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Big Data and Biomedical Informatics: A Challenging Opportunity

Identifieur interne : 000416 ( Pmc/Curation ); précédent : 000415; suivant : 000417

Big Data and Biomedical Informatics: A Challenging Opportunity

Auteurs : Riccardo Bellazzi

Source :

RBID : PMC:4287065

Abstract

Summary

Big data are receiving an increasing attention in biomedicine and healthcare. It is therefore important to understand the reason why big data are assuming a crucial role for the biomedical informatics community. The capability of handling big data is becoming an enabler to carry out unprecedented research studies and to implement new models of healthcare delivery. Therefore, it is first necessary to deeply understand the four elements that constitute big data, namely Volume, Variety, Velocity, and Veracity, and their meaning in practice. Then, it is mandatory to understand where big data are present, and where they can be beneficially collected. There are research fields, such as translational bioinformatics, which need to rely on big data technologies to withstand the shock wave of data that is generated every day. Other areas, ranging from epidemiology to clinical care, can benefit from the exploitation of the large amounts of data that are nowadays available, from personal monitoring to primary care. However, building big data-enabled systems carries on relevant implications in terms of reproducibility of research studies and management of privacy and data access; proper actions should be taken to deal with these issues. An interesting consequence of the big data scenario is the availability of new software, methods, and tools, such as map-reduce, cloud computing, and concept drift machine learning algorithms, which will not only contribute to big data research, but may be beneficial in many biomedical informatics applications. The way forward with the big data opportunity will require properly applied engineering principles to design studies and applications, to avoid preconceptions or over-enthusiasms, to fully exploit the available technologies, and to improve data processing and data management regulations.


Url:
DOI: 10.15265/IY-2014-0024
PubMed: 24853034
PubMed Central: 4287065

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PMC:4287065

Le document en format XML

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<p>Big data are receiving an increasing attention in biomedicine and healthcare. It is therefore important to understand the reason why big data are assuming a crucial role for the biomedical informatics community. The capability of handling big data is becoming an enabler to carry out unprecedented research studies and to implement new models of healthcare delivery. Therefore, it is first necessary to deeply understand the four elements that constitute big data, namely Volume, Variety, Velocity, and Veracity, and their meaning in practice. Then, it is mandatory to understand where big data are present, and where they can be beneficially collected. There are research fields, such as translational bioinformatics, which need to rely on big data technologies to withstand the shock wave of data that is generated every day. Other areas, ranging from epidemiology to clinical care, can benefit from the exploitation of the large amounts of data that are nowadays available, from personal monitoring to primary care. However, building big data-enabled systems carries on relevant implications in terms of reproducibility of research studies and management of privacy and data access; proper actions should be taken to deal with these issues. An interesting consequence of the big data scenario is the availability of new software, methods, and tools, such as map-reduce, cloud computing, and concept drift machine learning algorithms, which will not only contribute to big data research, but may be beneficial in many biomedical informatics applications. The way forward with the big data opportunity will require properly applied engineering principles to design studies and applications, to avoid preconceptions or over-enthusiasms, to fully exploit the available technologies, and to improve data processing and data management regulations.</p>
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<aff>Department of Electrical, Computer and Biomedical Engineering,
<institution>University of Pavia</institution>
,
<addr-line>Italy</addr-line>
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<author-notes>
<corresp>Correspondence to:</corresp>
<corresp id="cor1">Riccardo Bellazzi, Biomedical Informatics Labs “Mario Stefanelli”, Department of Electric, Computer and Biomedical Engineering, University of Pavia,
<phone>+39 0382 985720</phone>
,
<phone>+39 0382 985059</phone>
,
<phone>+39 0382 985981</phone>
,
<fax>+39 0382 985373</fax>
,
<email>riccardo.bellazzi@unipv.it</email>
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<month>5</month>
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<volume>9</volume>
<issue>1</issue>
<fpage>8</fpage>
<lpage>13</lpage>
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<copyright-statement>© IMIA and Schattauer GmbH 2014</copyright-statement>
<copyright-year>2014</copyright-year>
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<abstract>
<title>Summary</title>
<p>Big data are receiving an increasing attention in biomedicine and healthcare. It is therefore important to understand the reason why big data are assuming a crucial role for the biomedical informatics community. The capability of handling big data is becoming an enabler to carry out unprecedented research studies and to implement new models of healthcare delivery. Therefore, it is first necessary to deeply understand the four elements that constitute big data, namely Volume, Variety, Velocity, and Veracity, and their meaning in practice. Then, it is mandatory to understand where big data are present, and where they can be beneficially collected. There are research fields, such as translational bioinformatics, which need to rely on big data technologies to withstand the shock wave of data that is generated every day. Other areas, ranging from epidemiology to clinical care, can benefit from the exploitation of the large amounts of data that are nowadays available, from personal monitoring to primary care. However, building big data-enabled systems carries on relevant implications in terms of reproducibility of research studies and management of privacy and data access; proper actions should be taken to deal with these issues. An interesting consequence of the big data scenario is the availability of new software, methods, and tools, such as map-reduce, cloud computing, and concept drift machine learning algorithms, which will not only contribute to big data research, but may be beneficial in many biomedical informatics applications. The way forward with the big data opportunity will require properly applied engineering principles to design studies and applications, to avoid preconceptions or over-enthusiasms, to fully exploit the available technologies, and to improve data processing and data management regulations.</p>
</abstract>
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<title>Keywords</title>
<kwd>Big data</kwd>
<kwd>data analytics</kwd>
<kwd>research reproducibility</kwd>
<kwd>cloud</kwd>
<kwd>NoSQL</kwd>
<kwd>map-reduce</kwd>
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