Journal of Current Glaucoma Practice

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VOLUME 16 , ISSUE 2 ( May-August, 2022 ) > List of Articles


Glaucoma Screening: Is AI the Answer?

Shibal Bhartiya

Citation Information : Bhartiya S. Glaucoma Screening: Is AI the Answer?. J Curr Glaucoma Pract 2022; 16 (2):71-73.

DOI: 10.5005/jp-journals-10078-1380

License: CC BY-NC 4.0

Published Online: 30-08-2022

Copyright Statement:  Copyright © 2022; The Author(s).


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