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Systems and precision medicine approaches to diabetes heterogeneity: a Big Data perspective

机译:系统和精密医学方法解决糖尿病异质性:大数据视角

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Big Data, and in particular Electronic Health Records, provide the medical community with a great opportunity to analyze multiple pathological conditions at an unprecedented depth for many complex diseases, including diabetes. How can we infer on diabetes from large heterogeneous datasets? A possible solution is provided by invoking next-generation computational methods and data analytics tools within systems medicine approaches. By deciphering the multi-faceted complexity of biological systems, the potential of emerging diagnostic tools and therapeutic functions can be ultimately revealed. In diabetes, a multidimensional approach to data analysis is needed to better understand the disease conditions, trajectories and the associated comorbidities. Elucidation of multidimensionality comes from the analysis of factors such as disease phenotypes, marker types, and biological motifs while seeking to make use of multiple levels of information including genetics, omics, clinical data, and environmental and lifestyle factors. Examining the synergy between multiple dimensions represents a challenge. In such regard, the role of Big Data fuels the rise of Precision Medicine by allowing an increasing number of descriptions to be captured from individuals. Thus, data curations and analyses should be designed to deliver highly accurate predicted risk profiles and treatment recommendations. It is important to establish linkages between systems and precision medicine in order to translate their principles into clinical practice. Equivalently, to realize their full potential, the involved multiple dimensions must be able to process information ensuring inter-exchange, reducing ambiguities and redundancies, and ultimately improving health care solutions by introducing clinical decision support systems focused on reclassified phenotypes (or digital biomarkers) and community-driven patient stratifications.
机译:大数据,尤其是电子健康记录,为医学界提供了一个巨大的机会,可以以前所未有的深度分析多种复杂疾病,包括糖尿病。我们如何从庞大的异构数据集中推断出糖尿病?通过调用系统医学方法中的下一代计算方法和数据分析工具,可以提供一种可能的解决方案。通过解读生物系统的多方面复杂性,可以最终揭示新兴诊断工具和治疗功能的潜力。在糖尿病中,需要一种多维的数据分析方法,以更好地了解疾病状况,轨迹和相关合并症。多维性的阐明来自对疾病表型,标记物类型和生物基序等因素的分析,同时力求利用包括遗传学,组学,临床数据以及环境和生活方式因素在内的多层次信息。检查多个维度之间的协同作用是一个挑战。在这方面,大数据的作用通过允许从个人那里获取越来越多的描述来推动精密医学的兴起。因此,数据管理和分析应设计为提供高度准确的预测风险概况和治疗建议。在系统和精密医学之间建立联系非常重要,以便将其原理转化为临床实践。同样,要发挥其全部潜能,涉及的多个维度必须能够处理信息,以确保相互交换,减少歧义和冗余,并通过引入针对重分类表型(或数字生物标记物)的临床决策支持系统来最终改善医疗保健解决方案。社区驱动的患者分层。

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