Application of CNN in Hypertensive Retinopathy Classification
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Date
2022-01
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Addis Ababa University
Abstract
Hypertension (HTN) as defined by the world health organization (WHO) is when the blood pressure
is elevated with a systolic blood pressure equal to or greater than 140mmHg and a diastolic blood
pressure equal to or greater than 90mmHg when measured on 2 separate days. HTN, according to
Center for Disease Control and Prevention (CDC), raises the risk for stroke and other heart diseases.
In a previous study, it was estimated that there were 972 million adults with HTN in 2000; 333 million
in developed countries and 639 million people in developing countries. In a review of current trends
by WHO, there has been an increase in adults with HTN from 594 million in 1975 to 1.13 billion in
year 2015 with a prevalence of 27% in Africa and 18% in the America. Hypertensive Retinopathy
(HPR) is damage to the retinal blood vessels caused by HTN. The use of artificial intelligence has
recently been applied in Medical Imaging. One of such areas is in classification of eye diseases. In
HPR, previous studies only focused on classification according to two classes; normal or HPR. In the
current study, a classification method based on four classes according to the Wong and Mitchell
classification which gives a classification based on the severity of HTN severity is presented; Normal,
Mild, Moderate, and Severe or Malignant HPR. The study explored the idea of applying Convolutional
Neural Network (CNN) in classifying HPR. The work focused on images collected solely from
patients with HTN and will play an important role in assisting physicians to speed up the process of
diagnosis. The study used the HPR features of the retina for classification. Transfer learning using
existing pretrained models was employed in classifying the dataset. Five state-of-the-art pretrained
models were employed for classification into two classes; normal and abnormal and into four classes:
normal and three stages of HTR. The five different neural architectures namely: ResNet-101,
GoogleNet, AlexNet, VGG-19 and Xception achieved an accuracy of 91.61%, 93.01%, 87.41%,
90.21% & 85.31% for the 4 Classification task and 100%, 100%,100%, 99.30% & 97.89% for the 2
Classification task respectively. The best accuracy was obtained using GoogleNet. The pretrained
models show that with proper tuning of training parameters like the learning rate, number of epochs,
batch size, type of
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Keywords
Hypertension, Hypertensive Retinopathy Classification, Convolutional Neural Networks, Pretrained models, Transfer learning