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1.
Biomed Phys Eng Express ; 7(5)2021 07 30.
Article in English | MEDLINE | ID: mdl-34271556

ABSTRACT

Tissue engineering is a branch of regenerative medicine that harnesses biomaterial and stem cell research to utilise the body's natural healing responses to regenerate tissue and organs. There remain many unanswered questions in tissue engineering, with optimal biomaterial designs still to be developed and a lack of adequate stem cell knowledge limiting successful application. Advances in artificial intelligence (AI), and deep learning specifically, offer the potential to improve both scientific understanding and clinical outcomes in regenerative medicine. With enhanced perception of how to integrate artificial intelligence into current research and clinical practice, AI offers an invaluable tool to improve patient outcome.


Subject(s)
Artificial Intelligence , Tissue Engineering , Biocompatible Materials , Bone Regeneration , Humans , Regenerative Medicine
2.
Tissue Cell ; 67: 101442, 2020 Dec.
Article in English | MEDLINE | ID: mdl-32977273

ABSTRACT

The response of adult human bone marrow stromal stem cells to surface topographies generated through femtosecond laser machining can be predicted by a deep neural network. The network is capable of predicting cell response to a statistically significant level, including positioning predictions with a probability P < 0.001, and therefore can be used as a model to determine the minimum line separation required for cell alignment, with implications for tissue structure development and tissue engineering. The application of a deep neural network, as a model, reduces the amount of experimental cell culture required to develop an enhanced understanding of cell behavior to topographical cues and, critically, provides rapid prediction of the effects of novel surface structures on tissue fabrication and cell signaling.


Subject(s)
Adult Stem Cells/cytology , Bone and Bones/cytology , Deep Learning , Lasers , Cell Adhesion , Humans , Neural Networks, Computer , Reproducibility of Results , Time Factors
3.
Opt Express ; 26(21): 27237-27246, 2018 Oct 15.
Article in English | MEDLINE | ID: mdl-30469796

ABSTRACT

Particle pollution is a global health challenge that is linked to around three million premature deaths per year. There is therefore great interest in the development of sensors capable of precisely quantifying both the number and type of particles. Here, we demonstrate an approach that leverages machine learning in order to identify particulates directly from their scattering patterns. We show the capability for producing a 2D sample map of spherical particles present on a coverslip, and also demonstrate real-time identification of a range of particles including those from diesel combustion.

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