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  • About
  • The Global ETD Search service is a free service for researchers to find electronic theses and dissertations. This service is provided by the Networked Digital Library of Theses and Dissertations.
    Our metadata is collected from universities around the world. If you manage a university/consortium/country archive and want to be added, details can be found on the NDLTD website.
11

Análise quantitativa de culturas de neurônios em matrizes de microeletrodos por meio do processamento de imagens de microscopia confocal de fluorescência

Mari, João Fernando 09 March 2015 (has links)
Made available in DSpace on 2016-06-02T19:04:00Z (GMT). No. of bitstreams: 1 6814.pdf: 27157124 bytes, checksum: ccc98f69d1fc4cdc487ac2e9917edfc0 (MD5) Previous issue date: 2015-03-09 / Microelectrode arrays (MEA) are devices that allow chemical and electrical stimulation and recording of the extracellular electrical activity from entire neuronal cultures over long periods of time, such as several weeks. Some MEA models have transparent substrate, which enables the imaging of culture using optical microscopy. The images are taken from two channels: fluorescence light and transmitted light channels. In the first one, it is possible to visualize the neurons, while in the other one, it is possible to observe the microelectrodes. The objective of this work is to develop methods that enable performing quantitative analysis of the dissociated culture of rat dorsal root ganglion (DRG) neurons plated on MEA by means of the processing of the images, obtained from confocal fluorescence microscopy. We proposed and developed the following methods in order to achieve this objective: (A) A method to automatically identify the microelectrodes in the transmitted light channel using circular Hough Transform and error correction based on the Delaunay triangulation; (B) the registration of a number of images taken at different parts of the MEA in order to generate a unique and high-resolution representation of the whole culture; (C) the segmentation of the neuron in 2D images taken from the fluorescence channel, composed by the steps: preprocessing, thresholding, morphological filtering, neurons occlusion correction, watershed transform and object classification; (D) 2D quantitative analysis based on the identified microelectrodes and on the segmented neurons; (E) a method for generating 3D polygonal models of the neurons from the volumetric images, to be used for visualizing the culture on the MEA by different points of view and zoom levels; and (F) 3D quantitative analysis performed by the processing of the polygonal surfaces in conjunction with the information about the microelectrodes positioning. The results show that the methods are capable to identify the neurons and microelectrodes on the 2D images efficiently. In the 3D images, the preprocessing step which uses information from the 2D segmentation method, showed to be capable to generate correct polygonal models efficiently. Most of the studies involving the analysis of neuron cultures on MEAs consider only qualitative analysis or simple quantitative measures. However, the methods proposed in this thesis enables to obtain important measures related to the neuron culture, such as: the density and morphology of the neurons, and the spatial and topological distribution of the neurons and microelectrodes. The information about neuron morphology is important because they are related to the behavior of this kind of neuron. The spatial and topological distribution of neurons and microelectrodes are used for providing models of the interface between these elements, for supporting the analysis of the electrophysiological signal recorded by the microelectrodes, as well as in the computational simulations of the neuron culture behavior. / Matrizes de Microeletrodos (MEAs) são dispositivos que permitem estimular quimicamente ou eletricamente e registrar a atividade elétrica extracelular de culturas de neurônios durante um longo período de tempo, da ordem de várias semanas. Modelos de MEAs com o substrato transparente permitem imagear a cultura por meio de microscopia óptica. As imagens são obtidas em dois canais: um de luz de fluorescência e outro de luz de transmissão. O primeiro permite visualizar os neurônios, enquanto o segundo os microeletrodos. O objetivo deste trabalho é desenvolver métodos que permitam realizar análises quantitativas de culturas dissociadas de neurônios de gânglio da raiz dorsal (Dorsal Root Ganglion DRG) de ratos em MEAs por meio do processamento de imagens obtidas por microscopia confocal de fluorescência. Os seguintes métodos foram propostos e desenvolvidos para atingir este objetivo: (A) Identificação automática dos microeletrodos nas imagens do canal de luz de transmissão utilizando a transformada de Hough circular e correção de erros baseado na triangulação de Delaunay; (B) Registro de várias imagens tomadas de diferentes regiões da MEA para gerar uma única imagem em alta resolução que contemple a cultura toda; (C) Segmentação dos neurônios em imagens 2D obtidas a partir do canal de fluorescência, composto por etapas de pré-processamento, segmentação, filtragem morfológica, correção da oclusão de neurônios, transformada watershed e classificação de objetos; (D) Análise quantitativa 2D baseada nos microeletrodos identificados e nos neurônios segmentados; (E) Método para geração de modelos poligonais 3D dos neurônios a partir de imagens volumétricas, modelos os quais são utilizados para visualização da cultura na MEA por diferentes pontos de vista e níveis de zoom; e (F) Análise quantitativa 3D realizada por meio do processamento das superfícies poligonais juntamente com as informações sobre a posição dos microeletrodos. Os resultados mostram que os métodos são capazes de identificar com eficiência os neurônios e microeletrodos presentes nas imagens 2D. Nas imagens 3D, a etapa de pré-processamento utilizando informações resultantes do método de segmentação 2D se mostrou eficiente na geração dos modelos poligonais corretos. Enquanto a maioria das análises de imagens de culturas de neurônios em MEA consideram apenas análises quantitativas simples, os métodos aqui propostos permitem obter importantes medidas quantitativas relacionadas às culturas, tais como: a densidade e morfologia dos neurônios, assim como a distribuição espacial e topológica dos neurônios em relação aos microeletrodos. As informações sobre a morfologia são importantes, pois estão relacionadas com o comportamento desse tipo de neurônio. A distribuição espacial e topológica dos neurônios e microeletrodos permitem modelar a interface entre neurônios e microeletrodos e auxiliar nos estudos dos sinais eletrofisiológicos capturados pelos microeletrodos, assim como em simulações computacionais do comportamento dessas culturas.
12

