Recommending Analytic Services for Population Health Studies Based on Feature Significance

Jinhui Yao, M. Shepherd, Jing Zhou, Lina Fu, Dennis Quebe, J. Echols, Xuejin Wen
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Abstract

Service-oriented thinking is one of the fastest growing paradigms in information technology, with relevance to many other disciplines. Service-oriented analytic workflows can bring together various analytic computing tools and compute resources offered as services to answer complex research questions. The current healthcare system in United States is experiencing fundamental transformation as it moves from a volume-based business to a value-based business. One strategy that healthcare organizations start to deploy is leveraging their healthcare data to gain insights for optimizing their operation. Therefore it is perfectly logical to extend the application of service-oriented analytic workflows to population health studies, as these rely on both medical expertise and processing of large data sets to serve end users of various backgrounds and skill sets. However, in the practical application of such service oriented approach, the user often finds it difficult to choose the right services or workflows that can help them to find the answers to their questions. To tackle this problem, we propose a heuristic recommendation method based on the feature significance. The user submits an enquiry, then based on which, the system will recommend the services and compositions that are likely to produce meaningful answers. In this paper, we will elaborate the interactions between different roles in a service oriented analytic system, develop the modeling to illustrate the relations among enquiry, features, services and workflows, propose the algorithm for service recommendation, architect the system and show a reference implementation of a prototype.
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基于特征显著性推荐人群健康研究分析服务
面向服务的思维是信息技术中发展最快的范例之一,与许多其他学科相关。面向服务的分析工作流可以将各种分析计算工具和计算资源作为服务提供,以回答复杂的研究问题。美国目前的医疗保健系统正在经历根本性的转变,从以数量为基础的业务转向以价值为基础的业务。医疗保健组织开始部署的一种策略是利用其医疗保健数据来获得优化其运营的见解。因此,将面向服务的分析工作流程的应用扩展到人口健康研究是完全合乎逻辑的,因为这些研究既依赖于医学专业知识,也依赖于对大型数据集的处理,以服务于不同背景和技能的最终用户。然而,在这种面向服务的方法的实际应用中,用户经常发现很难选择正确的服务或工作流来帮助他们找到问题的答案。为了解决这一问题,我们提出了一种基于特征显著性的启发式推荐方法。用户提交一个查询,然后系统将根据它推荐可能产生有意义的答案的服务和组合。在本文中,我们将详细阐述面向服务的分析系统中不同角色之间的交互,开发建模来说明查询、特征、服务和工作流之间的关系,提出服务推荐算法,构建系统并展示原型的参考实现。
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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