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Construction and utilization of a neural network model to predict current procedural terminology codes from pathology report texts

机译:神经网络模型的构建与利用预测病理报告文本的当前程序术语代码

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Background: At our department, each specimen was assigned a tentative current procedural terminology (CPT) code at accessioning. The codes were subject to subsequent changes by pathologist assistants and pathologists. After the cases had been finalized, their CPT codes went through a final verification step by coding staff, with the aid of a keyword-based CPT code-checking web application. Greater than 97% of the initial assignments were correct. This article describes the construction of a CPT code-predicting neural network model and its incorporation into the CPT code-checking application. Materials and Methods: R programming language was used. Pathology report texts and CPT codes for the cases finalized during January 1–November 30, 2018, were retrieved from the database. The order of the specimens was randomized before the data were partitioned into training and validation set. R Keras package was used for both model training and prediction. The chosen neural network had a three-layer architecture consisting of a word-embedding layer, a bidirectional long short-term memory (LSTM) layer, and a densely connected layer. It used concatenated header-diagnosis texts as the input. Results: The model predicted CPT codes in both the validation data set and the test data set with an accuracy of 97.5% and 97.6%, respectively. Closer examination of the test data set (cases from December 1 to 27, 2018) revealed two interesting observations. First, among the specimens that had incorrect initial CPT code assignments, the model disagreed with the initial assignments in 73.6% (117/159) and agreed in 26.4% (42/159). Second, the model identified nine additional specimens with incorrect CPT codes that had evaded all steps of checking. Conclusions: A neural network model using report texts to predict CPT codes can achieve high accuracy in prediction and moderate sensitivity in error detection. Neural networks may play increasing roles in CPT coding in surgical pathology.
机译:背景:在我们的部门,在加入时分配了每个标本的暂定流程术语(CPT)代码。该代码受到病理学家助理和病理学家的后续变化。在最终确定案件后,借助基于关键字的CPT代码检查Web应用程序,他们的CPT代码通过编码员工进行最终验证步骤。大于97%的初始任务是正确的。本文介绍了CPT代码预测神经网络模型的构造及其在CPT代码检查应用中的结合。材料和方法:使用R编程语言。病理报告文本和CPT代码在2018年1月30日至11月30日的1月30日最终确定,从数据库中检索。在数据分为训练和验证集之前,样本的顺序被随机化。 R Keras包用于模型培训和预测。所选择的神经网络具有三层架构,由嵌入层,双向长短期存储器(LSTM)层和密集连接层组成。它使用连接的头部诊断文本作为输入。结果:模型预测验证数据集中的CPT代码和测试数据分别为97.5%和97.6%的精度。仔细检查测试数据集(案例从12月1日至2018年12月17日)揭示了两个有趣的观察。首先,在初始CPT代码任务的标本中,在73.6%(117/159)中不同意初始任务的模型,同意26.4%(42/159)。其次,该模型确定了九个额外标本,CPT代码不正确逃避所有检查的步骤。结论:使用报告文本来预测CPT代码的神经网络模型可以在错误检测中实现预测和中等灵敏度的高精度。神经网络可能在手术病理学中的CPT编码中发挥越来越多的作用。

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