SciELO - Scientific Electronic Library Online

 
vol.77 número12Lente ZSAL-4 para la corrección de la alta miopíaTrabeculectomía asociada a facoemulsificación. Incisión única frente a doble incisión independiente: estudio comparativo índice de autoresíndice de materiabúsqueda de artículos
Home Pagelista alfabética de revistas  

Servicios Personalizados

Revista

Articulo

Indicadores

Links relacionados

Compartir


Archivos de la Sociedad Española de Oftalmología

versión impresa ISSN 0365-6691

Resumen

GARCIA-FEIJOO, J et al. Development of an automatic discrimination system for glaucomatous visual fields based on Neuro-Fuzzy nets. Arch Soc Esp Oftalmol [online]. 2002, vol.77, n.12, pp.669-676. ISSN 0365-6691.

Purpose: To provide a useful tool in the diagnosis of glaucoma by developing an automatic system for visual field classification based on neuro-fuzzy rules. Method: A total of 212 visual fields (OCTOPUS 123 program G1X), from 198 patients, were analysed: 61 normal (controls) and 151 with glaucomatous damage (49% with incipient damage, 29.1% with moderate damage, and 21.9% advanced). Inclusion criteria for glaucomatous patients were: Visual acuity >0.5, IOP < 20 mm Hg (with treatment), refraction <5 Dp and previous perimetric experience. Exclusion criteria: miotics, other ocular pathologies which could interfere with visual field examination, and for control subjects: visual acuity >0.5, no ocular pathologies and refraction < 5 Dp. A neuro-fuzzy classifier (NEFCLASS) is a system consisting in a series of fuzzy rules, obtained after a learning process, which attempts to assign to each piece of data input its corresponding output. Initially, the characteristics of each data input are established (input units). Then, based on previous knowledge, a set of rules are defined, and finally, the learning process allows the optimisation of the classifier parameters to generate an output. Results: Input units were defined by using the mean defects calculated at specific areas of the visual field; five rules were then created which generated sensitivity and specificity values of 96.0% and 93.4% respectively. Conclusions: The use of neuro-fuzzy rules for visual field classification in normal vs glaucomatous can provide results which can match the quality of those obtained with other techniques such as discriminatory analysis or neural networks.

Palabras clave : Glaucoma; visual fields; fuzzy rules; neurofuzzy classifiers.

        · resumen en Español     · texto en Español

 

Creative Commons License Todo el contenido de esta revista, excepto dónde está identificado, está bajo una Licencia Creative Commons