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Big Health Data and Cardiovascular Diseases: A Challenge for Research, an Opportunity for Clinical Care

机译:大健康数据和心血管疾病:研究挑战,临床护理机会

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Cardiovascular disease (CVD) accounts for the majority of death and hospitalization, health care expenditures and loss of productivity in developed country. CVD research, thus, plays a key role for improving patients' outcomes as well as for the sustainability of health systems. The increasing costs and complexity of modern medicine along with the fragmentation in healthcare organizations interfere with improving quality care and represent a missed opportunity for research. The advancement in diagnosis, therapy and prognostic evaluation of patients with CVD, indeed, is frustrated by limited data access to selected small patient populations, not standardized nor computable definition of disease and lack of approved relevant patient-centered outcomes. These critical issues results in a deep mismatch between randomized controlled trials and real-world setting, heterogeneity in treatment response and wide inter-individual variation in prognosis. Big data approach combines millions of people's electronic health records (EHR) from different resources and provides a new methodology expanding data collection in three direction: high volume, wide variety and extreme acquisition speed. Large population studies based on EHR holds much promise due to low costs, diminished study participant burden, and reduced selection bias, thus offering an alternative to traditional ascertainment through biomedical screening and tracing processes. By merging and harmonizing large data sets, the researchers aspire to build algorithms that allow targeted and personalized CVD treatments. In current paper, we provide a critical review of big health data for cardiovascular research, focusing on the opportunities of this largely free data analytics and the challenges in its realization.
机译:心血管疾病(CVD)占大多数死亡和住院治疗,医疗保健支出和发达国生产力的损失。因此,CVD研究对改善患者的结果以及卫生系统的可持续性起着关键作用。现代医学的成本和复杂性以及医疗保健组织的碎片干扰了改善质量护理,代表了一个错过的研究机会。实际上,CVD患者的诊断,治疗和预后评估的进步是通过有限的数据访问对所选小患者群体的限制,而不是疾病的可计算定义,并且缺乏批准的相关患者以患者为中心的结果。这些关键问题导致随机对照试验和真实世界之间的深度不匹配,治疗反应中的异质性和预后的各种间间变异。大数据方法将数百万人的电子健康记录(EHR)与不同的资源相结合,并在三方向上扩展了数据收集的新方法:高批量,品种繁多和极端采集速度。基于EHR的大型人口研究由于成本低,研究参与者负担减少和减少选择偏差,因此通过生物医学筛选和跟踪过程提供替代传统的确定。通过合并和协调大型数据集,研究人员渴望构建允许有针对性和个性化CVD治疗的算法。在目前的论文中,我们对心血管研究的大健康数据提供了关键综述,重点是这一大部分免费数据分析的机遇以及实现其实现中的挑战。

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