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Automated Billing Code Retrieval from MRI Scanner Log Data

机译:自动计费代码从MRI扫描仪日志数据检索

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摘要

Although the level of digitalization and automation steadily increases in radiology, billing coding for magnetic resonance imaging (MRI) exams in the radiology department is still based on manual input from the technologist. After the exam completion, the technologist enters the corresponding exam codes that are associated with billing codes in the radiology information system. Moreover, additional billing codes are added or removed, depending on the performed procedure. This workflow is time-consuming and we showed that billing codes reported by the technologists contain errors. The coding workflow can benefit from an automated system, and thus a prediction model for automated assignment of billing codes for MRI exams based on MRI log data is developed in this work. To the best of our knowledge, it is the first attempt to focus on the prediction of billing codes from modality log data. MRI log data provide a variety of information, including the set of executed MR sequences, MR scanner table movements, and given a contrast medium. MR sequence names are standardized using a heuristic approach and incorporated into the features for the prediction. The prediction model is trained on 9754 MRI exams and tested on 1 month of log data (423 MRI exams) from two MRI scanners of the radiology site for the Swiss medical tariffication system Tarmed. The developed model, an ensemble of classifier chains with multilayer perceptron as a base classifier, predicts medical billing codes for MRI exams with a micro-averaged F1-score of 97.8% (recall 98.1%, precision 97.5%). Manual coding reaches a micro-averaged F1-score of 98.1% (recall 97.4%, precision 98.8%). Thus, the performance of automated coding is close to human performance. Integrated into the clinical environment, this work has the potential to free the technologist from a non-value adding an administrative task, therefore enhance the MRI workflow, and prevent coding errors.
机译:虽然数字化和自动化水平稳定地增加放射学,但放射学部门磁共振成像(MRI)考试的计费编码仍然基于技术专家的手动输入。在考试完成后,技术专家们进入与放射学信息系统中的结算代码相关联的相应考试代码。此外,根据执行的程序,添加或删除额外的计费代码。此工作流程是耗时的,我们展示了技术人员报告的结算代码包含错误。编码工作流程可以从自动化系统中受益,因此在这项工作中开发了基于MRI日志数据的MRI考试的计费代码的自动分配预测模型。据我们所知,首次尝试从模态日志数据中重点关注计费代码的预测。 MRI日志数据提供了各种信息,包括该组执行的MR序列,MR扫描仪表移动,并给出了对比介质。 MR序列名称使用启发式方法标准化并将其结合到预测的特征中。预测模型在9754 MRI考试中培训,并于1个月的日志数据(423 mRI考试)从瑞士医疗估算系统的两个MRI扫描仪中进行了1个月的日志数据(423 mRI考试)。开发的模型,具有多层Perceptron作为基础分类器的分类器链的集合,预测MRI考试的医学结算代码,微平均F1分数为97.8%(召回98.1%,精度97.5%)。手动编码达到98.1%的微平均F1分(召回97.4%,精度98.8%)。因此,自动编码的性能接近人类性能。综合进入临床环境,这项工作有可能从非值添加技术员添加管理任务,从而增强MRI工作流程,并防止编码错误。

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