Abstract:
Retinopathy of Prematurity (ROP) is a disease affecting infants born preterm, at birth their retina is not well
developed and in most times after birth the veins do not develop to full term. Sometimes these veins stop growing and then
suddenly start growing to the wrong directions and this abnormally causes retina traction, causing blindness. Each country
has its own screening guidelines for the diagnosis. The disease can be categorized as severe or mild and has five stages.
Stage one and two is not severe and can develop and heal unnoticed. Stage three should be diagnosed because it is reversable
through treatment but when the disease progresses to stage four retina traction occurs and causes blindness at stage five. The
emergent of digital imaging support has resulted to having hospitals capturing retina images to determine the presence or
absence of severe ROP. These images can be used to determine the presence of retinal detachment or lack of growth of the
veins. The disease diagnosis is expensive with few eye specialists available in hospitals and the process of capturing retina
images by non-eye specialists and transmitting them to specialists for disease diagnosis pauses many issues. Different
cameras produce images of different contrast, image transmission may cause quality reduction depending on the channel of
transmission. These challenges call for the development of systems to support both image quality assessment and assistive
disease diagnosis. This paper proposes a Deep learning model to assist ophthalmologists to determine the presence or
absence of the disease as well as diagnosing the disease at stage three. Data obtained from two databases: Kaggle database
and HVDROPDB database were used for model training, testing and validation by having the model achieve an accuracy
of 92.8%, sensitivity of 94.9%, and precision of 97.3%.