**Acknowledgements**

We thank Dr. Monday Nkadam of the University of Port Harcourt Teaching Hospital for checking and correcting some of the symptoms that were used in the system. The authors also thank the staff of Linsolar and Odadiki eye clinic, Port Harcourt for using their data in training and testing the system.

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