Transforming epilepsy research: A systematic review on natural language processing applications

Publication date

2023-02

Authors

Yew, Arister N.J.
Schraagen, Marijn
Otte, WimORCID 0000-0003-1511-6834ISNI 0000000389423861
van Diessen, EISNI 0000000388530761

Editors

Advisors

Supervisors

Document Type

Article

Collections

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License

cc_by_nc

Abstract

Despite improved ancillary investigations in epilepsy care, patients' narratives remain indispensable for diagnosing and treatment monitoring. This wealth of information is typically stored in electronic health records and accumulated in medical journals in an unstructured manner, thereby restricting complete utilization in clinical decision-making. To this end, clinical researchers increasing apply natural language processing (NLP)—a branch of artificial intelligence—as it removes ambiguity, derives context, and imbues standardized meaning from free-narrative clinical texts. This systematic review presents an overview of the current NLP applications in epilepsy and discusses the opportunities and drawbacks of NLP alongside its future implications. We searched the PubMed and Embase databases with a “natural language processing” and “epilepsy” query (March 4, 2022) and included original research articles describing the application of NLP techniques for textual analysis in epilepsy. Twenty-six studies were included. Fifty-eight percent of these studies used NLP to classify clinical records into predefined categories, improving patient identification and treatment decisions. Other applications of NLP had structured clinical information retrieval from electronic health records, scientific papers, and online posts of patients. Challenges and opportunities of NLP applications for enhancing epilepsy care and research are discussed. The field could further benefit from NLP by replicating successes in other health care domains, such as NLP-aided quality evaluation for clinical decision-making, outcome prediction, and clinical record summarization.

Keywords

clinical epilepsy, machine learning, natural language processing, textual analysis, Neurology, Clinical Neurology

Citation

Yew, A N J, Schraagen, M, Otte, W M & van Diessen, E 2023, 'Transforming epilepsy research : A systematic review on natural language processing applications', Epilepsia, vol. 64, no. 2, pp. 292-305. https://doi.org/10.1111/epi.17474