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Published in: Medical & Biological Engineering & Computing 11/2017

28-03-2017 | Original Article

Automatic recognition of severity level for diagnosis of diabetic retinopathy using deep visual features

Authors: Qaisar Abbas, Irene Fondon, Auxiliadora Sarmiento, Soledad Jiménez, Pedro Alemany

Published in: Medical & Biological Engineering & Computing | Issue 11/2017

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Abstract

Diabetic retinopathy (DR) is leading cause of blindness among diabetic patients. Recognition of severity level is required by ophthalmologists to early detect and diagnose the DR. However, it is a challenging task for both medical experts and computer-aided diagnosis systems due to requiring extensive domain expert knowledge. In this article, a novel automatic recognition system for the five severity level of diabetic retinopathy (SLDR) is developed without performing any pre- and post-processing steps on retinal fundus images through learning of deep visual features (DVFs). These DVF features are extracted from each image by using color dense in scale-invariant and gradient location-orientation histogram techniques. To learn these DVF features, a semi-supervised multilayer deep-learning algorithm is utilized along with a new compressed layer and fine-tuning steps. This SLDR system was evaluated and compared with state-of-the-art techniques using the measures of sensitivity (SE), specificity (SP) and area under the receiving operating curves (AUC). On 750 fundus images (150 per category), the SE of 92.18%, SP of 94.50% and AUC of 0.924 values were obtained on average. These results demonstrate that the SLDR system is appropriate for early detection of DR and provide an effective treatment for prediction type of diabetes.

