Data Visualization of Big Data for Predictive and Descriptive Analytics for Stroke, COVID-19, and Diabetes

Data Visualization of Big Data for Predictive and Descriptive Analytics for Stroke, COVID-19, and Diabetes

Richard S. Segall, Soichiro Takashashi
Copyright: © 2023 |Pages: 31
DOI: 10.4018/IJBDAH.331996
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Abstract

Visualization of big data is crucial for meaningful interpretations and especially for healthcare. Brief discussions are made for big data, background for healthcare, and recent work in big data analytics for healthcare. This research pertains to different levels of big data: 5,110 vs. 101,766 vs. 320,200 vs. 1 million data values. Data visualizations and predictive analytics are presented of big data for selected diseases of stroke with 5,110 data values, diabetes with 101,766 data values, and two COVID-19 studies: one with 320,200 data values and another with 1 million data values. Data visualizations are generated for these diseases with big data using Tableau. For stroke patients, an investigation was performed to determine how different living environments affect relationship between strokes. The data visualizations for diabetes showed impact of insulin use yielded reduced hospital stays. Data visualizations for COVID-19 provided temporal trends in confirmed cases, mortality, and recovery rates for 2020-2023. Conclusions and future directions of research are presented.
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Research Background And Motivations

Yee et al. (2020) discussed the implications of big data on healthcare and its future steps with uses for clinical decision-making, research and development, population health and surveillance, detecting fraud, prediction capabilities, Google Trends, and preventive measures. They referred to Chen et al. (2016), describing a cognitive computing tool developed by IBM. The tool, named Watson, has been applied to big data challenges in life sciences research by integrating and analyzing big data that includes medical literature, patents, genomics, and chemical and pharmacological data. Chen et al. (2016) specifically discussed the application of IBM Watson to explore big data for cancer kinases.

Healthcare applications that have used big data include those for cancer research, disease detection, and population health. Big data has changed how researchers understand diseases, providing access to patient information, trends, and patterns that were not accessible before. Companies that use big data in healthcare applications include:

  • Cancer research carried out by Tempus in Chicago, Illinois (USA) and Flatiron Health in New York City (USA)

  • Early disease detection by Pieces in Irving, Texas (USA) and Prognos in New York City (USA)

  • Population health research conducted by Amitech in Creve Coeur, Missouri (USA), Linguamatics in Marlborough, Massachusetts, and Socially Determined in Washington, DC (USA). (Schroer, 2023)

Pramanik et al. (2022) provided a comprehensive overview of healthcare big data that extends the traditional 5 V’s to 10 V’s for healthcare big data: Volume, Velocity, Variety, Veracity, Validity, Viability, Volatility, Vulnerability, Visualization, and Value. Each of these are defined as below in Table 1 where the traditional 5 V’s are listed as the first five.

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