Validation of a new multiple osteochondromas classification through Switching Neural Networks
Articolo
Data di Pubblicazione:
2013
Abstract:
Multiple osteochondromas (MO), previously known as hereditary
multiple exostoses (HME), is an autosomal dominant
disease characterized by the formation of several benign
cartilage-capped bone growth defined osteochondromas or exostoses.
Various clinical classifications have been proposed but a
consensus has not been reached. The aim of this study was to
validate (using a machine learning approach) an ''easy to use''
tool to characterizeMOpatients in three classes according to the
number of bone segments affected, the presence of skeletal
deformities and/or functional limitations. The proposed classification
has been validated (with a highly satisfactory mean
accuracy) by analyzing 150 different variables on 289 MO
patients through a Switching Neural Network approach (a novel
classification technique capable of deriving models described by
intelligible rules in if-then form). This approach allowed us to
identify ankle valgism, Madelung deformity and limitation of the
hip extra-rotation as ''tags'' of the three clinical classes. In
conclusion, the proposed classification provides an efficient
system to characterize this rare disease and is able to define
homogeneous cohorts of patients to investigate MO pathogenesis.
Tipologia CRIS:
01.01 Articolo in rivista
Keywords:
multiple osteochondromas; patients classification; EXT1/EXT2; switching neural network; genotype-phenotype correlation
Elenco autori:
Muselli, Marco
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