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Semidefinite relaxations in optimal experiment design with application to substrate injection for hyperpolarized MRI

机译:优化实验设计中的半确定松弛,应用于超极化MRI的基质注射

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We consider the problem of optimal input design for estimating uncertain parameters in a discrete-time linear state space model, subject to simultaneous amplitude and ℓ1/ℓ2-norm constraints on the admissible inputs. We formulate this problem as the maximization of a (non-concave) quadratic function over the space of inputs, and use semidefinite relaxation techniques to efficiently find the global solution or to provide an upper bound. This investigation is motivated by a problem in medical imaging, specifically designing a substrate injection profile for in vivo metabolic parameter mapping using magnetic resonance imaging (MRI) with hyperpolarized carbon-13 pyruvate. In the ℓ2-norm-constrained case, we show that the relaxation is tight, allowing us to efficiently compute a globally optimal injection profile. In the ℓ1-norm-constrained case the relaxation is no longer tight, but can be used to prove that the boxcar injection currently used in practice achieves at least 98.7% of the global optimum.
机译:我们考虑了用于估计离散时间线性状态空间模型中不确定参数的最优输入设计问题,该模型要在允许输入上同时受到幅度和ℓ1/ℓ2-范数约束。我们将此问题表述为在输入空间上最大化(非凹面)二次函数,并使用半定松弛技术有效地找到全局解或提供上限。这项研究的动机是医学成像中的一个问题,特别是使用磁共振成像(MRI)和超极化碳13丙酮酸设计用于体内代谢参数作图的底物注射曲线。在ℓ2范数约束的情况下,我们表明松弛是紧密的,从而使我们能够有效地计算全局最优的注入曲线。在ℓ1范数约束的情况下,松弛不再严格,但可以用来证明当前实际使用的棚车注射至少达到了全局最优值的98.7%。

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