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Challenges in designing an online healthcare platform for personalised patient analytics

机译:设计用于个性化患者分析的在线医疗平台的挑战

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The growing number and size of clinical medical records (CMRs) represents new opportunities for finding meaningful patterns and patient treatment pathways while at the same time presenting a huge challenge for clinicians. Indeed, CMR repositories share many characteristics of the classical `big data' problem, requiring specialised expertise for data management, extraction, and modelling. In order to help clinicians make better use of their time to process data, they will need more adequate data processing and analytical tools, beyond the capabilities offered by existing general purpose database management systems or database servers. One modelling technique that can readily benefit from the availability of big data, yet remains relatively unexplored is personalised analytics where a model is built for each patient. In this paper, we present a strategy for designing a secure healthcare platform for personalised analytics by focusing on three aspects: (1) data representation, (2) data privacy and security, and (3) personalised analytics enabled by machine learning algorithms.
机译:临床病历(CMR)的数量和规模不断增长,为寻找有意义的模式和患者治疗途径提供了新的机会,同时也给临床医生带来了巨大的挑战。实际上,CMR存储库具有经典“大数据”问题的许多特征,需要专门的专业知识来进行数据管理,提取和建模。为了帮助临床医生更好地利用他们的时间来处理数据,除了现有的通用数据库管理系统或数据库服务器所提供的功能之外,他们将需要更充分的数据处理和分析工具。可以从大数据的可用性中轻松受益但仍相对未被开发的一种建模技术是个性化分析,其中为每个患者建立模型。在本文中,我们通过关注三个方面提出一种设计用于个性化分析的安全医疗平台的策略:(1)数据表示,(2)数据隐私和安全性,以及(3)机器学习算法支持的个性化分析。

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