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非依从性树分析(NATA)-依从性改进框架:COVID-19 案例研究。

Non-Adherence Tree Analysis (NATA)-An adherence improvement framework: A COVID-19 case study.

机构信息

Operations, Technology, Events and Hospitality Management, Manchester Metropolitan University, Manchester, Lancashire, United Kingdom.

Medicine, University of Massachusetts Medical School, Worcester, Massachusetts, United States of America.

出版信息

PLoS One. 2021 Feb 19;16(2):e0247109. doi: 10.1371/journal.pone.0247109. eCollection 2021.

Abstract

Poor medication adherence is a global phenomenon that has received a significant amount of research attention yet remains largely unsolved. Medication non-adherence can blur drug efficacy results in clinical trials, lead to substantial financial losses, increase the risk of relapse and hospitalisation, or lead to death. The most common methods of measuring adherence are post-treatment measures; that is, adherence is usually measured after the treatment has begun. What the authors are proposing in this multidisciplinary study is a new technique for predicting the factors that are likely to cause non-adherence before or during medication treatment, illustrated in the context of potential non-adherence to COVID-19 antiviral medication. Fault Tree Analysis (FTA), allows system analysts to determine how combinations of simple faults of a system can propagate to cause a total system failure. Monte Carlo simulation is a mathematical algorithm that depends heavily on repeated random sampling to predict the behaviour of a system. In this study, the authors propose a new technique called Non-Adherence Tree Analysis (NATA), based on the FTA and Monte Carlo simulation techniques, to improve adherence. Firstly, the non-adherence factors of a medication treatment lifecycle are translated into what is referred to as a Non-Adherence Tree (NAT). Secondly, the NAT is coded into a format that is translated into the GoldSim software for performing dynamic system modelling and analysis using Monte Carlo. Finally, the GoldSim model is simulated and analysed to predict the behaviour of the NAT. NATA is dynamic and able to learn from emerging datasets to improve the accuracy of future predictions. It produces a framework for improving adherence by analysing social and non-social adherence barriers. Novel terminologies and mathematical expressions have been developed and applied to real-world scenarios. The results of the application of NATA using data from six previous studies in relation to antiviral medication demonstrate a predictive model which suggests that the biggest factor that could contribute to non-adherence to a COVID-19 antiviral treatment is a therapy-related factor (the side effects of the medication). This is closely followed by a condition-related factor (asymptomatic nature of the disease) then patient-related factors (forgetfulness and other causes). From the results, it appears that side effects, asymptomatic factors and forgetfulness contribute 32.44%, 22.67% and 18.22% respectively to discontinuation of medication treatment of COVID-19 antiviral medication treatment. With this information, clinicians can implement relevant interventions and measures and allocate resources appropriately to minimise non-adherence.

摘要

药物依从性差是一个全球性问题,已经引起了大量的研究关注,但仍未得到有效解决。药物不依从会影响临床试验中药物的疗效,导致大量经济损失,增加复发和住院的风险,甚至导致死亡。最常用的测量依从性的方法是治疗后测量;也就是说,通常在治疗开始后测量依从性。本文作者在这项多学科研究中提出了一种新的技术,可以在药物治疗之前或期间预测导致不依从的因素,以新冠抗病毒药物为例。故障树分析(FTA)可以帮助系统分析师确定系统中简单故障的组合如何传播导致系统完全失效。蒙特卡罗模拟是一种严重依赖于重复随机抽样的数学算法,用于预测系统的行为。在本研究中,作者提出了一种称为不依从树分析(NATA)的新技术,该技术基于 FTA 和蒙特卡罗模拟技术,以提高依从性。首先,将药物治疗周期的不依从因素转化为所谓的不依从树(NAT)。其次,将 NAT 编码成一种格式,然后将其转换为 GoldSim 软件,以便使用蒙特卡罗进行动态系统建模和分析。最后,对 GoldSim 模型进行模拟和分析,以预测 NAT 的行为。NATA 具有动态性,可以从新兴数据集学习,从而提高未来预测的准确性。它提供了一个通过分析社会和非社会依从性障碍来提高依从性的框架。已经开发和应用了新的术语和数学表达式来处理真实场景中的问题。使用来自之前六项关于抗病毒药物的研究的数据应用 NATA 的结果表明,导致 COVID-19 抗病毒治疗不依从的最大因素是与治疗相关的因素(药物的副作用)。其次是与疾病相关的因素(疾病的无症状性质),然后是与患者相关的因素(健忘症和其他原因)。从结果来看,似乎副作用、无症状因素和健忘症分别导致 COVID-19 抗病毒药物治疗中断的比例为 32.44%、22.67%和 18.22%。有了这些信息,临床医生可以实施相关干预措施和措施,并适当分配资源,以尽量减少不依从。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/d398/7895356/e3731e51977b/pone.0247109.g001.jpg

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