Abstract
Backgrounds: The aim of this study is to model 2D dentate nucleus neuron surface (2D DNNIS) using the RSM modelling method and show in general such a modelling approach. Additionally, an application is made to the neurons of dentate nucleus lamina, namely VLL and DML. Methods: response surface methodology (RSM). Results: Several modelling formula are obtained. Models are classified according to neuron samples on which are obtained and number of factors used. Thus, in general, constrained and non-constrained, VLL and DML models are analysed. Obtained non-constrained models are quadratic model with multifactor interaction for all samples (adjusted R2 0.96) and VLL sample (adjusted R2 0.98) and linear model with multifactor interaction for DML sample (adjusted R2 0.95). Constrained models are bifactor models, namely general one without factor interaction with adjusted R2 0.93; and for particular lamina, the models are accompanied with factor interaction (adjusted R2 0.95). Conclusion: Though it is of the smallest adjusted R2 (0.93), constrained general model is shown to be the most promising one for modelling 2D neuron surface for adult DNN.
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More From: Computer Methods in Biomechanics and Biomedical Engineering: Imaging & Visualization
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