HiCu:在自动化ICD编码中利用层次结构进行课程学习

Weiming Ren, Ruijing Zeng, Tong Wu, Tianshu Zhu, R. G. Krishnan
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引用次数: 2

摘要

在医疗保健领域有几个实现自动化的机会,可以提高临床医生的吞吐量。其中一个例子是临床医生写笔记时记录诊断代码的辅助工具。我们使用课程学习来研究医疗代码预测的自动化,课程学习是一种机器学习模型的训练策略,它逐渐将学习任务的难度从简单增加到困难。课程学习的挑战之一是课程的设计,即在逐步增加难度的任务的顺序设计中。我们提出了分层课程学习(HiCu),一种利用输出空间中的图结构来设计多标签分类课程的算法。我们为多标签分类模型创建课程,从患者的自然语言描述中预测ICD诊断和程序代码。通过利用ICD代码的层次结构,将基于人体各种器官系统的诊断代码分组,我们发现我们提出的课程提高了基于神经网络的预测模型在循环、卷积和基于变压器的架构中的泛化。我们的代码可在https://github.com/wren93/HiCu-ICD上获得。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
HiCu: Leveraging Hierarchy for Curriculum Learning in Automated ICD Coding
There are several opportunities for automation in healthcare that can improve clinician throughput. One such example is assistive tools to document diagnosis codes when clinicians write notes. We study the automation of medical code prediction using curriculum learning, which is a training strategy for machine learning models that gradually increases the hardness of the learning tasks from easy to difficult. One of the challenges in curriculum learning is the design of curricula -- i.e., in the sequential design of tasks that gradually increase in difficulty. We propose Hierarchical Curriculum Learning (HiCu), an algorithm that uses graph structure in the space of outputs to design curricula for multi-label classification. We create curricula for multi-label classification models that predict ICD diagnosis and procedure codes from natural language descriptions of patients. By leveraging the hierarchy of ICD codes, which groups diagnosis codes based on various organ systems in the human body, we find that our proposed curricula improve the generalization of neural network-based predictive models across recurrent, convolutional, and transformer-based architectures. Our code is available at https://github.com/wren93/HiCu-ICD.
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