Cooperative behavior of micro-objects under electrochemical control / Comportement coopératif des micro-objets sous contrôle électrochimique

Crespo-Yapur, Diego Alfonso 23 July 2013 (has links)
De nombreux systèmes électrochimiques sont composés d'un grand nombre d'éléments électroactifs en interaction. Si la réaction électrochimique possède une cinétique non linéaire, des comportements coopératifs complexes peuvent émerger suivant la nature et l’intensité des interactions entre les éléments du système. L'objectif de cette thèse est de comprendre l'influence de la taille finie de l’électrode et des interactions entre les microélectrodes sur le comportement coopératif d'un groupe de microélectrodes de platine soumis à un couplage global. Les réactions choisies pour cette étude sont l’électrooxydation du monoxyde de carbone (CO), une réaction avec une cinétique bistable et l’électrooxydation du formaldéhyde (HCHO), qui présente des oscillations de potentiel sous contrôle galvanostatique. Au cours de l’électrooxydation galvanodynamiques du CO sur une seule microélectrode de Pt, la branche S-NDR a pu être mise en évidence contrairement au comportement observé sur une macroélectrode de Pt. En outre, les nouveaux comportements coopératifs comme l'activation séquentielle des microélectrodes, des oscillations de courant et de potentiel spontanées et un régime de commutation dynamique entre les électrodes ont été découverts pour cette réaction lorsque quatre électrodes ont été couplées globalement. Pendant l’électrooxydation de HCHO, l'introduction du couplage global à deux électrodes conduit à des oscillations de courant en opposition de phase. / Many electrochemical systems are composed of a large number of interacting electroactive elements. If the reaction taking place on them has nonlinear kinetics and their interactions allow them to exchange information, complex cooperative behaviors can emerge. The objective of this thesis is to understand the influence of finite-size effects and cooperative phenomena on the global behavior of a group of coupled Pt microelectrodes. The reactions chosen for this study were CO electrooxidation, a reaction with current bistability, and HCHO electrooxidation, which exhibits oscillations under galvanostatic control. During the galvanodynamic electrooxidation of CO on a single microelectrode the S-NDR branch could be evidenced, on macroelectrodes this is not possible due to the formations of stationary domains. Additionally, novel cooperative behaviors (i.e., sequential activation, oscillations and complex switching) were discovered for this reaction when four electrodes were globally coupled. During HCHO electrooxidation the introduction of global coupling to two electrodes led to anti-phase current oscillations.
13

