Analysis of retinal nerve fiber layer via Markov random fields in color fundus images

Since images of ocular fundus are commonly available in ophthalmic practice, automatic assessment of the retinal nerve fiber layer (RNFL) can be useful for early diagnosis of glaucoma. This contribution presents a texture analysis method for the description of RNFL status and proposes appropriate textural features for medical diagnosis. The method uses Gaussian Markov random fields to model visual appearance of the texture. The results show that the proposed textural features can be used for reliable classification of healthy RNFL areas and areas with focal wedge-shaped RNFL loss. Experiments show a close correlation of the proposed features with the real measurement of the RNFL thickness by optical coherence tomography (OCT). Quantitative comparison of results from the two modalities - fundus camera and OCT - successfully validates relevancy of the proposed features.

[1]  J. Hornegger,et al.  Retinal Nerve Fiber Layer Segmentation on FD-OCT Scans of Normal Subjects and Glaucoma Patients , 2010, Biomedical optics express.

[2]  David G. Stork,et al.  Pattern Classification , 1973 .

[3]  Radim Kolár,et al.  Registration of 3D Retinal Optical Coherence Tomography Data and 2D Fundus Images , 2010, WBIR.

[4]  R. Kolar,et al.  Retinal image analysis aimed at support of early neural-layer deterioration diagnosis , 2009, 2009 9th International Conference on Information Technology and Applications in Biomedicine.

[5]  Fuhui Long,et al.  Feature selection based on mutual information criteria of max-dependency, max-relevance, and min-redundancy , 2003, IEEE Transactions on Pattern Analysis and Machine Intelligence.

[6]  Joni-Kristian Kämäräinen,et al.  Feature representation and discrimination based on Gaussian mixture model probability densities - Practices and algorithms , 2006, Pattern Recognit..

[7]  Hiroshi Fujita,et al.  Detection of retinal nerve fiber layer defects in retinal fundus images using Gabor filtering , 2007, SPIE Medical Imaging.

[8]  M. Lundström,et al.  COMPUTER DENSITOMETRY OF RETINAL NERVE FIBRE ATROPHY , 1980, Acta ophthalmologica.

[9]  László G. Nyúl,et al.  Glaucoma risk index:  Automated glaucoma detection from color fundus images , 2010, Medical Image Anal..

[10]  P J Airaksinen,et al.  Diffuse and localized nerve fiber loss in glaucoma. , 1984, American journal of ophthalmology.

[11]  R. Kolá Detection of Glaucomatous Eye via Color Fundus Images Using Fractal Dimensions , 2008 .

[12]  H. Fujita,et al.  Detection of retinal nerve fiber layer defects on retinal fundus images for early diagnosis of glaucoma. , 2010, Journal of biomedical optics.

[13]  Jan Odstrcilik,et al.  Improvement of Vessel Segmentation by Matched Filtering in Colour Retinal Images , 2009 .

[14]  R. Porter,et al.  Robust rotation-invariant texture classification: wavelet, Gabor filter and GMRF based schemes , 1997 .