Hybrid Model Predictive Control for Sequential Decision Policies in Adaptive Behavioral Interventions.

Yuwen Dong, Sunil Deshpande, Daniel E Rivera, Danielle S Downs, Jennifer S Savage
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引用次数: 16

Abstract

Control engineering offers a systematic and efficient method to optimize the effectiveness of individually tailored treatment and prevention policies known as adaptive or "just-in-time" behavioral interventions. The nature of these interventions requires assigning dosages at categorical levels, which has been addressed in prior work using Mixed Logical Dynamical (MLD)-based hybrid model predictive control (HMPC) schemes. However, certain requirements of adaptive behavioral interventions that involve sequential decision making have not been comprehensively explored in the literature. This paper presents an extension of the traditional MLD framework for HMPC by representing the requirements of sequential decision policies as mixed-integer linear constraints. This is accomplished with user-specified dosage sequence tables, manipulation of one input at a time, and a switching time strategy for assigning dosages at time intervals less frequent than the measurement sampling interval. A model developed for a gestational weight gain (GWG) intervention is used to illustrate the generation of these sequential decision policies and their effectiveness for implementing adaptive behavioral interventions involving multiple components.

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自适应行为干预中顺序决策策略的混合模型预测控制。
控制工程提供了一种系统和有效的方法来优化个性化治疗和预防政策的有效性,即适应性或“及时”行为干预。这些干预措施的性质要求在分类水平上分配剂量,这已经在先前的工作中使用基于混合逻辑动态(MLD)的混合模型预测控制(HMPC)方案进行了解决。然而,涉及顺序决策的适应性行为干预的某些要求在文献中尚未得到全面的探讨。本文通过将序列决策策略的需求表示为混合整数线性约束,对传统的MLD框架进行了扩展。这是通过用户指定的剂量序列表,一次操作一个输入,以及在比测量采样间隔更少的时间间隔分配剂量的切换时间策略来实现的。为妊娠期体重增加(GWG)干预开发的模型用于说明这些顺序决策策略的产生及其实施涉及多个组件的适应性行为干预的有效性。
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