DocumentCode :
9118
Title :
Evolving Classifiers to Recognize the Movement Characteristics of Parkinson´s Disease Patients
Author :
Lones, Michael A. ; Smith, Stephen L. ; Alty, Jane E. ; Lacy, Stuart E. ; Possin, Katherine L. ; Jamieson, D. R. Stuart ; Tyrrell, Andy M.
Author_Institution :
Univ. of York, York, UK
Volume :
18
Issue :
4
fYear :
2014
fDate :
Aug. 2014
Firstpage :
559
Lastpage :
576
Abstract :
Parkinson´s disease is a debilitating neurological condition that affects approximately 1 in 500 people and often leads to severe disability. To improve clinical care, better assessment tools are needed that increase the accuracy of differential diagnosis and disease monitoring. In this paper, we report how we have used evolutionary algorithms to induce classifiers capable of recognizing the movement characteristics of Parkinson´s disease patients. These diagnostically relevant patterns of movement are known to occur over multiple time scales. To capture this, we used two different classifier architectures: sliding-window genetic programming classifiers, which model over-represented local patterns that occur within time series data, and artificial biochemical networks, computational dynamical systems that respond to dynamical patterns occurring over longer time scales. Classifiers were trained and validated using movement recordings of 49 patients and 41 age-matched controls collected during a recent clinical study. By combining classifiers with diverse behaviors, we were able to construct classifier ensembles with diagnostic accuracies in the region of 95%, comparable to the accuracies achieved by expert clinicians. Further analysis indicated a number of features of diagnostic relevance, including the differential effect of handedness and the over-representation of certain patterns of acceleration.
Keywords :
diseases; genetic algorithms; medical diagnostic computing; medical signal processing; neurophysiology; patient diagnosis; patient monitoring; signal classification; time series; Parkinson´s disease patients; artificial biochemical networks; computational dynamical systems; diagnostic relevance; differential diagnosis; differential handedness effect; disease monitoring; evolutionary algorithms; movement characteristic recognition; neurological condition; over-represented local patterns model; sliding-window genetic programming classifiers; time series data; Biological system modeling; Context; Diseases; Evolutionary computation; Medical diagnostic imaging; Standards; Time series analysis; Artificial biochemical networks; Automated disease diagnosis; Classification; Genetic programming; Time series analysis; automated disease diagnosis; classification; genetic programming; time series analysis;
fLanguage :
English
Journal_Title :
Evolutionary Computation, IEEE Transactions on
Publisher :
ieee
ISSN :
1089-778X
Type :
jour
DOI :
10.1109/TEVC.2013.2281532
Filename :
6600775
Link To Document :
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