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The term adaptive intervention is used in behavioral health to describe individually tailored strategies for preventing and treating chronic, relapsing disorders. This paper describes a system identification approach for developing dynamical models from clinical data, and subsequently, a hybrid model

The term adaptive intervention is used in behavioral health to describe individually tailored strategies for preventing and treating chronic, relapsing disorders. This paper describes a system identification approach for developing dynamical models from clinical data, and subsequently, a hybrid model predictive control scheme for assigning dosages of naltrexone as treatment for fibromyalgia, a chronic pain condition. A simulation study that includes conditions of significant plant-model mismatch demonstrates the benefits of hybrid predictive control as a decision framework for optimized adaptive interventions. This work provides insights on the design of novel personalized interventions for chronic pain and related conditions in behavioral health.

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  • Optimized Treatment of Fibromyalgia Using System Identification and Hybrid Model Predictive Control
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2014-12-01
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    Deshpande, Sunil, Nandola, Naresh N., Rivera, Daniel E., & Younger, Jarred W. (2014). Optimized treatment of fibromyalgia using system identification and hybrid model predictive control. CONTROL ENGINEERING PRACTICE, 33, 161-173. http://dx.doi.org/10.1016/j.conengprac.2014.09.011

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