DocumentCode :
1252471
Title :
Multiobjective genetic optimization of diagnostic classifiers with implications for generating receiver operating characteristic curves
Author :
Kupinski, Matthew A. ; Anastasio, Mark A.
Author_Institution :
Dept. of Radiol., Chicago Univ., IL, USA
Volume :
18
Issue :
8
fYear :
1999
Firstpage :
675
Lastpage :
685
Abstract :
It is well understood that binary classifiers have two implicit objective functions (sensitivity and specificity) describing their performance. Traditional methods of classifier training attempt to combine these two objective functions (or two analogous class performance measures) into one so that conventional scalar optimization techniques can be utilized. This involves incorporating a priori information into the aggregation method so that the resulting performance of the classifier is satisfactory for the task at hand. The authors have investigated the use of a niched Pareto multiobjective genetic algorithm (GA) for classifier optimization. With niched Pareto GA´s, an objective vector is optimized instead of a scalar function, eliminating the need to aggregate classification objective functions. The niched Pareto GA returns a set of optimal solutions that are equivalent in the absence of any information regarding the preferences of the objectives. The a priori knowledge that was used for aggregating the objective functions in conventional classifier training can instead be applied post-optimization to select from one of the series of solutions returned from the multiobjective genetic optimization. The authors have applied this technique to train a linear classifier and an artificial neural network (ANN), using simulated datasets. The performances of the solutions returned from the multiobjective genetic optimization represent a series of optimal (sensitivity, specificity) pairs, which can be thought of as operating points on a receiver operating characteristic (ROC) curve. All possible ROC curves for a given dataset and classifier are less than or equal to the ROC curve generated by the niched Pareto genetic optimization.
Keywords :
genetic algorithms; image classification; medical image processing; neural nets; a priori information; analogous class performance measures; artificial neural network; classifier optimization; diagnostic classifiers; linear classifier training; multiobjective genetic optimization; niched Pareto genetic optimization; niched Pareto multiobjective genetic algorithm; objective vector; optimal solutions set; receiver operating characteristic curves generation; scalar function; simulated datasets; Artificial neural networks; Biomedical imaging; Diseases; Feature extraction; Genetic algorithms; Medical diagnostic imaging; Pareto optimization; Pathology; Radiology; Sensitivity and specificity; Algorithms; Diagnosis, Computer-Assisted; Neural Networks (Computer); ROC Curve;
fLanguage :
English
Journal_Title :
Medical Imaging, IEEE Transactions on
Publisher :
ieee
ISSN :
0278-0062
Type :
jour
DOI :
10.1109/42.796281
Filename :
796281
Link To Document :
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