首页> 外文期刊>BMC Medical Informatics and Decision Making >HealtheDataLab – a cloud computing solution for data science and advanced analytics in healthcare with application to predicting multi-center pediatric readmissions
【24h】

HealtheDataLab – a cloud computing solution for data science and advanced analytics in healthcare with application to predicting multi-center pediatric readmissions

机译:HealthedAtalab - 用于预测多中心儿科入院的医疗保健中数据科学和高级分析的云计算解决方案

获取原文
           

摘要

There is a shortage of medical informatics and data science platforms using cloud computing on electronic medical record (EMR) data, and with computing capacity for analyzing big data. We implemented, described, and applied a cloud computing solution utilizing the fast health interoperability resources (FHIR) standardization and state-of-the-art parallel distributed computing platform for advanced analytics. We utilized the architecture of the modern predictive analytics platform called Cerner? HealtheDataLab and described the suite of cloud computing services and Apache Projects that it relies on. We validated the platform by replicating and improving on a previous single pediatric institution study/model on readmission and developing a multi-center model of all-cause readmission for pediatric-age patients using the Cerner? Health Facts Deidentified Database (now updated and referred to as the Cerner Real World Data). We retrieved a subset of 1.4 million pediatric encounters consisting of 48 hospitals’ data on pediatric encounters in the database based on a priori inclusion criteria. We built and analyzed corresponding random forest and multilayer perceptron (MLP) neural network models using HealtheDataLab. Using the HealtheDataLab platform, we developed a random forest model and multi-layer perceptron model with AUC of 0.8446 (0.8444, 0.8447) and 0.8451 (0.8449, 0.8453) respectively. We showed the distribution in model performance across hospitals and identified a set of novel variables under previous resource utilization and generic medications that may be used to improve existing readmission models. Our results suggest that high performance, elastic cloud computing infrastructures such as the platform presented here can be used for the development of highly predictive models on EMR data in a secure and robust environment. This in turn can lead to new clinical insights/discoveries.
机译:使用云计算在电子医疗记录(EMR)数据上的医疗信息和数据科学平台缺乏缺乏医疗信息学和数据科学平台,以及用于分析大数据的计算能力。我们利用快速健康互操作性资源(FHIR)标准化和用于高级分析的最先进的并行分布式计算平台来实现,描述和应用云计算解决方案。我们利用了叫做Cerner的现代预测分析平台的体系结构? HealthedAtalab并描述了它依赖的云计算服务套件和Apache项目。我们通过复制和改进自入次的单一儿科机构研究/模型进行复制和改进该平台,并开发使用核心的儿科患者的全归脑阅览室的多中心模型?健康事实Deiderified数据库(现在更新并称为Cerner Real World数据)。我们根据先验纳入标准检索由数据库中的48家医院的儿科遭遇组成的140万儿科遭遇的子集。我们使用HealthedAlab建造和分析了相应的随机森林和多层植物(MLP)神经网络模型。使用HealthedAtalab平台,我们开发了一种随机森林模型和具有0.8446(0.844,0.8447)​​和0.8451(0.8449,0.8453)的AUC的多层Perceptron模型。我们在医院展示了模型性能的分布,并在以前的资源利用率和通用药物下识别了一组新型变量,可用于改善现有的入院模型。我们的研究结果表明,高性能,弹性云计算基础设施如这里所示的平台可以用于安全和强大的环境中EMR数据的高度预测模型。这反过来可能导致新的临床洞察/发现。

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