Bioimpedance spectroscopy of breast cancer cells: A microsystems approach

Srinivasaraghavan, Vaishnavi 04 November 2015 (has links)
Bioimpedance presents a versatile, label-free means of monitoring biological cells and their responses to physical, chemical and biological stimuli. Breast cancer is the second most common type of cancer among women in the United States. Although significant progress has been made in diagnosis and treatment of this disease, there is a need for robust, easy-to-use technologies that can be used for the identification and discrimination of critical subtypes of breast cancer in biopsies obtained from patients. This dissertation makes contributions in three major areas towards addressing the goal. First, we developed miniaturized bioimpedance sensors using MEMS and microfluidics technology that have the requisite traits for clinical use including reliability, ease-of-use, low-cost and disposability. Here, we designed and fabricated two types of bioimpedance sensors. One was based on electric cell-substrate impedance sensing (ECIS) to monitor cell adhesion based events and the other was a microfluidic device with integrated microelectrodes to examine the biophysical properties of single cells. Second, we examined a panel of triple negative breast cancer (TNBC) cell lines and a hormone therapy resistant model of breast cancer in order to improve our understanding of the bioimpedance spectra of breast cancer subtypes. Third, we explored strategies to improve the sensitivity of the microelectrodes to bioimpedance measurements from breast cancer cells. We investigated nano-scale coatings on the surface of the electrode and geometrical variations in a branched electrode design to accomplish this. This work demonstrates the promise of bioimpedance technologies in monitoring diseased cells and their responses to pharmaceutical agents, and motivates further research in customization of this technique for use in personalized medicine. / Ph. D.
14

Optogenetic feedback control of neural activity

Newman, Jonathan P. 12 January 2015 (has links)
Optogenetics is a set of technologies that enable optically triggered gain or loss of function in genetically specified populations of cells. Optogenetic methods have revolutionized experimental neuroscience by allowing precise excitation or inhibition of firing in specified neuronal populations embedded within complex, heterogeneous tissue. Although optogenetic tools have greatly improved our ability manipulate neural activity, they do not offer control of neural firing in the face of ongoing changes in network activity, plasticity, or sensory input. In this thesis, I develop a feedback control technology that automatically adjusts optical stimulation in real-time to precisely control network activity levels. I describe hardware and software tools, modes of optogenetic stimulation, and control algorithms required to achieve robust neural control over timescales ranging from seconds to days. I then demonstrate the scientific utility of these technologies in several experimental contexts. First, I investigate the role of connectivity in shaping the network encoding process using continuously-varying optical stimulation. I show that synaptic connectivity linearizes the neuronal response, verifying previous theoretical predictions. Next, I use long-term optogenetic feedback control to show that reductions in excitatory neurotransmission directly trigger homeostatic increases in synaptic strength. This result opposes a large body of literature on the subject and has significant implications for memory formation and maintenance. The technology presented in this thesis greatly enhances the precision with which optical stimulation can control neural activity, and allows causally related variables within neural circuits to be studied independently.
15

Micromachined three-dimensional electrode arrays for in-vitro and in-vivo electrogenic cellular networks

