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Application of Natural Language Processing in Electronic Health Record Data Extraction for Navigating Prostate Cancer Care: A Narrative Review

Ansh Bhatia, Renil S. Titus, Joao G. Porto, Jonathan E. Katz, Diana M. Lopategui, Robert Marcovich, Dipen J. Parekh, Hemendra N. Shah

2024Journal of Endourology14 citationsDOI

Abstract

Introduction: Natural language processing (NLP)-based data extraction from electronic health records (EHRs) holds significant potential to simplify clinical management and aid research. This review aims to evaluate the current landscape of NLP-based data extraction in prostate cancer (PCa) management. Materials and Methods: We conducted a literature search of PubMed and Google Scholar databases using the keywords: “Natural Language Processing,” “Prostate Cancer,” “data extraction,” and “EHR” with variations of each. No language or time limits were imposed. All results were collected in a standardized manner, including country of origin, sample size, algorithm, objective of outcome, and model performance. The precision, recall, and the F1 score of studies were collected as a metric of model performance. Results: Of the 14 studies included in the review, 2 articles focused on documenting digital rectal examinations, 1 on identifying and quantifying pain secondary to PCa, 8 on extracting staging/grading information from clinical reports, with an emphasis on TNM-classification, risk stratification, and identifying metastasis, 2 articles focused on patient-centered post-treatment outcomes such as incontinence, erectile, and bowel dysfunction, and 1 on loneliness/social isolation following PCa diagnosis. All models showed moderate to high data annotation/extraction accuracy compared with the gold standard method of manual data extraction by chart review. Despite their potential, NLPs face challenges in handling ambiguous, institution-specific language and context nuances, leading to occasional inaccuracies in clinical data interpretation. Conclusion: NLP-based data extraction has effectively extracted various outcomes from PCa patients' EHRs. It holds the potential for automating outcome monitoring and data collection, resulting in time and labor savings.

Topics & Concepts

MedicineData extractionArtificial intelligenceProstate cancerNatural language processingData collectionGrading (engineering)Machine learningComputer scienceMEDLINECancerInternal medicineStatisticsEngineeringCivil engineeringLawMathematicsPolitical scienceTopic ModelingArtificial Intelligence in Healthcare and EducationData Quality and Management
Application of Natural Language Processing in Electronic Health Record Data Extraction for Navigating Prostate Cancer Care: A Narrative Review | Litcius