迈向学习型医疗保健系统——由大数据和NLP授权的护理点知识交付。

Biomedical informatics insights Pub Date : 2016-06-23 eCollection Date: 2016-01-01 DOI:10.4137/BII.S37977
Vinod C Kaggal, Ravikumar Komandur Elayavilli, Saeed Mehrabi, Joshua J Pankratz, Sunghwan Sohn, Yanshan Wang, Dingcheng Li, Majid Mojarad Rastegar, Sean P Murphy, Jason L Ross, Rajeev Chaudhry, James D Buntrock, Hongfang Liu
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引用次数: 61

摘要

通过理解和从以前的证据中产生知识来优化卫生保健的概念,即学习卫生保健系统(LHS),已经获得了动力,现在已经在全国范围内得到重视。与此同时,电子健康纪录的迅速采用,使市民得以收集所需的数据,为促进健康照护奠定基础。在LHS内使用EHR数据的先决条件是一个基础设施,该基础设施能够纵向访问EHR数据,以便进行医疗保健分析,并实时提供知识。此外,重要的临床信息嵌入在自由文本中,使自然语言处理(NLP)成为实现LHS的重要组成部分。在此,我们分享了我们的大数据授权临床NLP基础设施的机构实施,该基础设施不仅可以实现医疗保健分析,还具有实时NLP处理能力。该基础设施已用于多个机构项目,包括MayoExpertAdvisor,这是一种针对临床护理的个性化护理推荐解决方案。我们比较了大数据相对于其他两种环境的优势。大数据基础设施在计算速度方面明显优于其他基础设施,显示了其在不久的将来使LHS成为可能的价值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Toward a Learning Health-care System - Knowledge Delivery at the Point of Care Empowered by Big Data and NLP.

Toward a Learning Health-care System - Knowledge Delivery at the Point of Care Empowered by Big Data and NLP.

Toward a Learning Health-care System - Knowledge Delivery at the Point of Care Empowered by Big Data and NLP.

Toward a Learning Health-care System - Knowledge Delivery at the Point of Care Empowered by Big Data and NLP.

The concept of optimizing health care by understanding and generating knowledge from previous evidence, ie, the Learning Health-care System (LHS), has gained momentum and now has national prominence. Meanwhile, the rapid adoption of electronic health records (EHRs) enables the data collection required to form the basis for facilitating LHS. A prerequisite for using EHR data within the LHS is an infrastructure that enables access to EHR data longitudinally for health-care analytics and real time for knowledge delivery. Additionally, significant clinical information is embedded in the free text, making natural language processing (NLP) an essential component in implementing an LHS. Herein, we share our institutional implementation of a big data-empowered clinical NLP infrastructure, which not only enables health-care analytics but also has real-time NLP processing capability. The infrastructure has been utilized for multiple institutional projects including the MayoExpertAdvisor, an individualized care recommendation solution for clinical care. We compared the advantages of big data over two other environments. Big data infrastructure significantly outperformed other infrastructure in terms of computing speed, demonstrating its value in making the LHS a possibility in the near future.

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