01950nam a22001817a 4500003000500000082001400005100003500019245011800054264003400172300001300206505135000219650002801569690002601597700004301623942001301666999001901679952007001698NUST a005.1,SAJ aSajid, Muhammad Zaheer9112574 aAn Efficient Deep Learning-Based Classification Framework for Hypertensive Retinopathy /cMuhammad Zaheer Sajid,  aRawalpindi bMCS, NUST c2023 aix, 45 p aHypertensive retinopathy (HR) is a well-known eye disease that is caused by high blood pressure (hypertension). In this illness, symptoms typically develop later. The AV nicking, cotton wool patches, constricted veins in the optic nerve, and blood pouring into the eye’s optic nerve all contribute to the appearance of the HR symptoms. HR disease may have different types of serious complications, including retinal artery blockage, destruction of the visual nerves, and maybe vision loss. The automated early detection of this illness can be aided by AI and deep learning models. In this research, a novel dataset for HR is collected from Pakistani hospitals (Pak-HR) and internet sources. Second, a brand-new methodology (Incept-HR) is developed to evaluate hypertensive retinopathy using InceptionV3 and residual blocks. 6,000 digital fundus images from the collected datasets were used to train the Incept-HR system. The proposed classification method, Incept-HR, has 99% classification accuracy and an f1-score of 0.99. The results show that this model produces useful outcomes and can be applied as a diagnostic testing tool. The system is not intended to replace optometrists; rather, it aims to assist professionals. The proposed methodology outperforms both the cutting-edge models VGG19 and VGG16 in terms of classification accuracy. aMSCSE / MSSE-279112568 bMSCSE / MSSE 9112573 aSupervisor Dr. Nauman Ali Khan9112575 2ddccTHE c594850d594850 00104070aMCSbMCScTHEd2023-05-25o005.1,SAJpMCSTCS-543yTHE