Literature DB >> 29704086

Automated Quality Assessment of Colour Fundus Images for Diabetic Retinopathy Screening in Telemedicine.

Sajib Kumar Saha1, Basura Fernando2, Jorge Cuadros3, Di Xiao4, Yogesan Kanagasingam4.   

Abstract

Fundus images obtained in a telemedicine program are acquired at different sites that are captured by people who have varying levels of experience. These result in a relatively high percentage of images which are later marked as unreadable by graders. Unreadable images require a recapture which is time and cost intensive. An automated method that determines the image quality during acquisition is an effective alternative. To determine the image quality during acquisition, we describe here an automated method for the assessment of image quality in the context of diabetic retinopathy. The method explicitly applies machine learning techniques to access the image and to determine 'accept' and 'reject' categories. 'Reject' category image requires a recapture. A deep convolution neural network is trained to grade the images automatically. A large representative set of 7000 colour fundus images was used for the experiment which was obtained from the EyePACS that were made available by the California Healthcare Foundation. Three retinal image analysis experts were employed to categorise these images into 'accept' and 'reject' classes based on the precise definition of image quality in the context of DR. The network was trained using 3428 images. The method shows an accuracy of 100% to successfully categorise 'accept' and 'reject' images, which is about 2% higher than the traditional machine learning method. On a clinical trial, the proposed method shows 97% agreement with human grader. The method can be easily incorporated with the fundus image capturing system in the acquisition centre and can guide the photographer whether a recapture is necessary or not.

Entities:  

Keywords:  Automated quality assessment; Colour fundus image; Deep learning; Diabetic retinopathy; Telemedicine

Mesh:

Year:  2018        PMID: 29704086      PMCID: PMC6261197          DOI: 10.1007/s10278-018-0084-9

Source DB:  PubMed          Journal:  J Digit Imaging        ISSN: 0897-1889            Impact factor:   4.056


  16 in total

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Authors:  Alan D Fleming; Sam Philip; Keith A Goatman; John A Olson; Peter F Sharp
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4.  Image structure clustering for image quality verification of color retina images in diabetic retinopathy screening.

Authors:  Meindert Niemeijer; Michael D Abràmoff; Bram van Ginneken
Journal:  Med Image Anal       Date:  2006-12       Impact factor: 8.545

5.  Web-based screening for diabetic retinopathy in a primary care population: the EyeCheck project.

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Journal:  Telemed J E Health       Date:  2005-12       Impact factor: 3.536

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Authors:  Nima Tajbakhsh; Jae Y Shin; Suryakanth R Gurudu; R Todd Hurst; Christopher B Kendall; Michael B Gotway
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8.  Feasibility of using the TOSCA telescreening procedures for diabetic retinopathy.

Authors:  S Luzio; S Hatcher; G Zahlmann; L Mazik; M Morgan; B Liesenfeld; T Bek; H Schuell; S Schneider; D R Owens; E Kohner
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Review 9.  Automated retinal image analysis for diabetic retinopathy in telemedicine.

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10.  Role of early screening for diabetic retinopathy in patients with diabetes mellitus: an overview.

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3.  Classification of Glaucoma Stages Using Image Empirical Mode Decomposition from Fundus Images.

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4.  Automatic Detection of Diabetic Retinopathy in Retinal Fundus Photographs Based on Deep Learning Algorithm.

Authors:  Feng Li; Zheng Liu; Hua Chen; Minshan Jiang; Xuedian Zhang; Zhizheng Wu
Journal:  Transl Vis Sci Technol       Date:  2019-11-12       Impact factor: 3.283

5.  Deep Learning to Automate Reference-Free Image Quality Assessment of Whole-Heart MR Images.

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Review 6.  Artificial intelligence for improving sickle cell retinopathy diagnosis and management.

Authors:  Sophie Cai; Ian C Han; Adrienne W Scott
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7.  A Teleophthalmology Support System Based on the Visibility of Retinal Elements Using the CNNs.

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Review 8.  Advances in Retinal Imaging and Applications in Diabetic Retinopathy Screening: A Review.

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Journal:  Ophthalmol Ther       Date:  2018-11-10

9.  Automated detection and classification of early AMD biomarkers using deep learning.

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Review 10.  The Role of Telemedicine, In-Home Testing and Artificial Intelligence to Alleviate an Increasingly Burdened Healthcare System: Diabetic Retinopathy.

Authors:  Janusz Pieczynski; Patrycja Kuklo; Andrzej Grzybowski
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