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Ophthalmology Operation Note Encoding with Open-Source Machine Learning and Natural Language Processing

INTRODUCTION: Accurate assignment of procedural codes has important medico-legal, academic, and economic purposes for healthcare providers. Procedural coding requires accurate documentation and exhaustive manual labour to interpret complex operation notes. Ophthalmology operation notes are highly sp...

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Autores principales: Lee, Yong Min, Bacchi, Stephen, Macri, Carmelo, Tan, Yiran, Casson, Robert J., Chan, Weng Onn
Formato: Online Artículo Texto
Lenguaje:English
Publicado: S. Karger AG 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10308528/
https://www.ncbi.nlm.nih.gov/pubmed/37231984
http://dx.doi.org/10.1159/000530954
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author Lee, Yong Min
Bacchi, Stephen
Macri, Carmelo
Tan, Yiran
Casson, Robert J.
Chan, Weng Onn
author_facet Lee, Yong Min
Bacchi, Stephen
Macri, Carmelo
Tan, Yiran
Casson, Robert J.
Chan, Weng Onn
author_sort Lee, Yong Min
collection PubMed
description INTRODUCTION: Accurate assignment of procedural codes has important medico-legal, academic, and economic purposes for healthcare providers. Procedural coding requires accurate documentation and exhaustive manual labour to interpret complex operation notes. Ophthalmology operation notes are highly specialised making the process time-consuming and challenging to implement. This study aimed to develop natural language processing (NLP) models trained by medical professionals to assign procedural codes based on the surgical report. The automation and accuracy of these models can reduce burden on healthcare providers and generate reimbursements that reflect the operation performed. METHODS: A retrospective analysis of ophthalmological operation notes from two metropolitan hospitals over a 12-month period was conducted. Procedural codes according to the Medicare Benefits Schedule (MBS) were applied. XGBoost, decision tree, Bidirectional Encoder Representations from Transformers (BERT) and logistic regression models were developed for classification experiments. Experiments involved both multi-label and binary classification, and the best performing model was used on the holdout test dataset. RESULTS: There were 1,000 operation notes included in the study. Following manual review, the five most common procedures were cataract surgery (374 cases), vitrectomy (298 cases), laser therapy (149 cases), trabeculectomy (56 cases), and intravitreal injections (49 cases). Across the entire dataset, current coding was correct in 53.9% of cases. The BERT model had the highest classification accuracy (88.0%) in the multi-label classification on these five procedures. The total reimbursement achieved by the machine learning algorithm was $184,689.45 ($923.45 per case) compared with the gold standard of $214,527.50 ($1,072.64 per case). CONCLUSION: Our study demonstrates accurate classification of ophthalmic operation notes into MBS coding categories with NLP technology. Combining human and machine-led approaches involves using NLP to screen operation notes to code procedures, with human review for further scrutiny. This technology can allow the assignment of correct MBS codes with greater accuracy. Further research and application in this area can facilitate accurate logging of unit activity, leading to reimbursements for healthcare providers. Increased accuracy of procedural coding can play an important role in training and education, study of disease epidemiology and improve research ways to optimise patient outcomes.
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spelling pubmed-103085282023-06-30 Ophthalmology Operation Note Encoding with Open-Source Machine Learning and Natural Language Processing Lee, Yong Min Bacchi, Stephen Macri, Carmelo Tan, Yiran Casson, Robert J. Chan, Weng Onn Ophthalmic Res Research Article INTRODUCTION: Accurate assignment of procedural codes has important medico-legal, academic, and economic purposes for healthcare providers. Procedural coding requires accurate documentation and exhaustive manual labour to interpret complex operation notes. Ophthalmology operation notes are highly specialised making the process time-consuming and challenging to implement. This study aimed to develop natural language processing (NLP) models trained by medical professionals to assign procedural codes based on the surgical report. The automation and accuracy of these models can reduce burden on healthcare providers and generate reimbursements that reflect the operation performed. METHODS: A retrospective analysis of ophthalmological operation notes from two metropolitan hospitals over a 12-month period was conducted. Procedural codes according to the Medicare Benefits Schedule (MBS) were applied. XGBoost, decision tree, Bidirectional Encoder Representations from Transformers (BERT) and logistic regression models were developed for classification experiments. Experiments involved both multi-label and binary classification, and the best performing model was used on the holdout test dataset. RESULTS: There were 1,000 operation notes included in the study. Following manual review, the five most common procedures were cataract surgery (374 cases), vitrectomy (298 cases), laser therapy (149 cases), trabeculectomy (56 cases), and intravitreal injections (49 cases). Across the entire dataset, current coding was correct in 53.9% of cases. The BERT model had the highest classification accuracy (88.0%) in the multi-label classification on these five procedures. The total reimbursement achieved by the machine learning algorithm was $184,689.45 ($923.45 per case) compared with the gold standard of $214,527.50 ($1,072.64 per case). CONCLUSION: Our study demonstrates accurate classification of ophthalmic operation notes into MBS coding categories with NLP technology. Combining human and machine-led approaches involves using NLP to screen operation notes to code procedures, with human review for further scrutiny. This technology can allow the assignment of correct MBS codes with greater accuracy. Further research and application in this area can facilitate accurate logging of unit activity, leading to reimbursements for healthcare providers. Increased accuracy of procedural coding can play an important role in training and education, study of disease epidemiology and improve research ways to optimise patient outcomes. S. Karger AG 2023-05 2023-05-11 /pmc/articles/PMC10308528/ /pubmed/37231984 http://dx.doi.org/10.1159/000530954 Text en © 2023 The Author(s).Published by S. Karger AG, Basel https://creativecommons.org/licenses/by-nc/4.0/This article is licensed under the Creative Commons Attribution-NonCommercial 4.0 International License (CC BY-NC) (http://www.karger.com/Services/OpenAccessLicense). Usage and distribution for commercial purposes requires written permission.
spellingShingle Research Article
Lee, Yong Min
Bacchi, Stephen
Macri, Carmelo
Tan, Yiran
Casson, Robert J.
Chan, Weng Onn
Ophthalmology Operation Note Encoding with Open-Source Machine Learning and Natural Language Processing
title Ophthalmology Operation Note Encoding with Open-Source Machine Learning and Natural Language Processing
title_full Ophthalmology Operation Note Encoding with Open-Source Machine Learning and Natural Language Processing
title_fullStr Ophthalmology Operation Note Encoding with Open-Source Machine Learning and Natural Language Processing
title_full_unstemmed Ophthalmology Operation Note Encoding with Open-Source Machine Learning and Natural Language Processing
title_short Ophthalmology Operation Note Encoding with Open-Source Machine Learning and Natural Language Processing
title_sort ophthalmology operation note encoding with open-source machine learning and natural language processing
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10308528/
https://www.ncbi.nlm.nih.gov/pubmed/37231984
http://dx.doi.org/10.1159/000530954
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