Identification of Affine Linear Parameter Varying Models for Adaptive Interventions in Fibromyalgia Treatment.

P Lopes Dos Santos, Sunil Deshpande, Daniel E Rivera, T-P Azevedo-Perdicoúlis, J A Ramos, Jarred Younger
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引用次数: 3

Abstract

There is good evidence that naltrexone, an opioid antagonist, has a strong neuroprotective role and may be a potential drug for the treatment of fibromyalgia. In previous work, some of the authors used experimental clinical data to identify input-output linear time invariant models that were used to extract useful information about the effect of this drug on fibromyalgia symptoms. Additional factors such as anxiety, stress, mood, and headache, were considered as additive disturbances. However, it seems reasonable to think that these factors do not affect the drug actuation, but only the way in which a participant perceives how the drug actuates on herself. Under this hypothesis the linear time invariant models can be replaced by State-Space Affine Linear Parameter Varying models where the disturbances are seen as a scheduling signal signal only acting at the parameters of the output equation. In this paper a new algorithm for identifying such a model is proposed. This algorithm minimizes a quadratic criterion of the output error. Since the output error is a linear function of some parameters, the Affine Linear Parameter Varying system identification is formulated as a separable nonlinear least squares problem. Likewise other identification algorithms using gradient optimization methods several parameter derivatives are dynamical systems that must be simulated. In order to increase time efficiency a canonical parametrization that minimizes the number of systems to be simulated is chosen. The effectiveness of the algorithm is assessed in a case study where an Affine Parameter Varying Model is identified from the experimental data used in the previous study and compared with the time-invariant model.

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纤维肌痛自适应干预的仿射线性参数变化模型的识别。
有充分的证据表明,纳曲酮是一种阿片拮抗剂,具有很强的神经保护作用,可能是治疗纤维肌痛的潜在药物。在之前的工作中,一些作者使用实验临床数据来确定输入-输出线性时不变模型,该模型用于提取有关该药物对纤维肌痛症状影响的有用信息。其他因素如焦虑、压力、情绪和头痛被认为是累加性干扰。然而,似乎有理由认为这些因素并不影响药物的作用,而只是影响参与者感知药物如何作用于自己的方式。在此假设下,线性时不变模型可以被状态空间仿射线性参数变化模型所取代,其中扰动被视为仅作用于输出方程参数的调度信号。本文提出了一种新的模型识别算法。该算法使输出误差的二次判据最小化。由于输出误差是某些参数的线性函数,因此将仿射线性变参数系统辨识表述为可分离的非线性最小二乘问题。同样,其他使用梯度优化方法的辨识算法——几个参数导数是必须模拟的动态系统。为了提高时间效率,选择了一种能使待模拟系统数量最少的典型参数化方法。在一个案例研究中评估了算法的有效性,该案例研究从先前研究中使用的实验数据中识别出仿射参数变化模型,并将其与时不变模型进行了比较。
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