...
首页> 外文期刊>Online Journal of Public Health Informatics >Integrating data from disparate data systems for improved HIV reporting: Lessons learned
【24h】

Integrating data from disparate data systems for improved HIV reporting: Lessons learned

机译:整合来自不同数据系统的数据以改进艾滋病报告:吸取的教训

获取原文
   

获取外文期刊封面封底 >>

       

摘要

Objective:? To assess the integration process of HIV data from disparate sources for reporting HIV prevention metrics in Scott County, Indiana Introduction:? In 2015, the Indiana State Department of Health (ISDH) responded to a large HIV outbreak among persons who inject drugs (PWID) in Scott County 1 . Information to manage the public health response to this event and its aftermath included data from multiple sources such as surveillance, HIV testing, contact tracing, medical care, and HIV prevention activities. Each dataset was managed separately and had been tailored to the relevant HIV program area’s needs, which is a typical practice for health departments. Currently, integrating these disparate data sources is managed manually, which makes this dataset susceptible to inconsistent and redundant data. During the outbreak investigation, access to data to monitor and report progress was difficult to obtain in a timely and accurate manner for local and state health department staff. ISDH initiated efforts to integrate these disparate HIV data sources to better track HIV prevention metrics statewide, to support decision making and policies, and to facilitate a more rapid response to future HIV-related investigations. The Centers for Disease Control and Prevention (CDC) through its Info-Aid mechanism is providing technical assistance to support assessment of the ISDH data integration process. The project is expected to lead to the development of a dashboard prototype that will aggregate and improve critical data reporting to monitor the status of HIV prevention in Scott County. Methods:? We assessed six different HIV-related datasets in addition to the state-level integrated HIV dataset developed to report HIV monitoring and prevention metrics. We conducted site visits to the ISDH and Scott County to assess the integration process. We also conducted key informant interviews and focus group discussions with data managers, analysts, program managers, and epidemiologists using HIV data systems at ISDH, Scott County and CDC. We also conducted a documentation review of summary reports of the HIV outbreak, workflow, a business process analysis, and information gathered during the site visit on operations, processes and attributes of HIV data sources. We, then, summarized the information flow, including the data collection process, reporting, and analysis at federal, state and county levels. Results:? We have developed a list of lessons learned that can be translated for use in any state-level jurisdiction engaged in HIV prevention monitoring and reporting: Standardization of data formats:? The disparate data sources storing HIV-related information were developed independently on different platforms using different architectures; they were not necessarily designed to link and exchange data. Hence, these systems could not seamlessly interact with each other, posing challenges when rapid data linkage was needed. To better manage unstructured data coming from disparate data sources and improve data integration efforts, we recommend standardization of data formats, unique identifiers for