Control Systems Engineering for Understanding and Optimizing Smoking Cessation Interventions.

Kevin P Timms, Daniel E Rivera, Linda M Collins, Megan E Piper
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引用次数: 20

Abstract

Cigarette smoking remains a major public health issue. Despite a variety of treatment options, existing intervention protocols intended to support attempts to quit smoking have low success rates. An emerging treatment framework, referred to as adaptive interventions in behavioral health, addresses the chronic, relapsing nature of behavioral health disorders by tailoring the composition and dosage of intervention components to an individual's changing needs over time. An important component of a rapid and effective adaptive smoking intervention is an understanding of the behavior change relationships that govern smoking behavior and an understanding of intervention components' dynamic effects on these behavioral relationships. As traditional behavior models are static in nature, they cannot act as an effective basis for adaptive intervention design. In this article, behavioral data collected daily in a smoking cessation clinical trial is used in development of a dynamical systems model that describes smoking behavior change during cessation as a self-regulatory process. Drawing from control engineering principles, empirical models of smoking behavior are constructed to reflect this behavioral mechanism and help elucidate the case for a control-oriented approach to smoking intervention design.

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理解和优化戒烟干预的控制系统工程。
吸烟仍然是一个主要的公共卫生问题。尽管有多种治疗选择,现有的旨在支持戒烟尝试的干预方案成功率很低。一种被称为行为健康适应性干预的新兴治疗框架,通过调整干预成分的组成和剂量来适应个人随时间变化的需求,解决行为健康障碍的慢性、复发性问题。快速有效的适应性吸烟干预的一个重要组成部分是了解控制吸烟行为的行为改变关系,以及了解干预成分对这些行为关系的动态影响。传统的行为模型本质上是静态的,不能作为自适应干预设计的有效依据。在这篇文章中,在戒烟临床试验中每天收集的行为数据被用于开发一个动态系统模型,该模型将戒烟期间的吸烟行为改变描述为一个自我调节过程。根据控制工程原理,构建吸烟行为的经验模型来反映这种行为机制,并有助于阐明以控制为导向的吸烟干预设计方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
2.40
自引率
0.00%
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0
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