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Development of portable and robust cataract detection and grading system by analyzing multiple texture features for Tele-Ophthalmology

This paper presents a low cost, robust, portable and automated cataract detection system which can detect the presence of cataract from the colored digital eye images and grade their severity. Ophthalmologists detect cataract through visual screening using ophthalmoscope and slit lamps. Conventional...

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Detalles Bibliográficos
Autores principales: Pathak, Shashwat, Raj, Rahul, Singh, Kartik, Verma, Pawan Kumar, Kumar, Basant
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Springer US 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8931454/
https://www.ncbi.nlm.nih.gov/pubmed/35317470
http://dx.doi.org/10.1007/s11042-022-12544-5
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author Pathak, Shashwat
Raj, Rahul
Singh, Kartik
Verma, Pawan Kumar
Kumar, Basant
author_facet Pathak, Shashwat
Raj, Rahul
Singh, Kartik
Verma, Pawan Kumar
Kumar, Basant
author_sort Pathak, Shashwat
collection PubMed
description This paper presents a low cost, robust, portable and automated cataract detection system which can detect the presence of cataract from the colored digital eye images and grade their severity. Ophthalmologists detect cataract through visual screening using ophthalmoscope and slit lamps. Conventionally a patient has to visit an ophthalmologist for eye screening and treatment follows the course. Developing countries lack the proper health infrastructure and face huge scarcity of trained medical professionals as well as technicians. The condition is not very satisfactory with the rural and remote areas of developed nations. To bridge this barrier between the patient and the availability of resources, current work focuses on the development of portable low-cost, robust cataract screening and grading system. Similar works use fundus and retinal images which use costly imaging modules and image based detection algorithms which use much complex neural network models. Current work derives its benefit from the advancements in digital image processing techniques. A set of preprocessing has been done on the colored eye image and later texture information in form of mean intensity, uniformity, standard deviation and randomness has been calculated and mapped with the diagnostic opinion of doctor for cataract screening of over 200 patients. For different grades of cataract severity edge pixel count was calculated as per doctor’s opinion and later these data are used for calculating the thresholds using hybrid k-means algorithm, for giving a decision on the presence of cataract and grade its severity. Low value of uniformity and high value of other texture parameters confirm the presence of cataract as clouding in eye lens causes the uniformity function to take lower value due to presence of coarse texture. Higher the edge pixel count value, this confirms the presence of starting of cataract as solidified regions in lens are nonuniform. Lower value corresponds to fully solidified region or matured cataract. Proposed algorithm was initially developed on MATLAB, and tested on over 300 patients in an eye camp. The system has shown more than 98% accuracy in detection and grading of cataract. Later a cloud based system was developed with 3D printed image acquisition module to manifest an automated, portable and efficient cataract detection system for Tele-Ophthalmology. The proposed system uses a very simple and efficient technique by mapping the diagnostic opinion of the doctor as well, giving very promising results which suggest its potential use in teleophthalmology applications to reduce the cost of delivering eye care services and increasing its reach effectively. Developed system is simple in design and easy to operate and suitable for mass screening of cataracts. Due to non-invasive and non-mydriatic and mountable nature of device, in person screening is not required. Hence, social distancing norms are easy to follow and device is very useful in COVID-19 like situation.
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spelling pubmed-89314542022-03-18 Development of portable and robust cataract detection and grading system by analyzing multiple texture features for Tele-Ophthalmology Pathak, Shashwat Raj, Rahul Singh, Kartik Verma, Pawan Kumar Kumar, Basant Multimed Tools Appl Article This paper presents a low cost, robust, portable and automated cataract detection system which can detect the presence of cataract from the colored digital eye images and grade their severity. Ophthalmologists detect cataract through visual screening using ophthalmoscope and slit lamps. Conventionally a patient has to visit an ophthalmologist for eye screening and treatment follows the course. Developing countries lack the proper health infrastructure and face huge scarcity of trained medical professionals as well as technicians. The condition is not very satisfactory with the rural and remote areas of developed nations. To bridge this barrier between the patient and the availability of resources, current work focuses on the development of portable low-cost, robust cataract screening and grading system. Similar works use fundus and retinal images which use costly imaging modules and image based detection algorithms which use much complex neural network models. Current work derives its benefit from the advancements in digital image processing techniques. A set of preprocessing has been done on the colored eye image and later texture information in form of mean intensity, uniformity, standard deviation and randomness has been calculated and mapped with the diagnostic opinion of doctor for cataract screening of over 200 patients. For different grades of cataract severity edge pixel count was calculated as per doctor’s opinion and later these data are used for calculating the thresholds using hybrid k-means algorithm, for giving a decision on the presence of cataract and grade its severity. Low value of uniformity and high value of other texture parameters confirm the presence of cataract as clouding in eye lens causes the uniformity function to take lower value due to presence of coarse texture. Higher the edge pixel count value, this confirms the presence of starting of cataract as solidified regions in lens are nonuniform. Lower value corresponds to fully solidified region or matured cataract. Proposed algorithm was initially developed on MATLAB, and tested on over 300 patients in an eye camp. The system has shown more than 98% accuracy in detection and grading of cataract. Later a cloud based system was developed with 3D printed image acquisition module to manifest an automated, portable and efficient cataract detection system for Tele-Ophthalmology. The proposed system uses a very simple and efficient technique by mapping the diagnostic opinion of the doctor as well, giving very promising results which suggest its potential use in teleophthalmology applications to reduce the cost of delivering eye care services and increasing its reach effectively. Developed system is simple in design and easy to operate and suitable for mass screening of cataracts. Due to non-invasive and non-mydriatic and mountable nature of device, in person screening is not required. Hence, social distancing norms are easy to follow and device is very useful in COVID-19 like situation. Springer US 2022-03-18 2022 /pmc/articles/PMC8931454/ /pubmed/35317470 http://dx.doi.org/10.1007/s11042-022-12544-5 Text en © The Author(s), under exclusive licence to Springer Science+Business Media, LLC, part of Springer Nature 2022 This article is made available via the PMC Open Access Subset for unrestricted research re-use and secondary analysis in any form or by any means with acknowledgement of the original source. These permissions are granted for the duration of the World Health Organization (WHO) declaration of COVID-19 as a global pandemic.
spellingShingle Article
Pathak, Shashwat
Raj, Rahul
Singh, Kartik
Verma, Pawan Kumar
Kumar, Basant
Development of portable and robust cataract detection and grading system by analyzing multiple texture features for Tele-Ophthalmology
title Development of portable and robust cataract detection and grading system by analyzing multiple texture features for Tele-Ophthalmology
title_full Development of portable and robust cataract detection and grading system by analyzing multiple texture features for Tele-Ophthalmology
title_fullStr Development of portable and robust cataract detection and grading system by analyzing multiple texture features for Tele-Ophthalmology
title_full_unstemmed Development of portable and robust cataract detection and grading system by analyzing multiple texture features for Tele-Ophthalmology
title_short Development of portable and robust cataract detection and grading system by analyzing multiple texture features for Tele-Ophthalmology
title_sort development of portable and robust cataract detection and grading system by analyzing multiple texture features for tele-ophthalmology
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8931454/
https://www.ncbi.nlm.nih.gov/pubmed/35317470
http://dx.doi.org/10.1007/s11042-022-12544-5
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