registered individuals, and coding across data systems. Use of standard operating procedures can streamline data flow and facilitate automated creation of integrated datasets. This approach may be helpful for future integration efforts in other healthcare domains. Data integration process:? Manually integrating data is time intensive, increases workload, and poses significant risk of human error in data compilation. Hence, it may compromise data quality and the accuracy of HIV prevention metrics used by decision-makers. We propose an automated integration process using an extract, transform and load (ETL) method to extract HIV-related data from disparate data sources, transforming it to fit the prevention metrics reporting needs and loading it into a state-level integrated HIV dataset or database. This approach can drastically decrease dependency on manual methods and help avoid data compilation errors. Dashboard development:? Major challenges in the process of integrating HIV-related data included disparate data sources, compromised data quality, and the lack of standard metrics for some of the HIV-related metrics of interest. Despite these challenges to data integration, creation of a dashboard to track HIV prevention metrics is feasible. Integrating data is a critical part of developing an HIV dashboard that can generate real-time metrics without creating additional burden for the health department staff, if manual integration is no longer needed.? ? ? ? ? ? ? ? ? ? ? ? ? ? ? ? ? ? ? ? ? ? ? ? ? ? ? ? ? ? ? ? ? ? ? ? ? ? ? ? ? ? ? Stakeholder participation:? Due to the immediate need for outbreak response, involvement of stakeholders at all levels was limited. Active stakeholder engagement in this process is essential. The stakeholders’ interest and participation can be improved by helping them understand the value of each other’s
机译:目的:?评估来自不同来源的HIV数据的整合过程,以报告印第安纳州斯科特县的HIV预防指标。 2015年,印第安纳州卫生部(ISDH)对斯科特县1的大规模吸毒人群(PWID)感染了艾滋病毒。管理该事件及其后果的公共卫生应对措施的信息包括来自多个来源的数据,例如监视,艾滋病毒检测,接触者追踪,医疗保健和艾滋病毒预防活动。每个数据集都是单独管理的,并且已根据相关HIV计划领域的需求进行了量身定制,这是卫生部门的典型做法。当前,这些不同数据源的集成是手动管理的,这使得该数据集容易受到不一致和冗余数据的影响。在暴发调查期间,地方和州卫生部门的工作人员难以及时,准确地获得用于监视和报告进度的数据。 ISDH致力于整合这些不同的HIV数据源,以更好地跟踪全州的HIV预防指标,支持决策和政策,并促进对未来与HIV相关的调查做出更快的反应。疾病控制和预防中心(CDC)通过其信息援助机制正在提供技术援助,以支持对ISDH数据集成过程的评估。预计该项目将导致仪表盘原型的开发,该仪表盘原型将汇总和改进关键数据报告,以监控斯科特县的艾滋病毒预防状况。方法:?除了开发用于报告HIV监测和预防指标的州级综合HIV数据集以外,我们还评估了六个不同的HIV相关数据集。我们对ISDH和斯科特县进行了实地考察,以评估整合过程。我们还与ISDH,斯科特县和CDC的使用HIV数据系统的数据经理,分析师,项目经理和流行病学家进行了重要的信息提供者访谈和焦点小组讨论。我们还对HIV爆发,工作流程,业务流程分析的摘要报告以及在现场访问期间收集到的有关HIV数据源的操作,过程和属性的信息进行了文档审查。然后,我们总结了信息流,包括联邦,州和县级的数据收集过程,报告和分析。结果:?我们已经制定了一个经验教训清单,可以将其翻译成可用于任何从事艾滋病毒预防监测和报告的州级司法管辖区:数据格式的标准化:存储艾滋病相关信息的不同数据源是在不同平台上使用不同架构独立开发的;它们不一定设计为链接和交换数据。因此,这些系统无法彼此无缝交互,从而在需要快速数据链接时提出了挑战。为了更好地管理来自不同数据源的非结构化数据并改善数据集成工作,我们建议标准化数据格式,注册个人的唯一标识符以及跨数据系统编码。使用标准操作程序可以简化数据流,并有助于自动创建集成数据集。此方法可能对其他医疗保健领域的未来集成工作有所帮助。数据整合过程:手动集成数据非常耗时,会增加工作量,并在数据编译中带来很大的人为错误风险。因此,它可能会损害数据质量以及决策者使用的HIV预防指标的准确性。我们建议使用提取,转换和加载(ETL)方法从不同数据源中提取与HIV相关的数据的自动集成过程,对其进行转换以适应预防指标报告的需求,并将其加载到州级集成HIV数据集或数据库中。这种方法可以大大减少对手动方法的依赖,并有助于避免数据编译错误。仪表板开发:整合与艾滋病相关数据的过程中的主要挑战包括不同的数据源,受损的数据质量以及缺少某些与艾滋病相关的相关指标的标准指标。尽管数据集成面临这些挑战,但创建一个可追踪艾滋病毒预防指标的仪表板仍然是可行的。集成数据是开发HIV仪表板的关键部分,如果不再需要手动集成,该仪表板可以生成实时指标,而不会给卫生部门工作人员带来额外负担。 ? ? ? ? ? ? ? ? ? ? ? ? ? ? ? ? ? ? ? ? ? ? ? ? ? ? ? ? ? ? ? ? ? ? ? ? ? ? ? ? ? ?利益相关者的参与:由于迫切需要对疫情做出反应,因此各级利益相关者的参与受到限制。利益相关者在此过程中的积极参与至关重要。利益相关者的兴趣和参与可以通过帮助他们了解彼此的价值来提高。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号