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Multi-channel, convolutional attention based neural model for automated diagnostic coding of unstructured patient discharge summaries

机译:基于多通道,基于卷积注意的神经模型,用于非结构化患者放电摘要的自动诊断编码

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摘要

Effective coding of patient records in hospitals is an essential requirement for epidemiology, billing, and managing insurance claims. The prevalent practice of manual coding, carried out by trained medical coders, is error-prone and time-consuming. Mitigating this labor-intensive process by developing diagnostic coding systems built on patients' Electronic Medical Records (EMRs) is vital. However, developing nations with low digitization rates have limited availability of structured EMRs, thereby necessitating a need for systems that leverage unstructured data sources. Despite the rich clinical information available in such unstructured data, modeling them is complex, owing to the variety and sparseness of diagnostic codes, complex structural and temporal nature of summaries, and prolific use of medical jargon. This work proposes a context-attentive network to facilitate automatic diagnostic code assignment as a multi-label classification problem. The proposed model facilitates information aggregation across a patient's discharge summary via multi-channel, variable-sized convolutional filters to extract multi-granular snippets. The attention mechanism enables selecting vital segments in those snippets that map to the clinical codes. The model's superior performance underscores its effectiveness compared to the state-of-the-art on the M1M1C-III database. Additionally, experimental validation using the CodiEsp dataset exhibited the model's interpretability and explainability.
机译:医院患者记录的有效编码是流行病学,计费和管理保险索赔的基本要求。通过培训的医学编码器进行的手动编码的普遍做法是易于出错和耗时的。通过开发基于患者电子医疗记录(EMRS)的诊断编码系统来缓解这种劳动密集型过程是至关重要的。然而,具有低数字化率的开发国家具有结构化EMR的可用性有限,从而需要需要利用非结构化数据源的系统。尽管在这种非结构化数据中提供了丰富的临床信息,但由于诊断代码的种类和稀疏性,摘要的复杂结构和时间性,以及医用术语的多产性,而造型。这项工作提出了一种上下文 - 周度的网络,以促进自动诊断代码分配作为多标签分类问题。所提出的模型通过多通道,可变大小的卷积滤波器促进患者排放概要的信息聚集,以提取多粒状片段。注意机制使得能够在映射到临床码的那些片段中选择重要的段。与M1M1C-III数据库上的最先进,模型的卓越性能强调了其有效性。此外,使用代码代码数据集的实验验证表现出模型的可解释性和解释性。

著录项

  • 来源
    《Future generation computer systems》 |2021年第5期|374-391|共18页
  • 作者单位

    Healthcare Analytics and Language Engineering (HALE) Lab Department of Information Technology National Institute of Technology Karnataka Surathkal Mangalore 575025 India;

    Healthcare Analytics and Language Engineering (HALE) Lab Department of Information Technology National Institute of Technology Karnataka Surathkal Mangalore 575025 India;

    Healthcare Analytics and Language Engineering (HALE) Lab Department of Information Technology National Institute of Technology Karnataka Surathkal Mangalore 575025 India;

    Automated Quality Assistance (AQuA) Machine Learning Research Kindle Content Quality Books Org. Amazon.com Inc. India;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Disease prediction; Explainability; Healthcare informatics; Interpretability; Predictive analytics; Unstructured text modeling;

    机译:疾病预测;解释性;医疗信息学;解释性;预测分析;非结构化文本建模;
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