Hidden big data analytics issues in the healthcare industry

Health Informatics J. 2020 Jun;26(2):981-998. doi: 10.1177/1460458219854603. Epub 2019 Jul 2.

Abstract

The goal of the study was to identify big data analysis issues that can impact empirical research in the healthcare industry. To accomplish that the author analyzed big data related keywords from a literature review of peer reviewed journal articles published since 2011. Topics, methods and techniques were summarized along with strengths and weaknesses. A panel of subject matter experts was interviewed to validate the intermediate results and synthesize the key problems that would likely impact researchers conducting quantitative big data analysis in healthcare studies. The systems thinking action research method was applied to identify and describe the hidden issues. The findings were similar to the extant literature but three hidden fatal issues were detected. Methodical and statistical control solutions were proposed to overcome the three fatal healthcare big data analysis issues.

Keywords: big data body of knowledge; big data paradigm; big data privacy; big data security; exponential Weibull trend; kappa interrater agreement; literature review.

MeSH terms

  • Big Data*
  • Data Analysis*
  • Data Science
  • Delivery of Health Care
  • Health Care Sector* / standards
  • Health Care Sector* / statistics & numerical data
  • Humans