Abstract (EN):
Organ transplantation is a highly complex decision process
that requires expert decisions. The major problem in a transplantation
procedure is the possibility of the receiver's immune system attack and
destroy the transplanted tissue. It is therefore of capital importance to
nd a donor with the highest possible compatibility with the receiver, and
thus reduce rejection. Finding a good donor is not a straightforward task
because a complex network of relations exists between the immunological
and the clinical variables that in
uence the receiver's acceptance of the
transplanted organ. Currently the process of analyzing these variables
involves a careful study by the clinical transplant team. The number and
complexity of the relations between variables make the manual process
very slow. In this paper we propose and compare two Machine Learning
algorithms that might help the transplant team in improving and speeding
up their decisions. We achieve that objective by analyzing past real cases
and constructing models as set of rules. Such models are accurate and
understandable by experts.
Language:
English
Type (Professor's evaluation):
Scientific
Contact:
Rui Camacho
No. of pages:
8
License type: