Can structured EHR data support clinical coding? A data mining approach.

IF 1.2 Q4 HEALTH POLICY & SERVICES
José Carlos Ferrão, Mónica Duarte Oliveira, Filipe Janela, Henrique M G Martins, Daniel Gartner
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引用次数: 7

Abstract

Structured data formats are gaining momentum in electronic health records and can be leveraged for decision support and research. Nevertheless, such structured data formats have not been explored for clinical coding, which is an essential process requiring significant manual workload in health organisations. This article explores the extent to which fully structured clinical data can support assignment of clinical codes to inpatient episodes, through a methodology that tackles high dimensionality issues, addresses the multi-label nature of coding and optimises model parameters. The methodology encompasses transformation of raw data to define a feature set, build a data matrix representation, and testing combinations of feature selection methods with machine learning models to predict code assignment. The methodology was tested with a real hospital dataset and showed varying predictive power across codes, while demonstrating the potential of leveraging structuring data to reduce workload and increase efficiency in clinical coding.

结构化的电子病历数据能支持临床编码吗?一种数据挖掘方法。
结构化数据格式在电子健康记录中势头正盛,可用于决策支持和研究。然而,这种结构化数据格式尚未被用于临床编码,这是卫生组织中需要大量手工工作量的基本过程。本文通过一种解决高维问题、解决编码的多标签性质和优化模型参数的方法,探讨了完全结构化的临床数据在多大程度上可以支持将临床代码分配给住院患者。该方法包括对原始数据进行转换以定义特征集,构建数据矩阵表示,以及测试特征选择方法与机器学习模型的组合以预测代码分配。该方法用真实的医院数据集进行了测试,并显示出不同代码的预测能力,同时展示了利用结构化数据减少工作量和提高临床编码效率的潜力。
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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来源期刊
Health Systems
Health Systems HEALTH POLICY & SERVICES-
CiteScore
4.20
自引率
11.10%
发文量
20
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