Joo Hyeon, Burns Michael, Kalidaikurichi Lakshmanan Sai Saradha, Hu Yaokun, Vydiswaran V G Vinod
Department of Learning Health Sciences, University of Michigan, Ann Arbor, MI, United States.
Department of Anesthesiology, University of Michigan, Ann Arbor, MI, United States.
JMIR Form Res. 2021 May 26;5(5):e22461. doi: 10.2196/22461.
Administrative costs for billing and insurance-related activities in the United States are substantial. One critical cause of the high overhead of administrative costs is medical billing errors. With advanced deep learning techniques, developing advanced models to predict hospital and professional billing codes has become feasible. These models can be used for administrative cost reduction and billing process improvements.
In this study, we aim to develop an automated anesthesiology current procedural terminology (CPT) prediction system that translates manually entered surgical procedure text into standard forms using neural machine translation (NMT) techniques. The standard forms are calculated using similarity scores to predict the most appropriate CPT codes. Although this system aims to enhance medical billing coding accuracy to reduce administrative costs, we compare its performance with that of previously developed machine learning algorithms.
We collected and analyzed all operative procedures performed at Michigan Medicine between January 2017 and June 2019 (2.5 years). The first 2 years of data were used to train and validate the existing models and compare the results from the NMT-based model. Data from 2019 (6-month follow-up period) were then used to measure the accuracy of the CPT code prediction. Three experimental settings were designed with different data types to evaluate the models. Experiment 1 used the surgical procedure text entered manually in the electronic health record. Experiment 2 used preprocessing of the procedure text. Experiment 3 used preprocessing of the combined procedure text and preoperative diagnoses. The NMT-based model was compared with the support vector machine (SVM) and long short-term memory (LSTM) models.
The NMT model yielded the highest top-1 accuracy in experiments 1 and 2 at 81.64% and 81.71% compared with the SVM model (81.19% and 81.27%, respectively) and the LSTM model (80.96% and 81.07%, respectively). The SVM model yielded the highest top-1 accuracy of 84.30% in experiment 3, followed by the LSTM model (83.70%) and the NMT model (82.80%). In experiment 3, the addition of preoperative diagnoses showed 3.7%, 3.2%, and 1.3% increases in the SVM, LSTM, and NMT models in top-1 accuracy over those in experiment 2, respectively. For top-3 accuracy, the SVM, LSTM, and NMT models achieved 95.64%, 95.72%, and 95.60% for experiment 1, 95.75%, 95.67%, and 95.69% for experiment 2, and 95.88%, 95.93%, and 95.06% for experiment 3, respectively.
This study demonstrates the feasibility of creating an automated anesthesiology CPT classification system based on NMT techniques using surgical procedure text and preoperative diagnosis. Our results show that the performance of the NMT-based CPT prediction system is equivalent to that of the SVM and LSTM prediction models. Importantly, we found that including preoperative diagnoses improved the accuracy of using the procedure text alone.
美国与计费和保险相关活动的管理成本很高。管理成本过高的一个关键原因是医疗计费错误。借助先进的深度学习技术,开发先进模型来预测医院和专业计费代码已变得可行。这些模型可用于降低管理成本和改进计费流程。
在本研究中,我们旨在开发一种自动化麻醉当前操作术语(CPT)预测系统,该系统使用神经机器翻译(NMT)技术将手动输入的外科手术文本转换为标准形式。通过相似度得分计算标准形式,以预测最合适的CPT代码。尽管该系统旨在提高医疗计费编码准确性以降低管理成本,但我们将其性能与先前开发的机器学习算法进行比较。
我们收集并分析了2017年1月至2019年6月(2.5年)在密歇根医学中心进行的所有手术操作。前两年的数据用于训练和验证现有模型,并比较基于NMT模型的结果。然后使用2019年的数据(6个月随访期)来测量CPT代码预测的准确性。设计了三种不同数据类型的实验设置来评估模型。实验1使用电子健康记录中手动输入的外科手术文本。实验2使用手术文本的预处理。实验3使用手术文本和术前诊断的联合预处理。将基于NMT的模型与支持向量机(SVM)和长短期记忆(LSTM)模型进行比较。
在实验1和实验2中,NMT模型的 top-1准确率最高,分别为81.64%和81.71%,而SVM模型分别为81.19%和81.27%,LSTM模型分别为80.96%和81.07%。在实验3中,SVM模型的top-1准确率最高,为84.30%,其次是LSTM模型(83.70%)和NMT模型(82.80%)。在实验3中,与实验2相比,添加术前诊断后,SVM、LSTM和NMT模型的top-1准确率分别提高了3.7%、3.2%和1.3%。对于top-3准确率,实验1中SVM、LSTM和NMT模型分别达到95.64%、95.72%和95.60%,实验2中分别为95.75%、95.67%和95.69%,实验3中分别为95.88%、95.93%和95.06%。
本研究证明了使用手术文本和术前诊断基于NMT技术创建自动化麻醉CPT分类系统的可行性。我们的结果表明,基于NMT的CPT预测系统的性能与SVM和LSTM预测模型相当。重要的是,我们发现纳入术前诊断提高了仅使用手术文本时的准确性。