Dynamic causal modeling with genetic algorithms

被引:12
|
作者
Pyka, M. [1 ]
Heider, D. [2 ]
Hauke, S. [3 ]
Kircher, T.
Jansen, A. [1 ]
机构
[1] Univ Marburg, Dept Psychiat & Psychotherapy, Sect Brain Imaging, D-35039 Marburg, Germany
[2] Univ Duisburg Essen, Dept Bioinformat, Ctr Med Biotechnol, Duisburg, Germany
[3] FHDW, Bergisch Gladbach, Germany
关键词
Dynamic causal modeling; Genetic algorithm; fMRI; FMRI;
D O I
10.1016/j.jneumeth.2010.11.007
中图分类号
Q5 [生物化学];
学科分类号
071010 ; 081704 ;
摘要
In the last years, dynamic causal modeling has gained increased popularity in the neuroimaging community as an approach for the estimation of effective connectivity from functional magnetic resonance imaging (fMRI) data. The algorithm calls for an a priori defined model, whose parameter estimates are subsequently computed upon the given data. As the number of possible models increases exponentially with additional areas, it rapidly becomes inefficient to compute parameter estimates for all models in order to reveal the family of models with the highest posterior probability. In the present study, we developed a genetic algorithm for dynamic causal models and investigated whether this evolutionary approach can accelerate the model search. In this context, the configuration of the intrinsic, extrinsic and bilinear connection matrices represents the genetic code and Bayesian model selection serves as a fitness function. Using crossover and mutation, populations of models are created and compared with each other. The most probable ones survive the current generation and serve as a source for the next generation of models. Tests with artificially created data sets show that the genetic algorithm approximates the most plausible models faster than a random-driven brute-force search. The fitness landscape revealed by the genetic algorithm indicates that dynamic causal modeling has excellent properties for evolution-driven optimization techniques. (C) 2010 Elsevier B.V. All rights reserved.
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页码:402 / 406
页数:5
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