Title of article :
Assessment of neural networks training strategies for histomorphometric analysis of synchrotron radiation medical images
Author/Authors :
de Moura Meneses، نويسنده , , Anderson Alvarenga and Pinheiro، نويسنده , , Christiano Jorge Gomes and Rancoita، نويسنده , , Paola and Schaul، نويسنده , , Tom and Gambardella، نويسنده , , Luca Maria and Schirru، نويسنده , , Roberto and Barroso، نويسنده , , Regina Cely and de Oliveira، نويسنده , , Luيs Fernando، نويسنده ,
Pages :
8
From page :
662
To page :
669
Abstract :
Micro-computed tomography (μCT) obtained by synchrotron radiation (SR) enables magnified images with a high space resolution that might be used as a non-invasive and non-destructive technique for the quantitative analysis of medical images, in particular the histomorphometry (HMM) of bony mass. In the preprocessing of such images, conventional operations such as binarization and morphological filtering are used before calculating the stereological parameters related, for example, to the trabecular bone microarchitecture. However, there is no standardization of methods for HMM based on μCT images, especially the ones obtained with SR X-ray. Notwithstanding the several uses of artificial neural networks (ANNs) in medical imaging, their application to the HMM of SR-μCT medical images is still incipient, despite the potential of both techniques. The contribution of this paper is the assessment and comparison of well-known training algorithms as well as the proposal of training strategies (combinations of training algorithms, sub-image kernel and symmetry information) for feed-forward ANNs in the task of bone pixels recognition in SR-μCT medical images. For a quantitative comparison, the results of a cross validation and a statistical analysis of the results for 36 training strategies are presented. The ANNs demonstrated both very low mean square errors in the validation, and good quality segmentation of the image of interest for application to HMM in SR-μCT medical images.
Keywords :
Micro-computed tomography , Artificial Intelligence , Synchrotron radiation , Artificial neural networks , Histomorphometry
Journal title :
Astroparticle Physics
Record number :
1991957
Link To Document :
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