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Literature
1.
go back to reference Abdel-Hakim AE and Farag AA (2006) CSIFT: A SIFT descriptor with color invariant characteristics. IEEE computer society conference on computer vision and pattern recognition 1978–1983 Abdel-Hakim AE and Farag AA (2006) CSIFT: A SIFT descriptor with color invariant characteristics. IEEE computer society conference on computer vision and pattern recognition 1978–1983
2.
go back to reference Acharya UR et al (2016) Novel risk index for the identification of age-related macular degeneration using radon transform and DWT features. Comput Biol Med 73:131–140CrossRefPubMed Acharya UR et al (2016) Novel risk index for the identification of age-related macular degeneration using radon transform and DWT features. Comput Biol Med 73:131–140CrossRefPubMed
3.
go back to reference Ahmad Fadzil MH et al (2011) Analysis of retinal fundus images for grading of diabetic retinopathy severity. Med Biol Eng Comput 49(6):693–700CrossRefPubMed Ahmad Fadzil MH et al (2011) Analysis of retinal fundus images for grading of diabetic retinopathy severity. Med Biol Eng Comput 49(6):693–700CrossRefPubMed
4.
go back to reference Akram MU et al (2014) Detection and classification of retinal lesions for grading of diabetic retinopathy. Comput Biol Med 45:161–171CrossRef Akram MU et al (2014) Detection and classification of retinal lesions for grading of diabetic retinopathy. Comput Biol Med 45:161–171CrossRef
5.
go back to reference Bay H, Tuytelaars T, Van Gool L (2006) SURF: speeded up robust features. Computer vision. Lect Notes Comput Sci 3951:404–417CrossRef Bay H, Tuytelaars T, Van Gool L (2006) SURF: speeded up robust features. Computer vision. Lect Notes Comput Sci 3951:404–417CrossRef
6.
go back to reference Bertolini D et al (2013) Texture-based descriptors for writer identification and verification. Expert Syst Appl 40(6):2069–2080CrossRef Bertolini D et al (2013) Texture-based descriptors for writer identification and verification. Expert Syst Appl 40(6):2069–2080CrossRef
7.
go back to reference Bhaskaranand M et al (2016) Automated diabetic retinopathy screening and monitoring using retinal fundus image analysis. J Diabet Sci Technol 10(2):254–261CrossRef Bhaskaranand M et al (2016) Automated diabetic retinopathy screening and monitoring using retinal fundus image analysis. J Diabet Sci Technol 10(2):254–261CrossRef
8.
go back to reference Datta NS, Dutta HS, Majumder K (2016) Brightness-preserving fuzzy contrast enhancement scheme for the detection and classification of diabetic retinopathy disease. J Med Imaging 3(1):1–10CrossRef Datta NS, Dutta HS, Majumder K (2016) Brightness-preserving fuzzy contrast enhancement scheme for the detection and classification of diabetic retinopathy disease. J Med Imaging 3(1):1–10CrossRef
9.
go back to reference Early Treatment Diabetic Retinopathy Study Research Group (1991) Grading diabetic retinopathy from stereoscopic color fundus photographs-an extension of the modified Airlie House classification. ETDRS report number 10. Ophtalmology 98:776–806 Early Treatment Diabetic Retinopathy Study Research Group (1991) Grading diabetic retinopathy from stereoscopic color fundus photographs-an extension of the modified Airlie House classification. ETDRS report number 10. Ophtalmology 98:776–806
10.
go back to reference Faust O et al (2012) Algorithms for the automated detection of diabetic retinopathy using digital fundus images: a review. J Med Syst 36(1):145–157CrossRefPubMed Faust O et al (2012) Algorithms for the automated detection of diabetic retinopathy using digital fundus images: a review. J Med Syst 36(1):145–157CrossRefPubMed
11.
go back to reference Ganesan K et al (2014) Computer-aided diabetic retinopathy detection using trace transforms on digital fundus images. Med Biol Eng Comput 52(8):663–672CrossRefPubMed Ganesan K et al (2014) Computer-aided diabetic retinopathy detection using trace transforms on digital fundus images. Med Biol Eng Comput 52(8):663–672CrossRefPubMed
12.
go back to reference Guo Y, Zhao G, Pietikinen M (2012) Discriminative features for texture description. Pattern Recogn 45(10):3834–3843CrossRef Guo Y, Zhao G, Pietikinen M (2012) Discriminative features for texture description. Pattern Recogn 45(10):3834–3843CrossRef
13.
go back to reference Hanley JA, McNeil BJ (1982) The meaning and use of the area under a receiver operating characteristic (ROC) curve. Radiology 143(1):29–36CrossRefPubMed Hanley JA, McNeil BJ (1982) The meaning and use of the area under a receiver operating characteristic (ROC) curve. Radiology 143(1):29–36CrossRefPubMed
14.
go back to reference Hinton GE (2002) Training products of experts by minimizing contrastive divergence. Neural Comput 14:1771–1800CrossRefPubMed Hinton GE (2002) Training products of experts by minimizing contrastive divergence. Neural Comput 14:1771–1800CrossRefPubMed
16.
