TY - JOUR
T1 - Model-driven design of bioactive glasses
T2 - from molecular dynamics through machine learning
AU - Montazerian, Maziar
AU - Zanotto, Edgar D.
AU - Mauro, John C.
N1 - Funding Information:
The authors are grateful to the São Paulo Research Foundation [FAPESP; 2013/07793-6]–CEPID/CeRTEV–for financial support of this work and the post-doctoral fellowship granted to Maziar Montazerian [# 2015/13314-9].
Publisher Copyright:
© 2019, © 2019 Institute of Materials, Minerals and Mining and ASM International Published by Taylor & Francis on behalf of the Institute and ASM International.
PY - 2020/7/3
Y1 - 2020/7/3
N2 - Research in bioactive glasses (BGs) has traditionally been performed through trial-and-error experimentation. However, several modelling techniques will accelerate the discovery of new BGs as part of the ongoing endeavour to ‘decode the glass genome.’ Here, we critically review recent publications applying molecular dynamics simulations, machine learning approaches, and other modelling techniques for understanding BGs. We argue that modelling should be utilised more frequently in the design of BGs to achieve properties such as high bioactivity, high fracture strength and toughness, low density, and controlled morphology. Another challenge is modelling the biological response to biomaterials, such as their ability to foster protein adsorption, cell adhesion, cell proliferation, osteogenesis, angiogenesis, and bactericidal effects. The development of databases integrated with robust computational tools will be indispensable to these efforts. Future challenges are thus envisaged in which the compositional design, synthesis, characterisation, and application of BGs can be greatly accelerated by computational modelling.
AB - Research in bioactive glasses (BGs) has traditionally been performed through trial-and-error experimentation. However, several modelling techniques will accelerate the discovery of new BGs as part of the ongoing endeavour to ‘decode the glass genome.’ Here, we critically review recent publications applying molecular dynamics simulations, machine learning approaches, and other modelling techniques for understanding BGs. We argue that modelling should be utilised more frequently in the design of BGs to achieve properties such as high bioactivity, high fracture strength and toughness, low density, and controlled morphology. Another challenge is modelling the biological response to biomaterials, such as their ability to foster protein adsorption, cell adhesion, cell proliferation, osteogenesis, angiogenesis, and bactericidal effects. The development of databases integrated with robust computational tools will be indispensable to these efforts. Future challenges are thus envisaged in which the compositional design, synthesis, characterisation, and application of BGs can be greatly accelerated by computational modelling.
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U2 - 10.1080/09506608.2019.1694779
DO - 10.1080/09506608.2019.1694779
M3 - Review article
AN - SCOPUS:85076539881
SN - 0950-6608
VL - 65
SP - 297
EP - 321
JO - International Materials Reviews
JF - International Materials Reviews
IS - 5
ER -