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Robustness of optimal design of fMRI experiments with application of a genetic algorithm.

机译:应用遗传算法对fMRI实验进行优化设计的稳健性。

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In this paper we apply the genetic algorithm developed by Kao et al. (2009) to find designs which are robust against misspecification of the error autocorrelation. Two common optimality criteria, the A-optimality criterion and the D-optimality criterion, based upon a general linear model are employed to obtain locally optimal designs for a given value of the autocorrelation. The maximin criterion is then used to obtain designs which are robust against misspecification of the autocorrelation. Furthermore, robustness depending on the choice of optimality criterion is evaluated. We show analytically and empirically that the A- and D-optimality criterion will result in different optimal designs, e.g. with different stimulus frequencies. Optimal stimulus frequency for the A-optimality criterion has been derived by Liu et al. (2004) whereas we derive here the optimal stimulus frequency for the D-optimality criterion. Conclusions about the robustness of an optimal design against misspecification of model parameters and choice of optimality criterion are drawn based upon our results.
机译:在本文中,我们应用了Kao等人开发的遗传算法。 (2009年)找到对错误自相关的错误指定具有鲁棒性的设计。基于通用线性模型,使用两个常见的最优准则A最优准则和D最优准则来获得给定自相关值的局部最优设计。然后,使用maximin标准来获得对自相关的错误指定具有鲁棒性的设计。此外,评估了依赖于最优性标准选择的鲁棒性。我们通过分析和经验证明,A和D最优准则将导致不同的最优设计,例如具有不同的刺激频率。 Liu等人推导了A最优准则的最优激励频率。 (2004年),而我们在这里导出D最优标准的最佳刺激频率。基于我们的结果,得出了针对模型参数错误指定和最优准则选择的最优设计的稳健性结论。

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