Automatic Diagnosis of Parkinson Disease through Handwriting Analysis: A Cartesian Genetic Programming Approach
Created by W.Langdon from
gp-bibliography.bib Revision:1.8051
- @InProceedings{Senatore:2019:CBMS,
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author = "Rosa Senatore and Antonio {Della Cioppa} and
Angelo Marcelli",
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title = "Automatic Diagnosis of {Parkinson} Disease through
Handwriting Analysis: A Cartesian Genetic Programming
Approach",
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booktitle = "IEEE 32nd International Symposium on Computer-Based
Medical Systems, CBMS 2019",
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year = "2019",
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pages = "312--317",
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address = "Cordoba, Spain",
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month = "5-7 " # jun,
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keywords = "genetic algorithms, genetic programming, Cartesian
Genetic Programming, Explainable Artificial
Intelligence, XAI, Parkinson's disease, E-Health,
Evolutionary Computation",
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DOI = "doi:10.1109/CBMS.2019.00071",
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size = "6 pages",
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abstract = "Early disease identification through non-invasive and
automatic techniques has gathered increasing interest
by the scientific community in the last decades. In
this context, Parkinsons Disease (PD) has received
particular attention in that it is a severe and
progressive neurodegenerative disease and, therefore,
early diagnosis would provide more prompt and effective
intervention strategies. This, in turn, would
successfully influence the life expectancy of the
patients. However, the acceptance of computer-based
diagnosis by doctors is hampered by the black-box
approach implemented by the most performing systems,
such as Artificial Neural Networks and Support Vector
Machines, which do not explicit the rules adopted by
the system. In this context, we propose a Cartesian
Genetic Programming, aimed at automatically identify PD
through the analysis of handwriting performed by PD
patients and healthy controls. The use of such approach
is particularly interesting in that it allows to infer
explicit models of classification and, at same time, to
automatically identify a suitable subset of features
relevant for a correct diagnosis. The approach has been
evaluated on the features extracted from the
handwriting samples contained in the publicly available
PaHaW dataset. Experimental results show that our
approach compares favourably with state-of-the-art
methods and, more importantly, provides an explicit
model of the classification criteria.",
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notes = "Natural Computation Lab, DIEM, Universita degli Studi
di Salerno Also known as \cite{8787399}",
- }
Genetic Programming entries for
Rosa Senatore
Antonio Della Cioppa
Angelo Marcelli
Citations