Leveraging Big Data Analytics in Healthcare Enhancement: Trends,
Challenges and Opportunities
- URL: http://arxiv.org/abs/2004.09010v1
- Date: Sun, 5 Apr 2020 06:46:58 GMT
- Title: Leveraging Big Data Analytics in Healthcare Enhancement: Trends,
Challenges and Opportunities
- Authors: Arshia Rehman, Saeeda Naz, Imran Razzak
- Abstract summary: We present the emerging landscape of big data and analytical techniques in the five sub-disciplines of healthcare.
The paper ends with the notable applications and challenges in adoption of big data analytics in healthcare.
- Score: 8.769092306409933
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Clinicians decisions are becoming more and more evidence-based meaning in no
other field the big data analytics so promising as in healthcare. Due to the
sheer size and availability of healthcare data, big data analytics has
revolutionized this industry and promises us a world of opportunities. It
promises us the power of early detection, prediction, prevention and helps us
to improve the quality of life. Researchers and clinicians are working to
inhibit big data from having a positive impact on health in the future.
Different tools and techniques are being used to analyze, process, accumulate,
assimilate and manage large amount of healthcare data either in structured or
unstructured form. In this paper, we would like to address the need of big data
analytics in healthcare: why and how can it help to improve life?. We present
the emerging landscape of big data and analytical techniques in the five
sub-disciplines of healthcare i.e.medical image analysis and imaging
informatics, bioinformatics, clinical informatics, public health informatics
and medical signal analytics. We presents different architectures, advantages
and repositories of each discipline that draws an integrated depiction of how
distinct healthcare activities are accomplished in the pipeline to facilitate
individual patients from multiple perspectives. Finally the paper ends with the
notable applications and challenges in adoption of big data analytics in
healthcare.
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