CCS Coding of Discharge Diagnoses via Deep Neural Networks

Chadi Helwe, Shady Elbassuoni, Mirabelle Geha, E. Hitti, C. Obermeyer
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引用次数: 7

Abstract

A standard procedure in the medical domain is to code discharge diagnoses into a set of manageable categories known as the CCS codes. This is typically done by first manually coding the discharge diagnoses into the standard ICD codes and then using a one-to-one mapping between ICD and CCS codes. In this paper, we study the applicability of deep learning to perform automatic coding of discharge diagnoses into CCS codes. In particular, we build an LSTM network combined with a dense neural network that uses medically-trained word embeddings to code discharge diagnoses into single-level CCS codes. We also investigate the advantage of mapping discharge diagnoses into UMLS concepts before coding is carried out. Experimental results based on a large dataset of manually coded discharge diagnoses show that our deep-learning model outperforms the state-of-the-art automatic coding approaches and that the mapping to UMLS concepts consistently results in significant improvement in the coding accuracy.
基于深度神经网络的放电诊断的CCS编码
医学领域的标准程序是将出院诊断编码为一组可管理的类别,称为CCS代码。这通常是通过首先手动将排放诊断编码到标准ICD代码中,然后使用ICD和CCS代码之间的一对一映射来完成的。在本文中,我们研究了深度学习在将放电诊断自动编码为CCS代码中的适用性。特别地,我们构建了一个LSTM网络与密集神经网络相结合,该网络使用医学训练的词嵌入将放电诊断编码为单级CCS代码。我们还研究了在编码之前将放电诊断映射到UMLS概念中的优势。基于手动编码出院诊断的大型数据集的实验结果表明,我们的深度学习模型优于最先进的自动编码方法,并且映射到UMLS概念一致地导致编码精度的显着提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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