Natural Language Processing in Surgery: A Systematic Review and Meta-analysis

Objective: The aim of this study was to systematically assess the application and potential benefits of natural language processing (NLP) in surgical outcomes research. Summary Background Data: Widespread implementation of electronic health records (EHRs) has generated a massive patient data source. Traditional methods of data capture, such as billing codes and/or manual review of free-text narratives in EHRs, are highly labor-intensive, costly, subjective, and potentially prone to bias. Methods: A literature search of PubMed, MEDLINE, Web of Science, and Embase identified all articles published starting in 2000 that used NLP models to assess perioperative surgical outcomes. Evaluation metrics of NLP systems were assessed by means of pooled analysis and meta-analysis. Qualitative synthesis was carried out to assess the results and risk of bias on outcomes. Results: The present study included 29 articles, with over half (n = 15) published after 2018. The most common outcome identified using NLP was postoperative complications (n = 14). Compared to traditional non-NLP models, NLP models identified postoperative complications with higher sensitivity [0.92 (0.87–0.95) vs 0.58 (0.33–0.79), P
Source: Annals of Surgery - Category: Surgery Tags: REVIEW PAPER Source Type: research