Federated systems for automated infection surveillance: a perspective.

IF 4.8 2区 医学 Q1 INFECTIOUS DISEASES
Stephanie M van Rooden, Suzanne D van der Werff, Maaike S M van Mourik, Frederikke Lomholt, Karina Lauenborg Møller, Sarah Valk, Carolina Dos Santos Ribeiro, Albert Wong, Saskia Haitjema, Michael Behnke, Eugenia Rinaldi
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引用次数: 0

Abstract

Automation of surveillance of infectious diseases-where algorithms are applied to routine care data to replace manual decisions-likely reduces workload and improves quality of surveillance. However, various barriers limit large-scale implementation of automated surveillance (AS). Current implementation strategies for AS in surveillance networks include central implementation (i.e. collecting all data centrally, and central algorithm application for case ascertainment) or local implementation (i.e. local algorithm application and sharing surveillance results with the network coordinating center). In this perspective, we explore whether current challenges can be solved by federated AS. In federated AS, scripts for analyses are developed centrally and applied locally. We focus on the potential of federated AS in the context of healthcare associated infections (AS-HAI) and of severe acute respiratory illness (AS-SARI). AS-HAI and AS-SARI have common and specific requirements, but both would benefit from decreased local surveillance burden, alignment of AS and increased central and local oversight, and improved access to data while preserving privacy. Federated AS combines some benefits of a centrally implemented system, such as standardization and alignment of an easily scalable methodology, with some of the benefits of a locally implemented system including (near) real-time access to data and flexibility in algorithms, meeting different information needs and improving sustainability, and allowance of a broader range of clinically relevant case-definitions. From a global perspective, it can promote the development of automated surveillance where it is not currently possible and foster international collaboration.The necessary transformation of source data likely will place a significant burden on healthcare facilities. However, this may be outweighed by the potential benefits: improved comparability of surveillance results, flexibility and reuse of data for multiple purposes. Governance and stakeholder agreement to address accuracy, accountability, transparency, digital literacy, and data protection, warrants clear attention to create acceptance of the methodology. In conclusion, federated automated surveillance seems a potential solution for current barriers of large-scale implementation of AS-HAI and AS-SARI. Prerequisites for successful implementation include validation of results and evaluation requirements of network participants to govern understanding and acceptance of the methodology.

自动感染监控的联合系统:一个视角。
传染病监测自动化--将算法应用于常规护理数据以取代人工决策--可能会减少工作量并提高监测质量。然而,各种障碍限制了自动监控(AS)的大规模实施。目前在监测网络中实施自动监测的策略包括中央实施(即集中收集所有数据,并应用中央算法确定病例)或地方实施(即应用地方算法并与网络协调中心共享监测结果)。从这一角度出发,我们探讨了联合自动系统能否解决当前的挑战。在联合自动系统中,分析脚本集中开发,并在本地应用。我们将重点关注联合自动分析系统在医疗相关感染(AS-HAI)和严重急性呼吸道疾病(AS-SARI)方面的潜力。医疗相关感染(AS-HAI)和严重急性呼吸道疾病(AS-SARI)有共同的具体要求,但两者都将受益于地方监控负担的减轻、AS 的统一、中央和地方监督的加强,以及在保护隐私的同时改善数据的获取。联邦自动系统结合了中央实施系统的一些好处,如标准化和统一易于扩展的方法,以及地方实施系统的一些好处,包括(接近)实时访问数据和算法的灵活性,满足不同的信息需求和提高可持续性,以及允许更广泛的临床相关病例定义。从全球角度看,它可以促进目前尚不可能实现的自动监控的发展,并促进国际合作。然而,这可能会被潜在的益处所抵消:提高监测结果的可比性、灵活性以及数据的多用途再利用。治理和利益相关者同意解决准确性、问责制、透明度、数字扫盲和数据保护等问题,这一点值得明确关注,以便让人们接受这种方法。总之,联合自动监测似乎是解决目前大规模实施 AS-HAI 和 AS-SARI 的障碍的一个潜在方案。成功实施的先决条件包括对网络参与者的结果和评估要求进行验证,以促进对该方法的理解和接受。
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来源期刊
Antimicrobial Resistance and Infection Control
Antimicrobial Resistance and Infection Control PUBLIC, ENVIRONMENTAL & OCCUPATIONAL HEALTH -INFECTIOUS DISEASES
CiteScore
9.70
自引率
3.60%
发文量
140
审稿时长
13 weeks
期刊介绍: Antimicrobial Resistance and Infection Control is a global forum for all those working on the prevention, diagnostic and treatment of health-care associated infections and antimicrobial resistance development in all health-care settings. The journal covers a broad spectrum of preeminent practices and best available data to the top interventional and translational research, and innovative developments in the field of infection control.
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