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      Can advanced analytics fix modern medicine's problem of uncertainty, imprecision, and inaccuracy?

      1 , 2 , 1 , 2 , 3 , 4 , 5
      European Journal of Heart Failure
      Wiley

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          Most cited references9

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          Many Analysts, One Data Set: Making Transparent How Variations in Analytic Choices Affect Results

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            Big data and new knowledge in medicine: the thinking, training, and tools needed for a learning health system.

            Big data in medicine--massive quantities of health care data accumulating from patients and populations and the advanced analytics that can give those data meaning--hold the prospect of becoming an engine for the knowledge generation that is necessary to address the extensive unmet information needs of patients, clinicians, administrators, researchers, and health policy makers. This article explores the ways in which big data can be harnessed to advance prediction, performance, discovery, and comparative effectiveness research to address the complexity of patients, populations, and organizations. Incorporating big data and next-generation analytics into clinical and population health research and practice will require not only new data sources but also new thinking, training, and tools. Adequately utilized, these reservoirs of data can be a practically inexhaustible source of knowledge to fuel a learning health care system.
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              Is Open Access

              Big data from electronic health records for early and late translational cardiovascular research: challenges and potential

              Abstract Aims Cohorts of millions of people's health records, whole genome sequencing, imaging, sensor, societal and publicly available data present a rapidly expanding digital trace of health. We aimed to critically review, for the first time, the challenges and potential of big data across early and late stages of translational cardiovascular disease research. Methods and results We sought exemplars based on literature reviews and expertise across the BigData@Heart Consortium. We identified formidable challenges including: data quality, knowing what data exist, the legal and ethical framework for their use, data sharing, building and maintaining public trust, developing standards for defining disease, developing tools for scalable, replicable science and equipping the clinical and scientific work force with new inter-disciplinary skills. Opportunities claimed for big health record data include: richer profiles of health and disease from birth to death and from the molecular to the societal scale; accelerated understanding of disease causation and progression, discovery of new mechanisms and treatment-relevant disease sub-phenotypes, understanding health and diseases in whole populations and whole health systems and returning actionable feedback loops to improve (and potentially disrupt) existing models of research and care, with greater efficiency. In early translational research we identified exemplars including: discovery of fundamental biological processes e.g. linking exome sequences to lifelong electronic health records (EHR) (e.g. human knockout experiments); drug development: genomic approaches to drug target validation; precision medicine: e.g. DNA integrated into hospital EHR for pre-emptive pharmacogenomics. In late translational research we identified exemplars including: learning health systems with outcome trials integrated into clinical care; citizen driven health with 24/7 multi-parameter patient monitoring to improve outcomes and population-based linkages of multiple EHR sources for higher resolution clinical epidemiology and public health. Conclusion High volumes of inherently diverse (‘big’) EHR data are beginning to disrupt the nature of cardiovascular research and care. Such big data have the potential to improve our understanding of disease causation and classification relevant for early translation and to contribute actionable analytics to improve health and healthcare.
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                Author and article information

                Journal
                European Journal of Heart Failure
                Eur J Heart Fail
                Wiley
                1388-9842
                1879-0844
                December 10 2018
                December 10 2018
                Affiliations
                [1 ]Section of Cardiovascular MedicineYale University School of Medicine New Haven CT USA
                [2 ]Center for Outcomes Research and Evaluation (CORE)Yale University School of Medicine New Haven CT USA
                [3 ]Health Data Research UK and Institute of Health InformaticsUniversity College London London UK
                [4 ]Institute of Cardiovascular ScienceUniversity College London London UK
                [5 ]Division Heart & Lungs, Department of Cardiology, University Medical Center UtrechtUtrecht University Utrecht The Netherlands
                Article
                10.1002/ejhf.1370
                a628f8bd-1aba-421f-9ce9-1eda7d82889b
                © 2018

                http://doi.wiley.com/10.1002/tdm_license_1.1

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