4.6 Review

Applications of natural language processing in ophthalmology: present and future

期刊

FRONTIERS IN MEDICINE
卷 9, 期 -, 页码 -

出版社

FRONTIERS MEDIA SA
DOI: 10.3389/fmed.2022.906554

关键词

natural language processing; ophthalmology; artificial intelligence; machine learning; big data; informatics; data science

资金

  1. NIH [DP5OD029610]
  2. Research to Prevent Blindness (New York, NY)

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Advances in technology have led to increased data availability in ophthalmology, but current applications of artificial intelligence (AI) in the field mainly focus on image-based deep learning. However, there is a vast amount of underutilized text data in electronic health records (EHR). Natural language processing (NLP), a type of AI, can be used to develop automated algorithms for analyzing and utilizing this text data. This review summarizes current applications of NLP in ophthalmology and explores potential future applications.
Advances in technology, including novel ophthalmic imaging devices and adoption of the electronic health record (EHR), have resulted in significantly increased data available for both clinical use and research in ophthalmology. While artificial intelligence (AI) algorithms have the potential to utilize these data to transform clinical care, current applications of AI in ophthalmology have focused mostly on image-based deep learning. Unstructured free-text in the EHR represents a tremendous amount of underutilized data in big data analyses and predictive AI. Natural language processing (NLP) is a type of AI involved in processing human language that can be used to develop automated algorithms using these vast quantities of available text data. The purpose of this review was to introduce ophthalmologists to NLP by (1) reviewing current applications of NLP in ophthalmology and (2) exploring potential applications of NLP. We reviewed current literature published in Pubmed and Google Scholar for articles related to NLP and ophthalmology, and used ancestor search to expand our references. Overall, we found 19 published studies of NLP in ophthalmology. The majority of these publications (16) focused on extracting specific text such as visual acuity from free-text notes for the purposes of quantitative analysis. Other applications included: domain embedding, predictive modeling, and topic modeling. Future ophthalmic applications of NLP may also focus on developing search engines for data within free-text notes, cleaning notes, automated question-answering, and translating ophthalmology notes for other specialties or for patients, especially with a growing interest in open notes. As medicine becomes more data-oriented, NLP offers increasing opportunities to augment our ability to harness free-text data and drive innovations in healthcare delivery and treatment of ophthalmic conditions.

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