2023
DOI: 10.3389/fsurg.2023.1271775
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Natural language processing for the automated detection of intra-operative elements in lumbar spine surgery

Sayan Biswas,
Lareyna McMenemy,
Ved Sarkar
et al.

Abstract: BackgroundThe aim of this study was to develop natural language processing (NLP) algorithms to conduct automated identification of incidental durotomy, wound drains, and the use of sutures or skin clips for wound closure, in free text operative notes of patients following lumbar surgery.MethodsA single-centre retrospective case series analysis was conducted between January 2015 and June 2022, analysing operative notes of patients aged >18 years who underwent a primary lumbar discectomy and/or decompress… Show more

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Cited by 2 publications
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“…Such annotations were then exploited to train deep CNNs aimed at detecting such findings directly in the images, thus avoiding a tedious and timeconsuming human annotation of the dataset. Biswas et al described the development of NLP models to detect and identify intra-operative information such as incidental durotomy, wound drains, and skin clips, in free-text notes describing lumbar spine surgeries (92), demonstrating the potential of NLP in monitoring and reporting surgery-related information without any impact on the efficiency of the workflow.…”
Section: Natural Language Processing and Large Language Modelsmentioning
confidence: 99%
“…Such annotations were then exploited to train deep CNNs aimed at detecting such findings directly in the images, thus avoiding a tedious and timeconsuming human annotation of the dataset. Biswas et al described the development of NLP models to detect and identify intra-operative information such as incidental durotomy, wound drains, and skin clips, in free-text notes describing lumbar spine surgeries (92), demonstrating the potential of NLP in monitoring and reporting surgery-related information without any impact on the efficiency of the workflow.…”
Section: Natural Language Processing and Large Language Modelsmentioning
confidence: 99%