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用于评估监测系统在短期流感预测中应用的框架

A Framework for Evaluating the Use of Surveillance Systems for Short-Term Influenza Forecasting.

作者信息

Maroufi Negin, Barnard Lucy Telfar, Huang Qiu Sue, Dobbie Gillian, Aminisani Nayyereh, Albrecht Steffen, Nghiem Nhung, Baker Michael G

机构信息

University of Otago, Wellington, New Zealand.

Institute of Environmental Science and Research, Wellington, New Zealand.

出版信息

Influenza Other Respir Viruses. 2025 Aug;19(8):e70144. doi: 10.1111/irv.70144.

Abstract

BACKGROUND

Public health surveillance systems need to monitor influenza activity and guide measures to mitigate its high impact on morbidity, mortality and healthcare systems. There is an increasing expectation that surveillance data will support the modeling of future short-term disease scenarios using artificial intelligence (AI) and machine learning (ML). This study examines how influenza surveillance can support AI/ML-based short-term forecasting for influenza at the community and hospital levels in a high-income country setting (Aotearoa/New Zealand).

METHODS

This study used a two-phase approach. The first phase involved a comprehensive review of government reports, official websites, and literature to characterize existing influenza surveillance systems. The second phase evaluated systems against eight key attributes-timeliness, sensitivity, specificity, representativeness, coverage, robustness, completeness, and historical data-using a five-level ranking system. Attribute selection was informed by experts' knowledge, ML requirements, and established frameworks. Weighted scores for training and short-term forecasting capabilities were calculated to determine alignment with AI/ML requirements.

RESULTS

The Southern Hemisphere Influenza and Vaccine Effectiveness Research and Surveillance (SHIVERS) community cohort and Severe Acute Respiratory Infection (SARI) hospital surveillance emerged as the most useful systems, achieving the highest scores in both training and short-term forecasting in community and hospital settings, respectively. The National Minimum Dataset of hospitalizations and mortality datasets demonstrated strong training potential but are limited in short-term forecasting due to timeliness constraints. Additionally, laboratory-based surveillance performs a useful role in bridging community and hospital datasets.

CONCLUSIONS

A set of key attributes is useful for assessing which influenza surveillance systems are best aligned with AI/ML training and short-term forecasting requirements. These attributes distinguished systems that are likely to be the most suitable for modeling future short-term disease scenarios for influenza at the community and hospital levels in New Zealand. Integrating these data sources could enhance influenza forecasts to improve public health responses and intervention planning.

摘要

背景

公共卫生监测系统需要监测流感活动,并指导采取措施减轻其对发病率、死亡率和医疗系统的重大影响。人们越来越期望监测数据能支持使用人工智能(AI)和机器学习(ML)对未来短期疾病情况进行建模。本研究探讨了在高收入国家背景下(新西兰),流感监测如何支持基于AI/ML的社区和医院层面的流感短期预测。

方法

本研究采用两阶段方法。第一阶段对政府报告、官方网站和文献进行全面审查,以描述现有的流感监测系统。第二阶段使用五级排名系统,根据及时性、敏感性、特异性、代表性、覆盖范围、稳健性、完整性和历史数据这八个关键属性对系统进行评估。属性选择参考了专家知识、ML要求和既定框架。计算训练和短期预测能力的加权分数,以确定与AI/ML要求的契合度。

结果

南半球流感与疫苗有效性研究及监测(SHIVERS)社区队列和严重急性呼吸道感染(SARI)医院监测成为最有用的系统,分别在社区和医院环境中的训练和短期预测方面获得最高分。住院患者国家最小数据集和死亡率数据集显示出强大的训练潜力,但由于及时性限制,在短期预测方面存在局限性。此外,基于实验室的监测在连接社区和医院数据集方面发挥着有益作用。

结论

一组关键属性有助于评估哪些流感监测系统最符合AI/ML训练和短期预测要求。这些属性区分了可能最适合为新西兰社区和医院层面的流感未来短期疾病情况建模的系统。整合这些数据源可以增强流感预测,以改善公共卫生应对和干预规划。

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