DocumentCode :
2544289
Title :
Image processing and neural computing used in the diagnosis of tuberculosis
Author :
Veropoulos, Konstantinos ; Campbell, Colin ; Learmonth, Genevieve
Author_Institution :
Fac. of Eng., Bristol Univ., UK
fYear :
1998
fDate :
36088
Firstpage :
42583
Lastpage :
42586
Abstract :
A method far automating the detection of tubercle bacilli in sputum specimens is described. A fluorescence microscope with an attached digital camera is used to manually locate and capture images of tubercle bacilli. The method comprises two phases: (a) image processing and analysis techniques are applied to the images for enhancement and feature extraction; (b) object recognition techniques are used for the automatic identification of tubercle bacilli in the images. The eventual implementation of the system will be semi-automatic, where the best candidate images containing bacilli are presented to the medical technologist together with a bacillus count, confidence measures and recommended diagnosis. The final diagnosis could be performed by the technologist in less than a minute for typical cases. Furthermore, the results should be more accurate due to the higher number of view-fields processed. The study presented in this paper indicates that machine-assisted diagnosis of tuberculosis is certainly feasible
Keywords :
medical image processing; automatic identification; bacillus count; confidence measures; digital camera; feature extraction; fluorescence microscope; image analysis techniques; image enhancement; image processing; machine-assisted diagnosis; neural computing; object recognition techniques; semi-automatic implementation; sputum specimens; tubercle bacilli detection; tuberculosis diagnosis; view-fields;
fLanguage :
English
Publisher :
iet
Conference_Titel :
Intelligent Methods in Healthcare and Medical Applications (Digest No. 1998/514), IEE Colloquium on
Conference_Location :
York
Type :
conf
DOI :
10.1049/ic:19981039
Filename :
744745
Link To Document :
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