The advent of cost effective cloud computing over the past decade and ever-growing accumulation of high-fidelity clinical data in a modern hospital setting is leading to new opportunities for translational medicine. Machine learning is driving the appetite of the research community for various types of signal data such as patient vitals. Health care systems, however, are ill suited for massive processing of large volumes of data. In addition, due to the sheer magnitude of the data being collected, it is not feasible to retain all of the data in health care systems in perpetuity. This gold mine of information gets purged periodically thereby losing invaluable future research opportunities. We have developed a highly scalable solution that: a) siphons off patient vital data on a nightly basis from on-premises bio-medical systems to a cloud storage location as a permanent archive, b) reconstructs the database in the cloud, c) generates waveforms, alarms and numeric data in a research-ready format, and d) uploads the processed data to a storage location in the cloud ready for research. The data is de-identified and catalogued such that it can be joined with Electronic Medical Records (EMR) and other ancillary data types such as electroencephalogram (EEG), radiology, video monitoring etc. This technique eliminates the research burden from health care systems. This highly scalable solution is used to process high density patient monitoring data aggregated by the Philips Patient Information Center iX (PIC iX) hospital surveillance system for archival storage in the Philips Data Warehouse Connect enterprise-level database. The solution is part of a broader platform that supports a secure high performance clinical data science platform.
翻译:过去十年中出现了成本效益高的云层计算,现代医院环境的高贞洁临床数据不断积累,这带来了新的翻译医学机会。机器学习正在推动研究界对各种类型的信号数据如病人生命量的胃口,使研究界对各种类型的信号数据如病人生命量的渴望。然而,医疗保健系统不适合大规模处理大量数据。此外,由于所收集的数据规模巨大,不可能将保健系统中的所有数据永久保存。这一金矿信息定期被清理,从而失去了宝贵的未来研究机会。我们开发了一种高度可缩放的解决方案:在夜间的基础上将患者生命数据从住院生物医疗系统抽取出来,带到云层储存地点,作为永久档案;b)重建云层数据库,c)以备研究用的格式生成波形、警报和数字数据,以及d)将经过处理的数据上传到云层的储存地点,供研究之用。数据已解析并编成目录,因此,可以把这种系统从医院生命力生物-医疗数据存储系统抽取到电子-肝脏数据存储系统(EMLIS高级数据库)。