Title of article :
Artificial intelligence investigation of three silicates bioceramicsmagnetite bio-nanocomposite: Hyperthermia and biomedical applications
Author/Authors :
Montazeran, Amir Hussein New Technologies Research Center - Amirkabir University of Technology, Tehran , Saber-Samandari, Saeed New Technologies Research Center - Amirkabir University of Technology, Tehran , Khandan, Amirsalar New Technologies Research Center - Amirkabir University of Technology, Tehran
Abstract :
Objective(s): Bioactive silicate ceramics have favorable features for applying as off-the-shelf bone and
artificial tissue. Calcium silicate can enhance the generation of an immediate bond with host bone without an
intervening rough surface in the bone layer. However, the silicate bioceramics have some drawback regarding
their mechanical properties and chemical stabilities.
Materials and Methods: In this study, magnetite nanoparticles (MNPs) as reinforcement were added to the
three silicate bioceramics to investigate the physical and mechanical properties as well as their magnetic
behavior as a case study and compare with other calcium silicate nanocomposite which are excellent
candidates for hyperthermia applications. Then the artificial neural network (ANN) applied to the previous
data to predict the mechanical and biological behavior of the bio-nanocomposite as output parameters. A
predicted model was enhanced using ANN to measure the optimum size and reinforcement amount of the
magnetite bio-nanocomposite. The results of the fabricated bio-nanocomposite were extracted experimentally
corresponding to different MNPs weight fractions compared to the predicted model.
Results: The X-ray diffraction (XRD), scan electron microscopy (SEM) technique were used to compare the
porosity and porous tissue microstructure. Thereafter, an analytical solution is presented to express explicitly
the physical and mechanical responses of the bulk/scaffold bio-nanocomposite.
Conclusion: The obtained results showed the potential application of these calculations and analyses in a
wide range of numerical studies. The comparison presented within the test and predicted values showed that
the modeling outcomes were close to testing values
Keywords :
Artificial neural network , Biomedicine , Magnetite nanoparticle , Nanocomposite , Tissue engineering
Journal title :
Astroparticle Physics