Acute kidney injury (AKI) is a common clinical syndrome characterized by a sudden episode of kidney failure or kidney damage within a few hours or a few days. Accurate early prediction of AKI for patients in ICU who are more likely than others to have AKI can enable timely interventions, and reduce the complications of AKI. Much of the clinical information relevant to AKI is captured in clinical notes that are largely unstructured text and requires advanced natural language processing (NLP) for useful information extraction. On the other hand, pre-trained contextual language models such as Bidirectional Encoder Representations from Transformers (BERT) have improved performances for many NLP tasks in general domain recently. However, few have explored BERT on disease-specific medical domain tasks such as AKI early prediction. In this paper, we try to apply BERT to specific diseases and present an AKI domain-specific pre-trained language model based on BERT (AKI-BERT) that could be used to mine the clinical notes for early prediction of AKI. AKI-BERT is a BERT model pre-trained on the clinical notes of patients having risks for AKI. Our experiments on Medical Information Mart for Intensive Care III (MIMIC-III) dataset demonstrate that AKI-BERT can yield performance improvements for early AKI prediction, thus expanding the utility of the BERT model from general clinical domain to disease-specific domain.
翻译:急性肾损伤(AKI)是一种常见的临床综合症(AKI),其特点是在数小时内或数天内突然出现肾衰竭或肾损伤的突发事件; 准确预测伊斯兰法院联盟中比其他人更有可能拥有AKI的病人AKI能够及时干预并减少AKI的并发症; 与AKI有关的许多临床信息都记录在临床笔记中,这些笔记基本上没有结构,需要先进的自然语言处理(NLPP),以便进行有用的信息提取; 另一方面,预先培训的背景语言模型,如变异器(BERT)的双向电解密显示器(BERT)最近改进了一般领域许多NLP任务的性能; 然而,很少有人探讨过BERT针对特定疾病的医疗领域的任务,例如AKI的早期预测; 在本文中,我们试图对具体疾病应用BERTERT(AKI-BER) 的局部临床笔记号模型,用来进行早期预测。