An integrated analysis of fibroblast morphology and migration of bioengineered substrata aided by machine vision and learning techniques

Thesis (Ph.D.)--Boston University PLEASE NOTE: Boston University Libraries did not receive an Authorization To Manage form for this thesis or dissertation. It is therefore not openly accessible, though it may be available by request. If you are the author or principal advisor of this work and wou...

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Main Author: Walker, Matthew L.
Language:en_US
Published: Boston University 2015
Online Access:https://hdl.handle.net/2144/12875
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spelling ndltd-bu.edu-oai-open.bu.edu-2144-128752019-12-07T03:02:41Z An integrated analysis of fibroblast morphology and migration of bioengineered substrata aided by machine vision and learning techniques Walker, Matthew L. Thesis (Ph.D.)--Boston University PLEASE NOTE: Boston University Libraries did not receive an Authorization To Manage form for this thesis or dissertation. It is therefore not openly accessible, though it may be available by request. If you are the author or principal advisor of this work and would like to request open access for it, please contact us at open-help@bu.edu. Thank you. In vivo, mechanical based signaling cues are nearly ubiquitous within organisms, organ systems, tissues and individual cells. Through the process known as mechanotransduction, various mechanical based stimuli, such as: stretch, shear and compression, are converted to biochemical responses which regulate biological phenomena within the model organs or systems. One specific type of mechanical stimuli involves a bidirectional feedback loop in which individual cells probe and respond to the material properties of extracellular matrix (ECM), specifically the elastic modulus of the substrata. Both in vivo and in vitro, this signaling pathway is known to have a prominent role in regulating tissue morphogenesis and homeostasis, influencing cellular differentiation, regulating gene transcription and protein translation and determining cellular migration and morphology. The latter two phenomena, cellular migration and morphology, have been quantified in vivo using thin film substrata with tunable material properties composed of cross-linked polyacrylamide (pAAM). However, although both phenomena are the result of directed rearrangement of the cytoskeleton, rarely have the two been studied on the level of an individual cell and as an integrated process. This thesis employs a multidisciplinary approach involving materials science, classical cellular biology and machine learning techniques to rigorously quantify the dependence of fibroblast morphology and migration on substratum stiffness. First, thin film pAAM hydrogel substratum were generated with different crosslinker densities. Various aspects of the substratum were rigorously quantified including: elastic modulus, thickness and the density of surface ligand. The characterization of the substratum demonstrates the ability to accurately reproduce hydro gels over a range of elastic moduli (4.1 kPa to 136.2 kPa). Introduction of BALB/c fibroblasts to these substrata allowed for the analysis both fibroblast morphological and migratory behaviors. Findings demonstrate that within a population, complexity in cellular architecture increases with the elastic modulus of the substratum and that cellular speed and persistence, as determined by the Random Cell Walk Model (RCWM), are biphasic with increased substratum stiffness. In addition, a stiffness-dependent increase in the diversity of both behaviors within the context of a population and an individual cell are reported. Finally, through the development of a morphological classification system, aided by the use of machine vision and learning techniques, experimental evidence is presented showing the interplay between cellular dynamic changes in morphology and the resulting migration pattern. 2015-08-07T03:40:44Z 2015-08-07T03:40:44Z 2013 2013 Thesis/Dissertation (ALMA)contemp https://hdl.handle.net/2144/12875 en_US Boston University
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description Thesis (Ph.D.)--Boston University PLEASE NOTE: Boston University Libraries did not receive an Authorization To Manage form for this thesis or dissertation. It is therefore not openly accessible, though it may be available by request. If you are the author or principal advisor of this work and would like to request open access for it, please contact us at open-help@bu.edu. Thank you. === In vivo, mechanical based signaling cues are nearly ubiquitous within organisms, organ systems, tissues and individual cells. Through the process known as mechanotransduction, various mechanical based stimuli, such as: stretch, shear and compression, are converted to biochemical responses which regulate biological phenomena within the model organs or systems. One specific type of mechanical stimuli involves a bidirectional feedback loop in which individual cells probe and respond to the material properties of extracellular matrix (ECM), specifically the elastic modulus of the substrata. Both in vivo and in vitro, this signaling pathway is known to have a prominent role in regulating tissue morphogenesis and homeostasis, influencing cellular differentiation, regulating gene transcription and protein translation and determining cellular migration and morphology. The latter two phenomena, cellular migration and morphology, have been quantified in vivo using thin film substrata with tunable material properties composed of cross-linked polyacrylamide (pAAM). However, although both phenomena are the result of directed rearrangement of the cytoskeleton, rarely have the two been studied on the level of an individual cell and as an integrated process. This thesis employs a multidisciplinary approach involving materials science, classical cellular biology and machine learning techniques to rigorously quantify the dependence of fibroblast morphology and migration on substratum stiffness. First, thin film pAAM hydrogel substratum were generated with different crosslinker densities. Various aspects of the substratum were rigorously quantified including: elastic modulus, thickness and the density of surface ligand. The characterization of the substratum demonstrates the ability to accurately reproduce hydro gels over a range of elastic moduli (4.1 kPa to 136.2 kPa). Introduction of BALB/c fibroblasts to these substrata allowed for the analysis both fibroblast morphological and migratory behaviors. Findings demonstrate that within a population, complexity in cellular architecture increases with the elastic modulus of the substratum and that cellular speed and persistence, as determined by the Random Cell Walk Model (RCWM), are biphasic with increased substratum stiffness. In addition, a stiffness-dependent increase in the diversity of both behaviors within the context of a population and an individual cell are reported. Finally, through the development of a morphological classification system, aided by the use of machine vision and learning techniques, experimental evidence is presented showing the interplay between cellular dynamic changes in morphology and the resulting migration pattern.
author Walker, Matthew L.
spellingShingle Walker, Matthew L.
An integrated analysis of fibroblast morphology and migration of bioengineered substrata aided by machine vision and learning techniques
author_facet Walker, Matthew L.
author_sort Walker, Matthew L.
title An integrated analysis of fibroblast morphology and migration of bioengineered substrata aided by machine vision and learning techniques
title_short An integrated analysis of fibroblast morphology and migration of bioengineered substrata aided by machine vision and learning techniques
title_full An integrated analysis of fibroblast morphology and migration of bioengineered substrata aided by machine vision and learning techniques
title_fullStr An integrated analysis of fibroblast morphology and migration of bioengineered substrata aided by machine vision and learning techniques
title_full_unstemmed An integrated analysis of fibroblast morphology and migration of bioengineered substrata aided by machine vision and learning techniques
title_sort integrated analysis of fibroblast morphology and migration of bioengineered substrata aided by machine vision and learning techniques
publisher Boston University
publishDate 2015
url https://hdl.handle.net/2144/12875
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