A Hybrid Model Predictive Control Strategy for Optimizing a Smoking Cessation Intervention.

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

Abstract

The chronic, relapsing nature of tobacco use represents a major challenge in smoking cessation treatment. Recently, novel intervention paradigms have emerged that seek to adjust treatments over time in order to meet a patient's changing needs. This article demonstrates that Hybrid Model Predictive Control (HMPC) offers an appealing framework for designing these optimized, time-varying smoking cessation interventions. HMPC is a particularly appropriate approach as it recognizes that intervention doses must be assigned in predetermined, discrete units while retaining receding-horizon, constraint-handling, and combined feedback and feedforward capabilities. Specifically, an intervention algorithm is developed here in which counseling and two pharmacotherapies are manipulated to reduce daily smoking and craving levels. The potential usefulness of such an intervention is illustrated through simulated treatment of a quit attempt in a hypothetical patient, which highlights that prioritizing reduction in craving over total daily smoking levels significantly reduces craving levels, suppresses relapse, and successfully rejects time-varying disturbances such as stress, all while adhering to several practical operational constraints and resource use considerations.

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一个优化戒烟干预的混合模型预测控制策略。
烟草使用的慢性、复发性是戒烟治疗的主要挑战。最近,新的干预模式已经出现,寻求调整治疗随着时间的推移,以满足患者不断变化的需求。本文证明混合模型预测控制(HMPC)为设计这些优化的、时变的戒烟干预措施提供了一个有吸引力的框架。HMPC是一种特别合适的方法,因为它认识到干预剂量必须以预先确定的离散单位分配,同时保留后退视界、约束处理以及反馈和前馈相结合的能力。具体来说,这里开发了一种干预算法,其中咨询和两种药物治疗被操纵来减少每日吸烟和渴望水平。这种干预的潜在用途是通过对一个假设患者的戒烟尝试的模拟治疗来说明的,这突出了优先减少渴望而不是每天总吸烟水平显著降低渴望水平,抑制复发,并成功地拒绝时变干扰,如压力,同时坚持几个实际操作限制和资源使用考虑。
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