple comparison tests are conducted to determine whether the differences of tuberculosis prevalence rates for different income groups are statistically significant or not, and a novel combined forecasting model with its weights optimized by a recently developed artificial intelligence algorithm—cuckoo search—is proposed to forecast the hierarchical tuberculosis prevalence rates from 2013 to 2016. Numerical results show that the developed combination model is not only simple, but is also able to satisfactorily approximate the actual tuberculosis prevalence rate, and can be an effective tool in mining and analyzing big data in the medical field.
机译:近年来,医疗保健引起了广泛的关注,它正在寻求医疗保健中越来越多的数据分析,以减轻医务人员短缺,人口老龄化,独居人士和生活质量方面的医疗问题。数据挖掘,分析和预测在现代社会和医学领域起着至关重要的作用。然而,如何选择合适的模型来挖掘和分析数据中的相关医学信息不仅是一个极具挑战性的问题,也是一个令人关注的问题。尽管最近在预防和治疗方面取得了持续进展,但结核病仍然是全球主要的健康问题。毫无疑问,对全球结核病流行率的有效分析和准确预测为从全球角度构建流行病预警和监测系统奠定了坚实的基础。本文的目标是世界银行四个收入群体的结核病患病率时间序列。进行了Kruskal–Wallis方差分析和多次比较检验,以确定不同收入人群的结核病患病率差异是否具有统计显着性,并采用一种新的组合预测模型,其权重由最近开发的人工智能算法-杜鹃优化。搜索—被提议用于预测2013年至2016年的分级结核病患病率。数值结果表明,开发的组合模型不仅简单,而且能够令人满意地逼近实际的结核病患病率,并且可以作为有效的采矿工具和分析医学领域的大数据。

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