
		<paper>
			<loc>https://jjcit.org/paper/23</loc>
			<title>BIG DATA IN HEALTHCARE:REVIEW AND OPEN RESEARCH ISSUES</title>
			<doi>10.5455/jjcit.71-1476816159</doi>
			<authors>Mohammad Ashraf Ottom</authors>
			<keywords>Big data,Healthcare,Hadoop,Google flu trends,Big data challenges,Cycle of big data management.</keywords>
			<citation>2</citation>
			<views>7839</views>
			<downloads>2000</downloads>
			<received_date>2016-10-18</received_date>
			<revised_date>2016-12-29</revised_date>
			<accepted_date>2017-01-21</accepted_date>
			<abstract>The  globe  is  generating a high  volume  of  data  in  all  domains, such  as  social  media,  industries, stock 
markets  and  healthcare  systems. Most  of data  volume has been  generated  in  the  past  two  years. This 
massive  amount  of  data  can  bring  benefits  and  draw  knowledge  to  individuals,  governments and 
industries  and assist  in decision making. In  healthcare, an enormous  volume  of  data is generated  from 
healthcare  providers  and stored  in  digital  systems.  Hence,  data  are  more  accessible  for  reference  and 
future use. The ultimate vision for working with health big data is to support the process of improving the 
quality  of  service  in  healthcare  providers, reducing medical mistakes  and providing a  promoting 
consultation in addition to providing answers when needed. This paper provides a critical review of some 
applications  of big data  in  healthcare, such  as the flu-prediction  project  by  the Institute  of  Cognitive 
Sciences,  which  combines  social  media data with  governmental  data.  The project aim  is  to provide  swift 
response  about  flu-related questions. The  project  should  study  human  multi-modal  representations, such 
as  text,  voice  and  images.  Moreover,  integrating  social  media  data  with  governmental health  data could 
create  some  challenges,  because  governmental  health  data are considered  as  more  accurate  than 
subjective  opinions  on  social  media. Another  attempt  to  utilize big data  in  healthcare  is Google  Flu 
Trends GFT. GFT collects search queries from users to predict flu activity and outbreak. GFT performed 
well  for  the  first  two  to  three  years; however,  it  started  to  perform  worse  since  2011  due  to  people 
behaviour  changes. GFT  did not  update  the  prediction  model  based  on new  data  released  by  the  Centre 
for Disease Control and Prevention-US (CDC). On the other hand, ARGO (Auto Regression with Google) 
performed  better  than  all  previously  available  influenza  models, because  it  adjusts  people  behaviour 
changes  and  relies  on  current  publicly  available  data  from  google-search  and  CDC. This  research  also 
describes,  analayzes and  reflects the  value  of big data  in  healthcare.  Big data  has  been  introduced  and 
defined  based  on  the  most  agreed  terms.  The  paper also explains big data  revenue  forecast  for  the  year 
2017  and  historical  revenue  in  three  main  domains:  services,  hardware  and  software.  Big data 
management  cycle has  been reviewed  and  the  main  aspects  of big data  in  healthcare  (volume,  velocity, 
variety  and  veracity)  have  been  discussed.  Finally,  a  discussion has  been  made of  some  challenges  that 
face  individuals  and  organizations  in  the  process  of  utilizing big data  in  healthcare, such  as  data 
ownership, privacy, security, clinical data linkage, storage and processing issues and skills requirements.</abstract>
		</paper>


