Literature DB >> 28189632

A cellular automata model of bone formation.

Gabrielle K Van Scoy1, Estee L George2, Flora Opoku Asantewaa1, Lucy Kerns1, Marnie M Saunders2, Alicia Prieto-Langarica3.   

Abstract

Bone remodeling is an elegantly orchestrated process by which osteocytes, osteoblasts and osteoclasts function as a syncytium to maintain or modify bone. On the microscopic level, bone consists of cells that create, destroy and monitor the bone matrix. These cells interact in a coordinated manner to maintain a tightly regulated homeostasis. It is this regulation that is responsible for the observed increase in bone gain in the dominant arm of a tennis player and the observed increase in bone loss associated with spaceflight and osteoporosis. The manner in which these cells interact to bring about a change in bone quality and quantity has yet to be fully elucidated. But efforts to understand the multicellular complexity can ultimately lead to eradication of metabolic bone diseases such as osteoporosis and improved implant longevity. Experimentally validated mathematical models that simulate functional activity and offer eventual predictive capabilities offer tremendous potential in understanding multicellular bone remodeling. Here we undertake the initial challenge to develop a mathematical model of bone formation validated with in vitro data obtained from osteoblastic bone cells induced to mineralize and quantified at 26 days of culture. A cellular automata model was constructed to simulate the in vitro characterization. Permutation tests were performed to compare the distribution of the mineralization in the cultures and the distribution of the mineralization in the mathematical models. The results of the permutation test show the distribution of mineralization from the characterization and mathematical model come from the same probability distribution, therefore validating the cellular automata model.
Copyright © 2017 Elsevier Inc. All rights reserved.

Entities:  

Keywords:  Agent-based model; Bone; Bone formation; Cellular automata; Mathematical models of bone formation; Osteoblast; Permutation tests

Mesh:

Year:  2017        PMID: 28189632      PMCID: PMC5591747          DOI: 10.1016/j.mbs.2017.02.001

Source DB:  PubMed          Journal:  Math Biosci        ISSN: 0025-5564            Impact factor:   2.144


  10 in total

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Authors:  C Picioreanu; M C van Loosdrecht; J J Heijnen
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Journal:  Cell Growth Differ       Date:  2002-02

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Authors:  G B Ermentrout; L Edelstein-Keshet
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Authors:  Mitchell B Schaffler; Oran D Kennedy
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Review 9.  The molecular triad OPG/RANK/RANKL: involvement in the orchestration of pathophysiological bone remodeling.

Authors:  Sandrine Theoleyre; Yohann Wittrant; Steeve Kwan Tat; Yannick Fortun; Francoise Redini; Dominique Heymann
Journal:  Cytokine Growth Factor Rev       Date:  2004-12       Impact factor: 7.638

10.  A large-conductance (BK) potassium channel subtype affects both growth and mineralization of human osteoblasts.

Authors:  Neil C Henney; Bo Li; Carole Elford; Pablo Reviriego; Anthony K Campbell; Kenneth T Wann; Bronwen A J Evans
Journal:  Am J Physiol Cell Physiol       Date:  2009-09-23       Impact factor: 4.249

  10 in total
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1.  Bone metastasis treatment modeling via optimal control.

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