首页> 外文期刊>JMIR Mental Health >Detection of Behavioral Anomalies in Medication Adherence Patterns Among Patients With Serious Mental Illness Engaged With a Digital Medicine System
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Detection of Behavioral Anomalies in Medication Adherence Patterns Among Patients With Serious Mental Illness Engaged With a Digital Medicine System

机译:用数字医学系统患者患者药物粘附模式的行为异常检测

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Background Adherence to medication is often represented in the form of a success percentage over a period of time. Although noticeable changes to aggregate adherence levels may be indicative of unstable medication behavior, a lack of noticeable changes in aggregate levels over time does not necessarily indicate stability. The ability to detect developing changes in medication-taking behavior under such conditions in real time would allow patients and care teams to make more timely and informed decisions. Objective This study aims to develop a method capable of identifying shifts in behavioral (medication) patterns at the individual level and subsequently assess the presence of such shifts in retrospective clinical trial data from patients with serious mental illness. Methods We defined the term adherence volatility as “the degree to which medication ingestion behavior fits expected behavior based on historically observed data” and defined a contextual anomaly system around this concept, leveraging the empirical entropy rate of a stochastic process as the basis for formulating anomaly detection. For the presented methodology, each patient’s evolving behavior is used to dynamically construct the expectation bounds for each future interval, eliminating the need to rely on model training or a static reference sequence. Results Simulations demonstrated that the presented methodology identifies anomalous behavior patterns even when aggregate adherence levels remain constant and highlight the temporal dependence inherent in these anomalies. Although a given sequence of events may present as anomalous during one period, that sequence should subsequently contribute to future expectations and may not be considered anomalous at a later period—this feature was demonstrated in retrospective clinical trial data. In the same clinical trial data, anomalous behavioral shifts were identified at both high- and low-adherence levels and were spread across the whole treatment regimen, with 77.1% (81/105) of the population demonstrating at least one behavioral anomaly at some point in their treatment. Conclusions Digital medicine systems offer new opportunities to inform treatment decisions and provide complementary information about medication adherence. This paper introduces the concept of adherence volatility and develops a new type of contextual anomaly detection, which does not require an a priori definition of normal and allows expectations to evolve with shifting behavior, removing the need to rely on training data or static reference sequences. Retrospective analysis from clinical trial data highlights that such an approach could provide new opportunities to meaningfully engage patients about potential shifts in their ingestion behavior; however, this framework is not intended to replace clinical judgment, rather to highlight elements of data that warrant attention. The evidence provided here identifies new areas for research and seems to justify additional explorations in this area.
机译:背景技术依从药物通常以成功百分比的形式表示在一段时间内。虽然聚合粘附水平的明显变化可以指示不稳定的药物行为,但随着时间的推移缺乏明显的变化不一定表示稳定性。在实时在此条件下检测出现药物采取行为的改变的能力将使患者和护理团队能够更及时和知情的决策。目的本研究旨在开发一种能够在个体水平识别行为(药物)模式中的变化的方法,随后评估来自患有严重精神疾病的患者的回顾性临床试验数据中的存在。方法将术语粘附性波动性定义为“药物摄取行为的程度适合基于历史观察数据的预期行为”,并定义了该概念周围的上下文异常系统,利用随机过程的经验熵率作为制定异常的基础检测。对于呈现的方法,每个患者的不断发展的行为用于动态地构建每个未来间隔的期望范围,消除了依赖模型训练或静态参考序列的需要。结果模拟表明,即使聚合粘附水平保持恒定,呈现的方法也识别异常行为模式,并突出这些异常中固有的时间依赖性。尽管在一个时期,但是某事件的一系列事件可能存在于一个时期,但随后应该有助于未来期望,并且在后期的时间内可能不被认为 - 在回顾性临床试验数据中证明了该特征。在相同的临床试验数据中,在高粘附水平上鉴定出异常的行为转变,并在整个治疗方案中展开,77.1%(81/105)的人口在某些时候展示了至少一个行为异常在他们的治疗中。结论数字医学系统提供新的机会,可通知治疗决策并提供有关药物遵守的互补信息。本文介绍了粘附性波动性的概念,并开发了一种新型类型的上下文异常检测,这不需要先验的正常定义,并允许通过移位行为发展来发展,从而消除依赖训练数据或静态参考序列的需要。临床试验数据的回顾性分析突出显示这种方法可以为有意义地互动患者提供新的机会,以便在摄入行为中潜在变化;但是,该框架并不旨在取代临床判断,而突出突出保证关注的数据的元素。这里提供的证据确定了新的研究领域,似乎为该领域的额外探索性辩护。

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