Title of article
Prediction of Pathological Subjects Using Genetic Algorithms
Author/Authors
Sari, Murat Department of Mathematics - Yildiz Technical University - Esenler - Istanbul, Turkey , Tuna, Can Department of Mathematics - Yildiz Technical University - Esenler - Istanbul, Turkey
Pages
9
From page
1
To page
9
Abstract
Tis paper aims at estimating pathological subjects from a population through various physical information using genetic algorithm
(GA). For comparison purposes, K-Means (KM) clustering algorithm has also been used for the estimation. Dataset consisting of
some physical factors (age, weight, and height) and tibial rotation values was provided from the literature. Tibial rotation types are
four groups as RTER, RTIR, LTER, and LTIR. Each tibial rotation group is divided into three types. Narrow (Type 1) and wide (Type
3) angular values were called pathological and normal (Type 2) angular values were called nonpathological. Physical information
was used to examine if the tibial rotations of the subjects were pathological. Since the GA starts randomly and walks all solution
space, the GA is seen to produce far better results than the KM for clustering and optimizing the tibial rotation data assessments
with large number of subjects even though the KM algorithm has similar efect with the GA in clustering with a small number of
subjects. Tese fndings are discovered to be very useful for all health workers such as physiotherapists and orthopedists, in which
this consequence is expected to help clinicians in organizing proper treatment programs for patients.
Keywords
Genetic , KM , LTER , Pathological
Journal title
Computational and Mathematical Methods in Medicine
Serial Year
2018
Full Text URL
Record number
2611242
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