A constrained genetic algorithm with adaptively defined fitness function in MRS quantification

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Abstract

MRS Signal quantification is a rather involved procedure and has attracted the interest of the medical engineering community, regarding the development of computationally efficient methodologies. Significant contributions based on Computational Intelligence tools, such as Neural Networks (NNs), demonstrated a good performance but not without drawbacks already discussed by the authors. On the other hand preliminary application of Genetic Algorithms (GA) has already been reported in the literature by the authors regarding the peak detection problem encountered in MRS quantification using the Voigt line shape model. This paper investigates a novel constrained genetic algorithm involving a generic and adaptively defined fitness function which extends the simple genetic algorithm methodology in case of noisy signals. The applicability of this new algorithm is scrutinized through experimentation in artificial MRS signals interleaved with noise, regarding its signal fitting capabilities. Although extensive experiments with real world MRS signals are necessary, the herein shown performance illustrates the method's potential to be established as a generic MRS metabolites quantification procedure. © 2010 Springer-Verlag.

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Papakostas, G. A., Karras, D. A., Mertzios, B. G., Graveron-Demilly, D., & Van Ormondt, D. (2010). A constrained genetic algorithm with adaptively defined fitness function in MRS quantification. In Communications in Computer and Information Science (Vol. 121 CCIS, pp. 257–268). Springer Verlag. https://doi.org/10.1007/978-3-642-17625-8_26

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