Healthcare Big Data Normalization Graph Theory Implementation

Atif Farid Mohammad, P. Bearse, I. R. I. Haque
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Abstract

This paper presents Healthcare Big Data Normalization using Computerized Provider Order Entry (CPOE) and application of Graph Theory. This is the process of entering physician orders directly into an electronic health record (EHR). CPOE replaces traditional pen and paper, email, fax, and telephone ordering methods. CPOE is an integral part of electronic medical records and a mandatory component for achieving Meaningful Use Stage 2 certification in health care. CPOE is vital because it helps reduce medical errors that can lead to morbidity and mortality and lowers health care costs. Relational databases are the most common type of database used in healthcare settings. The advantages of using a Relational Database Management System for CPOE are discussed, as well as the disadvantages. The Entity-Relationship diagram and schema for a medication CPOE system used in a small ambulatory medical clinic are provided. We also briefly discuss the potential use of a CPOE application and a NoSQL Open Source database, such as OrientDB, along with the benefits and challenges.
医疗大数据规范化图理论实现
本文介绍了基于计算机化供应商订单输入(CPOE)和图论应用的医疗保健大数据规范化。这是将医嘱直接输入电子健康记录(EHR)的过程。CPOE取代了传统的纸笔、电子邮件、传真和电话订购方法。CPOE是电子医疗记录的一个组成部分,也是实现医疗保健有意义使用阶段2认证的强制性组成部分。CPOE至关重要,因为它有助于减少可能导致发病率和死亡率的医疗错误,并降低医疗保健成本。关系数据库是医疗保健设置中最常用的数据库类型。讨论了在CPOE中使用关系数据库管理系统的优点以及缺点。给出了小型门诊用药CPOE系统的实体关系图和模式。我们还简要讨论了CPOE应用程序和NoSQL开源数据库(如OrientDB)的潜在用途,以及它们的好处和挑战。
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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