Structural features modeling of substituted hydroxyapatite nanopowders as bone fillers via machine learning
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- @Article{YU:2021:CI,
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author = "Junwu Yu and Yan Wang2 and Zhaoqin Dai and
Faming Yang and Alireza Fallahpour and Bahman Nasiri-Tabrizi",
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title = "Structural features modeling of substituted
hydroxyapatite nanopowders as bone fillers via machine
learning",
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journal = "Ceramics International",
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volume = "47",
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number = "7, Part A",
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pages = "9034--9047",
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year = "2021",
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ISSN = "0272-8842",
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DOI = "doi:10.1016/j.ceramint.2020.12.026",
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URL = "https://www.sciencedirect.com/science/article/pii/S0272884220336245",
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keywords = "genetic algorithms, genetic programming, Substituted
hydroxyapatite, Machine learning, Ball milling,
Rietveld refinement, Thermal stability",
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abstract = "In the present study, both experimental and modeling
approaches were employed to explore the solid-state
formation mechanisms and estimate the structural
behavior of nanosized substituted hydroxyapatite (HA)
powders using different machine learning (ML)
techniques. In the phase of modeling, an artificial
neural network (ANN)-based method, called multi-layer
perceptron (MLP), was used to truthfully approximate
structural characteristics of the as-received
nanopowders. In the next round of modeling, the genetic
programming (GP) technique was employed to appraise the
strength of the predictive model. Following the
modeling procedure, a few case studies were conducted
to evaluate the results obtained by the modeling
framework, where the microstructural alterations of the
mechanosynthesized substituted nanopowders were
examined in terms of the dopant agent. The Rietveld
refinement showed a good fit of the observed and
calculated profiles over the full diffraction patterns.
With the effect of dopant type, different levels of
weight loss were observed in the thermal analysis
curves. The comparison between the proposed models
ascertained that both models were truthful for the
estimation of the structural features of HA-based
bioceramics for different bone regeneration
applications. From the statistical assessments, the
values of Mean Squared Error (MSE) and Correlation
Coefficient (R) of the MLP-ANN in the training phase
for the crystallite size were 5.757 and 0.93, which in
prediction reached 3.429 and 0.995, respectively",
- }
Genetic Programming entries for
Faming Yang
Zhaoqin Dai
Zhaoqin Dai
Faming Yang
Alireza Fallahpour
Bahman Nasiri-Tabrizi
Citations