Classifying Electronic Consults for Triage Status and Question Type.

Xiyu Ding, Michael L Barnett, Ateev Mehrotra, Timothy A Miller
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Abstract

Electronic consult (eConsult) systems allow specialists more flexibility to respond to referrals more efficiently, thereby increasing access in under-resourced healthcare settings like safety net systems. Understanding the usage patterns of eConsult system is an important part of improving specialist efficiency. In this work, we develop and apply classifiers to a dataset of eConsult questions from primary care providers to specialists, classifying the messages for how they were triaged by the specialist office, and the underlying type of clinical question posed by the primary care provider. We show that pre-trained transformer models are strong baselines, with improving performance from domain-specific training and shared representations.

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分类电子会诊的分诊状态和问题类型。
电子咨询(eConsult)系统使专家能够更灵活、更有效地对转诊作出反应,从而增加了资源不足的医疗保健环境(如安全网系统)的可及性。了解eConsult系统的使用模式是提高专家工作效率的重要组成部分。在这项工作中,我们开发并将分类器应用于从初级保健提供者到专家的eConsult问题数据集,对专家办公室如何对其进行分类的信息以及初级保健提供者提出的潜在临床问题类型进行分类。我们展示了预训练的变压器模型是强大的基线,通过特定领域的训练和共享表示提高了性能。
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