ABSTRACT
The Machine Learning (ML) field has gained its
momentum in almost any domain of research and just recently has become a
reliable tool in the medical domain. The empirical domain of automatic learning
is used in tasks such as medical decision support, medical imaging,
protein-protein interaction, extraction of medical knowledge, and for overall
patient management care. ML is envisioned as a tool by which computer-based
systems can be integrated in the healthcare field in order to get a better,
more efficient medical care. This paper describes a ML-based methodology for
building an application that is capable of identifying and disseminating
healthcare information. It extracts sentences from published medical papers
that mention diseases and treatments, and identifies semantic relations that
exist between diseases and treatments. Our evaluation results for these tasks
show that the proposed methodology obtains reliable outcomes that could be
integrated in an application to be used in the medical care domain. The
potential value of this paper stands in the ML settings that we propose and in
the fact that we outperform previous results on the same data set.
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