Medications often impose temporal constraints on everyday patient activity. Violations of such medical temporal constraints (MTCs) lead to a lack of treatment adherence, in addition to poor health outcomes and increased healthcare expenses. These MTCs are found in drug usage guidelines (DUGs) in both patient education materials and clinical texts. Computationally representing MTCs in DUGs will advance patient-centric healthcare applications by helping to define safe patient activity patterns. We define a novel taxonomy of MTCs found in DUGs and develop a novel context-free grammar (CFG) based model to computationally represent MTCs from unstructured DUGs. Additionally, we release three new datasets with a combined total of N = 836 DUGs labeled with normalized MTCs. We develop an in-context learning (ICL) solution for automatically extracting and normalizing MTCs found in DUGs, achieving an average F1 score of 0.62 across all datasets. Finally, we rigorously investigate ICL model performance against a baseline model, across datasets and MTC types, and through in-depth error analysis.
翻译:除了医疗时间限制(MTCs)的违反导致不遵守治疗规定之外,医疗时间限制(MTCs)也导致不遵守治疗规定,健康结果差,保健费用增加。这些医疗时限制见于病人教育材料和临床课本中的药物使用准则(DUGs),在DUGs中代表MTCs的计算方法将促进以病人为中心的保健应用,帮助确定病人活动的安全模式。我们定义了在DUGs中发现的MTCs的新分类,并开发了一种基于无背景的新型语法模型(CFG),以计算代表来自没有结构的DUGs的MTCs。此外,我们发放了三个新的数据集,总共N=836 DUGs,与正常的MTCs标注。我们开发了一种文字学习(ICL)解决方案,以自动提取和规范在DUGs中发现的MTCs,在所有数据集中平均达到0.62的F1分。最后,我们对照基线模型、跨数据集和MTC类型以及深入的错误分析,严格调查ICLs模型的绩效。</s>