Institute for Systems Engineering Research, Mississippi State University, Vicksburg, MS, USA.
Institute for IT Innovations & Smart Health, Vicksburg, MS, USA.
J Med Eng Technol. 2020 Aug;44(6):267-283. doi: 10.1080/03091902.2020.1769758. Epub 2020 Jun 5.
Big data analytics are gaining popularity in medical engineering and healthcare use cases. Stakeholders are finding big data analytics reduce medical costs and personalise medical services for each individual patient. Big data analytics can be used in large-scale genetics studies, public health, personalised and precision medicine, new drug development, etc. The introduction of the types, sources, and features of big data in healthcare as well as the applications and benefits of big data and big data analytics in healthcare is key to understanding healthcare big data and will be discussed in this article. Major methods, platforms and tools of big data analytics in medical engineering and healthcare are also presented. Advances and technology progress of big data analytics in healthcare are introduced, which includes artificial intelligence (AI) with big data, infrastructure and cloud computing, advanced computation and data processing, privacy and cybersecurity, health economic outcomes and technology management, and smart healthcare with sensing, wearable devices and Internet of things (IoT). Current challenges of dealing with big data and big data analytics in medical engineering and healthcare as well as future work are also presented.
大数据分析在医学工程和医疗保健应用中越来越受欢迎。利益相关者发现,大数据分析可以降低医疗成本,并为每个个体患者提供个性化的医疗服务。大数据分析可用于大规模遗传学研究、公共卫生、个性化和精准医疗、新药开发等。本文将讨论医疗保健中大数的类型、来源和特征,以及大数据和大数据分析在医疗保健中的应用和优势,这是理解医疗保健大数据的关键。本文还介绍了医学工程和医疗保健中大数据分析的主要方法、平台和工具。介绍了医疗保健中大数据分析的进展和技术进步,包括人工智能(AI)与大数据、基础设施和云计算、高级计算和数据处理、隐私和网络安全、健康经济结果和技术管理以及具有传感、可穿戴设备和物联网(IoT)的智能医疗保健。还介绍了医疗工程和医疗保健中处理大数据和大数据分析的当前挑战以及未来工作。