Prescription medications often impose temporal constraints on regular health behaviors (RHBs) of patients, e.g., eating before taking medication. Violations of such medical temporal constraints (MTCs) can result in adverse effects. Detecting and predicting such violations before they occur can help alert the patient. We formulate the problem of modeling MTCs and develop a proof-of-concept solution, ActSafe, to predict violations of MTCs well ahead of time. ActSafe utilizes a context-free grammar based approach for extracting and mapping MTCs from patient education materials. It also addresses the challenges of accurately predicting RHBs central to MTCs (e.g., medication intake). Our novel behavior prediction model, HERBERT , utilizes a basis vectorization of time series that is generalizable across temporal scale and duration of behaviors, explicitly capturing the dependency between temporally collocated behaviors. Based on evaluation using a real-world RHB dataset collected from 28 patients in uncontrolled environments, HERBERT outperforms baseline models with an average of 51% reduction in root mean square error. Based on an evaluation involving patients with chronic conditions, ActSafe can predict MTC violations a day ahead of time with an average F1 score of 0.86.
翻译:处方药往往对病人的正常健康行为施加时间限制,例如,在服药前就餐; 违反这种医疗时间限制可能会造成不良后果; 在这种违反行为发生之前检测和预测这种违反行为有助于提醒病人; 我们提出对MTC进行模拟的问题,并制定一个概念验证解决方案,即ActSafe, 预先预先预测违反MTC的行为; Acssafee 采用基于环境的无背景语法方法,从病人教育材料中提取和绘制MTCs; 它还处理准确预测RHBs至MTCs中心(例如药物摄入量)的挑战; 我们的新的行为预测模型HERBERT, 利用在时间范围和行为持续时间尺度上可以普遍采用的时间序列的基矢量,明确了解在时间相联行为之间的依赖性; 根据评价,利用从不受控制环境中28名病人收集到的真实的RHSB数据集, HERBERT 超越基线模型, 以平均51%的违反情况为基准模型(例如药物摄入量); 我们的新的行为预测模型, HERBERBs, 将使用长期、平均的违反情况与0.S标准,可以提前评估。