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A Neural Architecture for Automated ICD Coding

机译:自动ICD编码的神经架构

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The International Classification of Diseases (ICD) provides a hierarchy of diagnostic codes for classifying diseases. Medical coding - which assigns a subset of ICD codes to a patient visit - is a mandatory process that is crucial for patient care and billing. Manual coding is time-consuming, expensive, and error-prone. In this paper, we build a neural architecture for automated coding. It lakes the diagnosis descriptions (DDs) of a patient as inputs and selects the most relevant ICD codes. This architecture contains four major ingredients: (1) tree-of-sequences LSTM encoding of code descriptions (CDs), (2) adversarial learning for reconciling the different writing styles of DDs and CDs, (3) isotonic constraints for incorporating the importance order among the assigned codes, and (4) atten-tional matching for performing many-to-one and one-to-many mappings from DDs to CDs. We demonstrate the effectiveness of the proposed methods on a clinical datasets with 59K patient visits.
机译:国际疾病分类(ICD)提供了用于对疾病进行分类的诊断代码的层次结构。医疗编码-将ICD码的子集分配给患者就诊-是强制性过程,对于患者护理和计费至关重要。手动编码非常耗时,昂贵且容易出错。在本文中,我们构建了用于自动编码的神经体系结构。它将患者的诊断说明(DD)作为输入,并选择最相关的ICD代码。此体系结构包含四个主要成分:(1)代码描述(CD)的序列树LSTM编码,(2)用于协调DD和CD的不同写作风格的对抗学习,(3)用于合并重要性顺序的等张约束在分配的代码中,以及(4)注意匹配,用于执行从DD到CD的多对一和一对多映射。我们在59K患者就诊的临床数据集上证明了所提出方法的有效性。

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