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Deep learning-based natural language processing in ophthalmology: applications, challenges and future directions
27
Zitationen
8
Autoren
2021
Jahr
Abstract
Healthcare has always endeavored to be patient centric and personalized. For AI-based NLP systems to become an eventual reality in larger-scale applications, it is pertinent for key stakeholders to collaborate and address potential challenges in application. Ultimately, these would enable more equitable and generalizable use of NLP systems for the betterment of healthcare and society.
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