Occupation Recognition and Exploitation in Rheumatology Clinical Notes: Employing Deep Learning Models for Named Entity Recognition and Knowledge Discovery in Electronic Health Records

Alfredo Madrid-García, Inés Pérez-Sancristóbal, Leticia-Leon, Lydia-Abásolo, Benjamín Fernández-Gutiérrez, Luis Rodríguez-Rodríguez
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Abstract

Occupation is considered a Social Determinant of Health (SDOH) and its effects have been studied at multiple levels. Although the inclusion of such data in the Electronic Health Record (EHR) is vital for the provision of clinical care, specially in rheumatology where work disability prevention is essential, occupation information is often either not routinely documented or captured in an unstructured manner within conventional EHR systems. Encouraged by recent advances in natural language processing and deep learning models, we propose the use of novel architectures (i.e., transformers) to detect occupation mentions in rheumatology clinical notes of a tertiary hospital, and to whom those occupations belongs. We also aimed to evaluate the clinical and demographic characteristics that influence the collection of this SDOH; and the association between occupation and patients’ diagnosis. Bivariate and multivariate logistic regression analysis were conducted for this purpose.
风湿病学临床笔记中的职业识别与利用:在电子健康记录中采用深度学习模型进行命名实体识别和知识发现
职业被认为是健康的社会决定因素(SDOH),其影响已在多个层面进行了研究。虽然将这些数据纳入电子病历(EHR)对于提供临床护理至关重要,特别是在风湿病学中,预防工作残疾至关重要,但在传统的电子病历系统中,职业信息往往不是没有常规记录,就是以非结构化的方式获取。受自然语言处理和深度学习模型最新进展的鼓舞,我们提出使用新型架构(即转换器)来检测一家三甲医院风湿病学临床笔记中的职业提及,以及这些职业的所属人群。我们还旨在评估影响这种 SDOH 收集的临床和人口特征;以及职业与患者诊断之间的关联。为此,我们进行了二元和多元逻辑回归分析。
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