An expert system based on computer vision and statistical modelling to support the analysis of collagen degradation

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http://hdl.handle.net/2183/30504Coleccións
- Investigación (FCS) [1293]
Metadatos
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An expert system based on computer vision and statistical modelling to support the analysis of collagen degradationAutor(es)
Data
2018Cita bibliográfica
Robles-Bykbaev Y, Naya S, Díaz Prado S, et al. An expert system based on computer vision and statistical modelling to support the analysis of collagen degradation. En: Wongchoosuk C, editor. Intelligent systems. London, UK, IntechOpen; 2018. p. 123-143
Resumo
[Abstract] The poly(DL-lactide-co-glycolide) (PDLGA) copolymers have been specifically designed
and performed as biomaterials, taking into account their biodegradability and biocompatibility properties. One of the applications of statistical degradation models in material
engineering is the estimation of the materials degradation level and reliability. In some
reliability studies, as the present case, it is possible to measure physical degradation (mass
loss, water absorbance, pH) depending on time. To this aim, we propose an expert system
able to provide support in collagen degradation analysis through computer vision methods and statistical modelling techniques. On this base, the researchers can determine
which statistical model describes in a better way the biomaterial behaviour. The expert
system was trained and evaluated with a corpus of 63 images (2D photographs obtained
by electron microscopy) of human mesenchymal stem cells (CMMh-3A6) cultivated in a
laboratory experiment lasting 44 days. The collagen type-1 sponges were arranged in 3
groups of 21 samples (each image was obtained in intervals of 72 hours).
Palabras chave
Computer vision
Collagen degradation
Statistical modelling
Long short-term neural networks
Collagen degradation
Statistical modelling
Long short-term neural networks
Versión do editor
Dereitos
Atribución 3.0 España
ISBN
978-1-78923-607-1