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A Deep Learning based Approach for Grading of Diabetic Retinopathy using Large Fundus image Dataset

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dc.contributor.author Mehboob, Ayesha
dc.date.accessioned 2020-12-31T06:44:45Z
dc.date.available 2020-12-31T06:44:45Z
dc.date.issued 2019
dc.identifier.uri http://10.250.8.41:8080/xmlui/handle/123456789/20144
dc.description Supervisor: Dr. Muhammad Usman Akram en_US
dc.description.abstract Diabetic Retinopathy DR is one of the commonly existing disease in diabetic pa- tients that may cause vision impairment. DR has ve stages of severity, wherein the last stage is one of the major cause of blindness worldwide. In most of the cases, DR does not show any symptoms until it reaches the last stage. If a mean is available to timely detect DR during the early stages, it can be cured properly. An easy and accurate system therefore is required to detect DR at very minute level. Patients seeking help and doctors providing medical support both will be the immediate bene ciary of this detection system. Doctors will greatly augment their diagnostic, supportive or corrective decisions, as the system will support their decision with certainty of DR severity stage. In this paper, we designed and compared multiple automated systems for classi cation of DR using colored eye fundus images. The main focus was to design a system that detects the presence of DR and classi es the disease (if present) based on severity with best accuracy possible. We proposed three frame works, Frame Work 1: was designed a cascaded classi er using more than one combinations of Convolution Neural Networks (CNN) for feature extrac- tion and comparaed best conventional classi er RFT for classi cation. It provided improved accuracy of 75% with Sensitivity/Speci city 89%/76.8% and dealt with over- tting and complexity of knowing minor details.Frame Work 2: we applied multiple pre-processing techniques and reviewed their results we also infused re- sults of multiple CNNs to get better accuracy of 78.6% with Sensitivity/Speci city of 96%/75.14%. Frame Work 3: we added LSTM layer to our CNN for getting better Accuracy of 76.9% with Sensitivity/Speci city 96.08%/73.81%. Using these multiple Frame works we achieved best using ensemble systems. This research con- cludes that by selecting right kind of pre-processing, data set management and architecture working accuracy can be improved. en_US
dc.publisher CEME, National University of Science and Technology Islamabad en_US
dc.subject Computer Engineering, Diabetic Retinopathy, Convolution Neural Network en_US
dc.title A Deep Learning based Approach for Grading of Diabetic Retinopathy using Large Fundus image Dataset en_US
dc.type Thesis en_US


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