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Biosurveillance Adaptable Framework for Teaming Exploration and Reuse (BioAFTER)

机译:用于组队勘探和再利用的生物监视适应性框架(BioAFTER)

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摘要

IntroductionNext-generation software environments for disease surveillance will need to have several important characteristics, among which are collaboration and search and discovery features, access to various data sets, and a variety of analytic methods. However, perhaps the most important feature is the least often mentioned - the ability to have the system adapt over time without high reengineering cost. The public health community cannot afford software redesigns every few years as data sets expand, analysis needs evolve, and software deficiencies are exposed. In addition to the need to adapt an environment over longer time periods, epidemiologists have high variability in their day-to-day needs that require adaptability over short time periods as well. Each outbreak or health situation has unique aspects, and analysts need to be able to bring in data and methods unique to that situation that may not be easily anticipated a priori.The most common approach to increasing reusability and decreasing upgrade costs are open architecture software frameworks such as Service-Oriented Architectures (SOAs). If well implemented, SOAs can significantly reduce software upgrade costs by allowing services (a software module) to be easily swapped out for improvements or supplemented with additional services. SOAs can help with long-term adaptability, but are not useful in short-term adaptability, since the software development team must be engaged in each cycle. Another approach is to include an App Store. Unfortunately, App Stores for government use have often been disappointing. Apps can tend to be quite simple, and even slight changes from what is programmed - a predictable situation with the variability seen in disease surveillance realm - will result in an epidemiologist having to get a software developer to make them a new App.
机译:简介用于疾病监视的下一代软件环境将需要具有几个重要特征,其中包括协作,搜索和发现特征,对各种数据集的访问以及各种分析方法。但是,最重要的功能也许是最不常提及的功能-能够使系统随时间而适应而又不会带来高昂的重新设计成本。随着数据集的扩展,分析需求的发展以及暴露出软件缺陷,公共卫生界无法承受每隔几年进行软件重新设计的负担。除了需要在更长的时间内适应环境之外,流行病学家的日常需求具有很大的可变性,这些需求也需要在短时期内具有适应性。每种暴发或健康状况都有其独特的方面,分析人员需要能够引入这种情况所特有的数据和方法,这些数据和方法可能很难事先被预料到。提高可重用性和降低升级成本的最常见方法是开放体系结构软件框架例如面向服务的体系结构(SOA)。如果实施得当,SOA可以通过轻松地将服务(软件模块)换出以进行改进或补充其他服务来显着降低软件升级成本。 SOA可以帮助实现长期适应性,但对于短期适应性却没有用,因为软件开发团队必须参与每个周期。另一种方法是包括App Store。不幸的是,供政府使用的App Store经常令人失望。应用程序可能会非常简单,甚至与编程内容相比可能会有微小的变化(在疾病监测领域中存在可预测的情况以及可变性),这将导致流行病学家不得不聘请软件开发人员来制作新的应用程序。

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