分析非COVID-19事件的分析参考框架。

IF 3.2 2区 医学 Q2 PUBLIC, ENVIRONMENTAL & OCCUPATIONAL HEALTH Population Health Metrics Pub Date : 2023-10-21 DOI:10.1186/s12963-023-00316-8
María Del Pilar Villamil, Nubia Velasco, David Barrera, Andrés Segura-Tinoco, Oscar Bernal, José Tiberio Hernández
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引用次数: 0

摘要

背景:新冠肺炎大流行扰乱了医疗系统,导致其他非新冠肺炎疾病的检测延迟。本文介绍了ANE框架(非COVID-19事件分析),这是一个可靠且用户友好的分析预测框架,旨在预测非COVID疾病患者的数量。在2020年之前,有专门针对特定疾病和环境的分析模型。然后,大多数模型都专注于理解新冠肺炎的行为。缺乏能够对非COVID-19疾病进行疾病预测的分析框架。方法:ANE框架利用时间序列分析生成预测模型。该框架利用来自政府官方来源的每日数据,并采用SARIMA模型来预测非COVID-19病例的数量,如结核病和自杀企图。结果:该框架在五个不同的非COVID-19事件上进行了测试。该框架在所有事件中表现良好,包括肺结核和自杀未遂,平均绝对百分比误差(MAPE)高达20%,一致性与每个事件的行为无关。此外,平均值的成对比较可能会导致对影响的高估或低估。疫情造成的混乱导致预期和报告的结核病病例之间存在17%的差距(2383例),自杀未遂病例之间存在19%的差距(2464例)。不同城市和地区之间的差距在20%到64%之间。ANE框架已被证明在分析几种疾病方面是可靠的,并显示出整合各种来源的新数据的灵活性。定期更新和纳入新的相关数据提高了框架的有效性。结论:当前的疫情表明,有必要开发灵活的模型来适应不同的疾病数据。所开发的框架被证明对所分析的不同疾病是可靠的,提供了足够的灵活性来更新新数据,甚至包括来自不同数据库的新数据。为了不断更新项目的结果,可以包含与之相关的新数据。同样,ANE框架中提出的策略可以通过新闻事件提高获得结果的质量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Analytical reference framework to analyze non-COVID-19 events.

Background: The COVID-19 pandemic has disrupted the healthcare system, leading to delays in detection of other non-COVID-19 diseases. This paper presents ANE Framework (Analytics for Non-COVID-19 Events), a reliable and user-friendly analytical forecasting framework designed to predict the number of patients with non-COVID-19 diseases. Prior to 2020, there were analytical models focused on specific illnesses and contexts. Then, most models have focused on understanding COVID-19 behavior. There is a lack of analytical frameworks that enable disease forecasting for non-COVID-19 diseases.

Methods: The ANE Framework utilizes time series analysis to generate forecasting models. The framework leverages daily data from official government sources and employs SARIMA models to forecast the number of non-COVID-19 cases, such as tuberculosis and suicide attempts.

Results: The framework was tested on five different non-COVID-19 events. The framework performs well across all events, including tuberculosis and suicide attempts, with a Mean Absolute Percentage Error (MAPE) of up to 20% and the consistency remains independent of the behavior of each event. Moreover, a pairwise comparison of averages can lead to over or underestimation of the impact. The disruption caused by the pandemic resulted in a 17% gap (2383 cases) between expected and reported tuberculosis cases, and a 19% gap (2464 cases) for suicide attempts. These gaps varied between 20 and 64% across different cities and regions. The ANE Framework has proven to be reliable for analyzing several diseases and exhibits the flexibility to incorporate new data from various sources. Regular updates and the inclusion of new associated data enhance the framework's effectiveness.

Conclusions: Current pandemic shows the necessity of developing flexible models to be adapted to different illness data. The framework developed proved to be reliable for the different diseases analyzed, presenting enough flexibility to update with new data or even include new data from different databases. To keep updated on the result of the project allows the inclusion of new data associated with it. Similarly, the proposed strategy in the ANE framework allows for improving the quality of the obtained results with news events.

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来源期刊
Population Health Metrics
Population Health Metrics PUBLIC, ENVIRONMENTAL & OCCUPATIONAL HEALTH-
CiteScore
6.50
自引率
0.00%
发文量
21
审稿时长
29 weeks
期刊介绍: Population Health Metrics aims to advance the science of population health assessment, and welcomes papers relating to concepts, methods, ethics, applications, and summary measures of population health. The journal provides a unique platform for population health researchers to share their findings with the global community. We seek research that addresses the communication of population health measures and policy implications to stakeholders; this includes papers related to burden estimation and risk assessment, and research addressing population health across the full range of development. Population Health Metrics covers a broad range of topics encompassing health state measurement and valuation, summary measures of population health, descriptive epidemiology at the population level, burden of disease and injury analysis, disease and risk factor modeling for populations, and comparative assessment of risks to health at the population level. The journal is also interested in how to use and communicate indicators of population health to reduce disease burden, and the approaches for translating from indicators of population health to health-advancing actions. As a cross-cutting topic of importance, we are particularly interested in inequalities in population health and their measurement.
期刊最新文献
Deriving disability weights for the Netherlands: findings from the Dutch disability weights measurement study. Quantifying the magnitude of the general contextual effect in a multilevel study of SARS-CoV-2 infection in Ontario, Canada: application of the median rate ratio in population health research. Standardised reporting of burden of disease studies: the STROBOD statement. Population age structure dependency of the excess mortality P-score. Automated mortality coding for improved health policy in the Philippines.
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