4.7 Review

Methodological challenges and analytic opportunities for modeling and interpreting Big Healthcare Data

Journal

GIGASCIENCE
Volume 5, Issue -, Pages -

Publisher

OXFORD UNIV PRESS
DOI: 10.1186/s13742-016-0117-6

Keywords

Big data; Analytics; Modeling; Information technology; Cloud services; Processing; Visualization; Workflows

Funding

  1. National Science Foundation [1416953, 0716055, 1023115]
  2. National Institutes of Health [P20 NR015331, U54 EB020406, P50 NS091856, P30 DK089503]
  3. Direct For Education and Human Resources
  4. Division Of Undergraduate Education [1416953, 1023115] Funding Source: National Science Foundation
  5. Division Of Undergraduate Education
  6. Direct For Education and Human Resources [0716055] Funding Source: National Science Foundation

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Managing, processing and understanding big healthcare data is challenging, costly and demanding. Without a robust fundamental theory for representation, analysis and inference, a roadmap for uniform handling and analyzing of such complex data remains elusive. In this article, we outline various big data challenges, opportunities, modeling methods and software techniques for blending complex healthcare data, advanced analytic tools, and distributed scientific computing. Using imaging, genetic and healthcare data we provide examples of processing heterogeneous datasets using distributed cloud services, automated and semi-automated classification techniques, and open-science protocols. Despite substantial advances, new innovative technologies need to be developed that enhance, scale and optimize the management and processing of large, complex and heterogeneous data. Stakeholder investments in data acquisition, research and development, computational infrastructure and education will be critical to realize the huge potential of big data, to reap the expected information benefits and to build lasting knowledge assets. Multi-faceted proprietary, open-source, and community developments will be essential to enable broad, reliable, sustainable and efficient data-driven discovery and analytics. Big data will affect every sector of the economy and their hallmark will be 'team science'.

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