Title of article :
Unveiling relevant non-motor Parkinsonʹs disease severity symptoms using a machine learning approach
Author/Authors :
Armaٌanzas، نويسنده , , Rubén and Bielza، نويسنده , , Concha and Chaudhuri، نويسنده , , Kallol Ray and Martinez-Martin، نويسنده , , Pablo and Larraٌaga، نويسنده , , Pedro، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2013
Abstract :
AbstractObjective
possible to predict the severity staging of a Parkinsonʹs disease (PD) patient using scores of non-motor symptoms? This is the kickoff question for a machine learning approach to classify two widely known PD severity indexes using individual tests from a broad set of non-motor PD clinical scales only.
s
ehn & Yahr index and clinical impression of severity index are global measures of PD severity. They constitute the labels to be assigned in two supervised classification problems using only non-motor symptom tests as predictor variables. Such predictors come from a wide range of PD symptoms, such as cognitive impairment, psychiatric complications, autonomic dysfunction or sleep disturbance. The classification was coupled with a feature subset selection task using an advanced evolutionary algorithm, namely an estimation of distribution algorithm.
s
s show how five different classification paradigms using a wrapper feature selection scheme are capable of predicting each of the class variables with estimated accuracy in the range of 72–92%. In addition, classification into the main three severity categories (mild, moderate and severe) was split into dichotomic problems where binary classifiers perform better and select different subsets of non-motor symptoms. The number of jointly selected symptoms throughout the whole process was low, suggesting a link between the selected non-motor symptoms and the general severity of the disease.
sion
tative results are discussed from a medical point of view, reflecting a clear translation to the clinical manifestations of PD. Moreover, results include a brief panel of non-motor symptoms that could help clinical practitioners to identify patients who are at different stages of the disease from a limited set of symptoms, such as hallucinations, fainting, inability to control body sphincters or believing in unlikely facts.
Keywords :
Estimation of Distribution Algorithms , Feature subset selection , Severity indexes , Parkinsonיs disease
Journal title :
Artificial Intelligence In Medicine
Journal title :
Artificial Intelligence In Medicine