5.2 Final Remarks
The service described in this paper offers an
innovative environment that allows users “immerse”
in Web 2.0 interaction paradigms and exploit its
enormous potential to collaborate through
reviewing, commenting on and extending the shared
content. The Dicode environment enables
stakeholders maintain chains of views and opinions,
accompanied by the supporting data, which may
reflect, at any time, the current collective knowledge
on the issue under consideration, and justify a
particular decision made or action taken.
The proposed service may fully cover the needs
of the three stages of situational awareness needed in
the above settings (Haendel et al., 2012; Kahn,
2011), namely perception (i.e. perceive the status,
attributes, and dynamics of relevant elements in the
setting under consideration), comprehension (i.e.
perform a synthesis of disjointed elements of the
previous stage through the processes of pattern
recognition, interpretation, and evaluation), and
projection (i.e. extrapolate information from
previous stages to find out how it will affect future
instances of the operational setting) (Endsley, 1995).
Moreover, the development of the proposed service
has adopted an agile, analytic and adaptive approach
that enables stakeholders to fully leverage and reap
the benefits of the associated biomedical “big data”.
Such an approach can improve the quality and
effectiveness of decisions in the context under
consideration.
The service described in this paper has been
integrated in the Dicode workbench environment (de
la Calle et al., 2012), which is a web-based
application that integrates - at the level of the user
interface - various data mining and collaboration
support services. The objective is to provide users
with a uniform and easy access to the available
Dicode services. The type and number of services
appearing on the Dicode workbench can be easily
configured by end users according to the needs of
the particular context and problem under
consideration. In such a way, current work practices
have been admittedly improved in terms of
efficiency and effectiveness. The issue of
information fragmentation as well as that of data and
decision provenance are properly addressed.
Moreover, by providing users with useful hints, our
approach enables stakeholders figuring out how to
carry out their daily tasks in a more effective way.
Finally, the proposed service enables stakeholders to
follow and adopt innovative work methodologies,
which build on the synergy of human and machine
reasoning.
Future work directions include investigation of
additional services for data-intensive computing
(e.g. services already developed in projects such as
ADMIRE - http://www.admire-project.eu),
considering whether they can be integrated in the
Dicode environment. Also, a thorough investigation
of the Dataspace concept and the related data
management abstraction (Halevy et al., 2006),
considering its suitability to the purposes of our
approach.
ACKNOWLEDGEMENTS
This publication has been produced in the context of
the EU Collaborative Project “DICODE - Mastering
Data-Intensive Collaboration and Decision”, which
is co-funded by the European Commission under the
contract FP7-ICT-257184. This publication reflects
only the authors’ views and the Community is not
liable for any use that may be made of the
information contained therein.
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