Title :
A Neural Network Based Classifier for Acute Meningitis
Author_Institution :
Harrow Sch. of Comput. Sci., Westminster Univ., London
Abstract :
Differentiating bacterial from viral (aseptic) meningitis is still a difficult issue, compounded by factors such as age and time of presentation. Clinicians routinely rely on the results from blood and cerebrospinal fluid (CSF) to discriminate bacterial from viral meningitis. Tests such as the CSF Gram stain performed prior to broad-spectrum antibiotic treatment yield sensitivities between 60 and 92%. In this study, we wished to produce a learning vector quantisation network that could yielded a predictive accuracy approaching that of clinical assessment. The results from this study indicate that we can achieve a classification accuracy of over 97%. In addition, we wished to examine how data discretisation impacts the classification accuracy of the LVQ algorithm
Keywords :
diseases; learning (artificial intelligence); medical diagnostic computing; medical signal processing; microorganisms; neurophysiology; pattern classification; vector quantisation; CSF; bacterial meningitis; blood; cerebrospinal fluid; clinical assessment; data discretisation; learning vector quantisation network; neural network-based classifier; viral meningitis; Antibiotics; Biological neural networks; Computed tomography; Diseases; Machine learning; Microorganisms; Neural networks; Performance evaluation; Vector quantization; White blood cells; data discretisation; learning vector quantisation neural networks; meningitis; rough sets;
Conference_Titel :
Neural Network Applications in Electrical Engineering, 2006. NEUREL 2006. 8th Seminar on
Conference_Location :
Belgrade, Serbia & Montenegro
Print_ISBN :
1-4244-0433-9
Electronic_ISBN :
1-4244-0433-9
DOI :
10.1109/NEUREL.2006.341202