go back to reference Hinton GE et al (2012) Deep neural networks for acoustic modeling in speech recognition: the shared views of four research groups. IEEE Signal Process Mag 29(6):82–97CrossRef Hinton GE et al (2012) Deep neural networks for acoustic modeling in speech recognition: the shared views of four research groups. IEEE Signal Process Mag 29(6):82–97CrossRef
17.
go back to reference Ibrahim S et al (2015) Classification of diabetes maculopathy images using data-adaptive neuro-fuzzy inference classifier. Med Biol Eng Comput 53(12):1345–1360CrossRefPubMed Ibrahim S et al (2015) Classification of diabetes maculopathy images using data-adaptive neuro-fuzzy inference classifier. Med Biol Eng Comput 53(12):1345–1360CrossRefPubMed
18.
go back to reference Kandemir M, Hamprecht FA (2015) Computer-aided diagnosis from weak supervision: a benchmarking study. Comput Med Imaging Graph 42:44–50CrossRefPubMed Kandemir M, Hamprecht FA (2015) Computer-aided diagnosis from weak supervision: a benchmarking study. Comput Med Imaging Graph 42:44–50CrossRefPubMed
19.
go back to reference Keshavan MS (2017) Sudarshan M (2017) Deep dreaming, aberrant salience and psychosis: connecting the dots by artificial neural networks. Schizophr Res S0920–9964(17):30029–33034 Keshavan MS (2017) Sudarshan M (2017) Deep dreaming, aberrant salience and psychosis: connecting the dots by artificial neural networks. Schizophr Res S0920–9964(17):30029–33034
20.
go back to reference Lazebnik S, Schmid C, Ponce J (2006) Beyond bags of features: spatial pyramid matching for recognizing natural scene Categories. IEEE computer society conference on computer vision and pattern recognition, pp. 2169–278 Lazebnik S, Schmid C, Ponce J (2006) Beyond bags of features: spatial pyramid matching for recognizing natural scene Categories. IEEE computer society conference on computer vision and pattern recognition, pp. 2169–278
21.
go back to reference Lee J, Zee BC, Li Q (2013) Detection of neovascularization based on fractal and texture analysis with interaction effects in diabetic retinopathy. PLoS ONE 8(12):e75699CrossRefPubMedPubMedCentral Lee J, Zee BC, Li Q (2013) Detection of neovascularization based on fractal and texture analysis with interaction effects in diabetic retinopathy. PLoS ONE 8(12):e75699CrossRefPubMedPubMedCentral
22.
go back to reference Li B, Li HK (2013) Automated analysis of diabetic retinopathy images. Curr Diab Rep 13(4):453–459CrossRefPubMed Li B, Li HK (2013) Automated analysis of diabetic retinopathy images. Curr Diab Rep 13(4):453–459CrossRefPubMed
23.
go back to reference Li Y et al (2015) A survey of recent advances in visual feature detection. Neurocomputing 149:736–751CrossRef Li Y et al (2015) A survey of recent advances in visual feature detection. Neurocomputing 149:736–751CrossRef
24.
go back to reference Lin J (1991) Divergence measures based on the Shannon entropy. IEEE Trans Inf Theory Arch 37(1):145–151CrossRef Lin J (1991) Divergence measures based on the Shannon entropy. IEEE Trans Inf Theory Arch 37(1):145–151CrossRef
25.
go back to reference ManjulaSri R, Raghupathy RM, Rao KMM (2014) Image processing for identifying different stages of diabetic retinopathy. Int J Recent Trends Eng Technol 11:83–92 ManjulaSri R, Raghupathy RM, Rao KMM (2014) Image processing for identifying different stages of diabetic retinopathy. Int J Recent Trends Eng Technol 11:83–92
26.
go back to reference Mikolajczyk K, Schmid C (2005) A performance evaluation of local descriptors. IEEE Trans Pattern Anal Mach Intell 10(27):1615–1630CrossRef Mikolajczyk K, Schmid C (2005) A performance evaluation of local descriptors. IEEE Trans Pattern Anal Mach Intell 10(27):1615–1630CrossRef
28.
go back to reference Mookiah MRK et al (2013) Computer aided diagnosis of diabetic retinopathy using multi-resolution analysis and feature ranking frame work. J Med Imaging Health Inform 3(4):598–606CrossRef Mookiah MRK et al (2013) Computer aided diagnosis of diabetic retinopathy using multi-resolution analysis and feature ranking frame work. J Med Imaging Health Inform 3(4):598–606CrossRef
29.
go back to reference Mookiah MRK et al (2013) Computer-aided diagnosis of diabetic retinopathy: a review. Comput Biol Med 43(12):2136–2155CrossRefPubMed Mookiah MRK et al (2013) Computer-aided diagnosis of diabetic retinopathy: a review. Comput Biol Med 43(12):2136–2155CrossRefPubMed
30.
go back to reference Mookiah MR et al (2014) Decision support system for age-related macular degeneration using discrete wavelet transform. Biol Eng Comput 52(9):781–796CrossRef Mookiah MR et al (2014) Decision support system for age-related macular degeneration using discrete wavelet transform. Biol Eng Comput 52(9):781–796CrossRef
31.
go back to reference Nayak J et al (2008) Automated identification of diabetic retinopathy stages using digital fundus images. J Med Syst 32(2):107–115CrossRefPubMed Nayak J et al (2008) Automated identification of diabetic retinopathy stages using digital fundus images. J Med Syst 32(2):107–115CrossRefPubMed
