A problem that has been complicating ICT support to algorithms in healthcare is the
nature of information that healthcare deals with, its non-trivial semantics and
traditional models of handling this information. To make automatic computerized
processing of biomedical information possible, its semantic value must be properly
represented (and evaluated) in a computer-comprehensible form. To facilitate correct
processing of biomedical data and their semantics, we have designed the MediGrid, a
working tool for representation and processing of domain ontologies in biomedicine.
2 Materials and Methods
MediGrid aims to facilitate automatic processing of biomedical data with
scientifically relevant knowledge transformed into computational algorithms, using
up-to-date information technologies.
MediGrid approach is based on representation of biomedical data and algorithms as
resources, and on sharing these resources in a grid-like environment. The natural way
of assigning biomedical algorithms to data (or vice versa) is by comparing their
semantic values; therefore MediGrid builds its mechanisms of sharing on capturing
and processing of semantic information. Results from previous projects (SMARTIE,
Growth) have been used as a base for our work: we used existing algorithms
(Growth, MEDAL) to verify our results and we used our experience from SMARTIE
to structure semantic information.
3 Results
Based on extensive research and on previous work, we have postulated the basis of
MediGrid as the working tool for analyzing algorithm-related ontologies in medicine
and for realizing (and practically implementing) their potential for data processing.
The key principles of MediGrid can be expressed as follows:
1. Data processed by biomedical algorithms are (following the philosophical
tradition of husserlian phenomenology) indicators that can be transformed
into other indicators and grouped into indicator classes by their roles in these
transformations.
2. Data and algorithms can be shared across conceptual domains if documented
semantic links exist to support such interconnection.
The emphasize on semantics of both algorithms and data, the need for its extensive
review and verification when linking data with algorithms, and also the stress on cor-
rect procedures (lege artis) in medicine bring practical requirements on design and
implementation of a knowledge-processing system based on these theoretical princi-
ples:
• Semantic information (meaning for the human user) of both indicator classes
and transformations must be explicitly described and available for assess-
ment and validation.
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