Royal Adelaide Hospital, Adelaide, South Australia, Australia.
Machine Learning Division, Ophthalmic Research Laboratory, University of Adelaide, Adelaide, South Australia, Australia.
Ophthalmic Res. 2023;66(1):928-939. doi: 10.1159/000530954. Epub 2023 May 11.
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.
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.
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).
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.
准确的程序编码对医疗服务提供者具有重要的医学法律、学术和经济意义。程序编码需要准确的文档记录和详尽的人工劳动来解释复杂的手术记录。眼科手术记录非常专业,使得这个过程既耗时又具有挑战性。本研究旨在开发由医学专业人员训练的自然语言处理 (NLP) 模型,根据手术报告分配程序代码。这些模型的自动化和准确性可以减轻医疗服务提供者的负担,并生成反映手术执行情况的报销。
对两家大都市医院的眼科手术记录进行了为期 12 个月的回顾性分析。根据医疗保险福利计划 (MBS) 应用程序代码。XGBoost、决策树、双向转换器表示 (BERT) 和逻辑回归模型用于分类实验。实验涉及多标签和二进制分类,最佳表现模型用于保留测试数据集。
研究中包含 1000 份手术记录。经过手动审查,最常见的五种手术是白内障手术(374 例)、玻璃体切除术(298 例)、激光治疗(149 例)、小梁切除术(56 例)和玻璃体内注射(49 例)。在整个数据集,现行编码在 53.9%的病例中是正确的。BERT 模型在这五种手术的多标签分类中具有最高的分类准确性(88.0%)。机器学习算法实现的总报销金额为 184689.45 美元(每例 923.45 美元),而黄金标准为 214527.50 美元(每例 1072.64 美元)。
我们的研究表明,使用 NLP 技术可以将眼科手术记录准确地分类为 MBS 编码类别。结合人机方法,包括使用 NLP 筛选手术记录以编码程序,然后由人工进行审查。这项技术可以更准确地分配正确的 MBS 代码。在这一领域进一步的研究和应用可以促进对单位活动的准确记录,从而为医疗服务提供者提供报销。程序编码准确性的提高可以在培训和教育、疾病流行病学研究以及优化患者结果的研究方法方面发挥重要作用。