33.
go back to reference Prakash NB, Selvathi D, Hemalakshmi GR (2014) Development of algorithm for dual stage classification to estimate severity level of diabetic retinopathy in retinal images using soft computing techniques. Int J Elect Eng Inform 6(4):717–739CrossRef Prakash NB, Selvathi D, Hemalakshmi GR (2014) Development of algorithm for dual stage classification to estimate severity level of diabetic retinopathy in retinal images using soft computing techniques. Int J Elect Eng Inform 6(4):717–739CrossRef
34.
go back to reference Rodriguez-Poncelas A et al (2015) Prevalence of diabetic retinopathy in individuals with type 2 diabetes who had recorded diabetic retinopathy from retinal photographs in Catalonia (Spain). Br J Ophthalmol 99:1628–1633CrossRefPubMedPubMedCentral Rodriguez-Poncelas A et al (2015) Prevalence of diabetic retinopathy in individuals with type 2 diabetes who had recorded diabetic retinopathy from retinal photographs in Catalonia (Spain). Br J Ophthalmol 99:1628–1633CrossRefPubMedPubMedCentral
35.
36.
go back to reference Teng T, Lefley M, Claremont D (2002) Progress towards automated diabetic ocular screening: a review of image analysis and intelligent systems for diabetic retinopathy. Med Biol Eng Comput 40(1):2–13CrossRefPubMed Teng T, Lefley M, Claremont D (2002) Progress towards automated diabetic ocular screening: a review of image analysis and intelligent systems for diabetic retinopathy. Med Biol Eng Comput 40(1):2–13CrossRefPubMed
37.
go back to reference Thomas S et al (2013) Deep neural network features and semi-supervised training for low resource speech recognition. In: Proceeding of IEEE international conference on acoustics, speech and signal processing, Vancouver, BC, pp. 6704–6708 Thomas S et al (2013) Deep neural network features and semi-supervised training for low resource speech recognition. In: Proceeding of IEEE international conference on acoustics, speech and signal processing, Vancouver, BC, pp. 6704–6708
38.
go back to reference Ting DS, Cheung GC, Wong TY (2016) Diabetic retinopathy: global prevalence, major risk factors, screening practices and public health challenges: a review. Clin Exp Ophthalmol 44(4):260–277CrossRefPubMed Ting DS, Cheung GC, Wong TY (2016) Diabetic retinopathy: global prevalence, major risk factors, screening practices and public health challenges: a review. Clin Exp Ophthalmol 44(4):260–277CrossRefPubMed
39.
go back to reference Van de Sande KE, Gevers T, Snoek CG (2010) Evaluating color descriptors for object and scene recognition. IEEE Trans Pattern Anal Mach Intell 32(9):1582–1596CrossRefPubMed Van de Sande KE, Gevers T, Snoek CG (2010) Evaluating color descriptors for object and scene recognition. IEEE Trans Pattern Anal Mach Intell 32(9):1582–1596CrossRefPubMed
40.
go back to reference Verma K, Deep P, Ramakrishnan AG (2011) Detection and classification of diabetic retinopathy using retinal images. In: Proceeding of 2011 annual IEEE India conference (INDICON), pp 1–6 Verma K, Deep P, Ramakrishnan AG (2011) Detection and classification of diabetic retinopathy using retinal images. In: Proceeding of 2011 annual IEEE India conference (INDICON), pp 1–6
41.
go back to reference Washington RE et al (2014) All-cause mortality in a population-based type 1 diabetes cohort in the U.S. Virgin Islands. Diabetes Res Clin Pract 103(3):504–509CrossRefPubMed Washington RE et al (2014) All-cause mortality in a population-based type 1 diabetes cohort in the U.S. Virgin Islands. Diabetes Res Clin Pract 103(3):504–509CrossRefPubMed
42.
go back to reference Welikala RA et al (2015) Genetic algorithm based feature selection combined with dual classification for the automated detection of proliferative diabetic retinopathy. Comput Med Imaging Graph 43:64–77CrossRefPubMed Welikala RA et al (2015) Genetic algorithm based feature selection combined with dual classification for the automated detection of proliferative diabetic retinopathy. Comput Med Imaging Graph 43:64–77CrossRefPubMed
43.
go back to reference Wong LY et al (2008) Identification of different stages of diabetic retinopathy using retinal optical images. Inf Sci 178(1):106–121CrossRef Wong LY et al (2008) Identification of different stages of diabetic retinopathy using retinal optical images. Inf Sci 178(1):106–121CrossRef
Metadata
Title
Automatic recognition of severity level for diagnosis of diabetic retinopathy using deep visual features
Authors
Qaisar Abbas
Irene Fondon
Auxiliadora Sarmiento
Soledad Jiménez
Pedro Alemany
Publication date
28-03-2017
Publisher
Springer Berlin Heidelberg
Published in
Medical & Biological Engineering & Computing / Issue 11/2017
Print ISSN: 0140-0118
Electronic ISSN: 1741-0444
DOI
https://doi.org/10.1007/s11517-017-1638-6

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