DocumentCode
806599
Title
Performance of AI methods in detecting melanoma
Author
Kjoelen, Arve ; Thompson, Marc J. ; Umbaugh, Scott E. ; Moss, Randy H. ; Stoecker, Wiliam V.
Author_Institution
Dept. of Electr. Eng., Southern Illinois Univ., Edwardsville, IL, USA
Volume
14
Issue
4
fYear
1995
Firstpage
411
Lastpage
416
Abstract
This research has shown that features extracted from color skin tumor images by computer vision methods can be reliable discriminators of malignant tumors from benign ones. Reliability was demonstrated by the monotonically increasing success ratios with increasing training set size and by the small standard deviations from the mean success rates. An average success rate of 70 percent in diagnosing melanoma was attained for a training set size of 60 percent. The presence or absence of atypical moles in the training and test sets was shown to have a dramatic impact on the effectiveness of the generated classification rules. This was the case with both AIM and lst-Class, and indicates a high potential for success if a method can be found for discriminating between atypical moles and melanoma
Keywords
artificial intelligence; computer vision; feature extraction; medical image processing; skin; 35 mm; 35 mm color slides; AI methods performance; AIM numeric modeling tool; atypical moles; benign tumors; color skin tumor images; computer vision methods; lst-Class software; mean success rates; medical diagnostic imaging; melanoma detection; monotonically increasing success ratios; training set size; Artificial intelligence; Computer languages; Decision trees; Induction generators; Malignant tumors; Operating systems; Pixel; Skin neoplasms; Spatial resolution; Sun;
fLanguage
English
Journal_Title
Engineering in Medicine and Biology Magazine, IEEE
Publisher
ieee
ISSN
0739-5175
Type
jour
DOI
10.1109/51.395323
Filename
395323
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