Rajaraman, Swaminathan 06 April 2009 (has links)
This dissertation presents an investigation of micromachined three-dimensional microelectrode arrays (3-D MEAs) targeted toward in-vitro and in-vivo biomedical applications. Current 3-D MEAs are predominantly silicon-based, fabricated in a planar fashion, and are assembled to achieve a true 3-D form: a technique that cannot be extended to micro-manufacturing. The integrated 3-D MEAs developed in this work are polymer-based and thus offer potential for large-scale, high volume manufacturing. Two different techniques are developed for microfabrication of these MEAs - laser micromachining of a conformally deposited polymer on a non-planar surface to create 3-D molds for metal electrodeposition; and metal transfer micromolding, where functional metal layers are transferred from one polymer to another during the process of micromolding thus eliminating the need for complex and non-repeatable 3-D lithography processes. In-vitro and in-vivo 3-D MEAs are microfabricated using these techniques and are packaged utilizing Printed Circuit Boards (PCB) or other low-cost manufacturing techniques. To demonstrate in-vitro applications, growth of 3-D co-cultures of neurons/astrocytes and tissue-slice electrophysiology with brain tissue of rat pups were implemented. To demonstrate in-vivo application, measurements of nerve conduction were implemented. Microelectrode impedance models, noise models and various process models were evaluated. The results confirmed biocompatibility of the polymers involved, acceptable impedance range and noise of the microelectrodes, and potential to improve upon an archaic clinical diagnostic application utilizing these 3-D MEAs.
16

Sensory input encoding and readout methods for in vitro living neuronal networks

Ortman, Robert L. 06 July 2012 (has links)
Establishing and maintaining successful communication stands as a critical prerequisite for achieving the goals of inducing and studying advanced computation in small-scale living neuronal networks. The following work establishes a novel and effective method for communicating arbitrary "sensory" input information to cultures of living neurons, living neuronal networks (LNNs), consisting of approximately 20 000 rat cortical neurons plated on microelectrode arrays (MEAs) containing 60 electrodes. The sensory coding algorithm determines a set of effective codes (symbols), comprised of different spatio-temporal patterns of electrical stimulation, to which the LNN consistently produces unique responses to each individual symbol. The algorithm evaluates random sequences of candidate electrical stimulation patterns for evoked-response separability and reliability via a support vector machine (SVM)-based method, and employing the separability results as a fitness metric, a genetic algorithm subsequently constructs subsets of highly separable symbols (input patterns). Sustainable input/output (I/O) bit rates of 16-20 bits per second with a 10% symbol error rate resulted for time periods of approximately ten minutes to over ten hours. To further evaluate the resulting code sets' performance, I used the system to encode approximately ten hours of sinusoidal input into stimulation patterns that the algorithm selected and was able to recover the original signal with a normalized root-mean-square error of 20-30% using only the recorded LNN responses and trained SVM classifiers. Response variations over the course of several hours observed in the results of the sine wave I/O experiment suggest that the LNNs may retain some short-term memory of the previous input sample and undergo neuroplastic changes in the context of repeated stimulation with sensory coding patterns identified by the algorithm.
17

Nonlinear Dynamic Modeling, Simulation And Characterization Of The Mesoscale Neuron-electrode Interface

Thakore, Vaibhav 01 January 2012 (has links)
Extracellular neuroelectronic interfacing has important applications in the fields of neural prosthetics, biological computation and whole-cell biosensing for drug screening and toxin detection. While the field of neuroelectronic interfacing holds great promise, the recording of high-fidelity signals from extracellular devices has long suffered from the problem of low signal-to-noise ratios and changes in signal shapes due to the presence of highly dispersive dielectric medium in the neuron-microelectrode cleft. This has made it difficult to correlate the extracellularly recorded signals with the intracellular signals recorded using conventional patch-clamp electrophysiology. For bringing about an improvement in the signalto-noise ratio of the signals recorded on the extracellular microelectrodes and to explore strategies for engineering the neuron-electrode interface there exists a need to model, simulate and characterize the cell-sensor interface to better understand the mechanism of signal transduction across the interface. Efforts to date for modeling the neuron-electrode interface have primarily focused on the use of point or area contact linear equivalent circuit models for a description of the interface with an assumption of passive linearity for the dynamics of the interfacial medium in the cell-electrode cleft. In this dissertation, results are presented from a nonlinear dynamic characterization of the neuroelectronic junction based on Volterra-Wiener modeling which showed that the process of signal transduction at the interface may have nonlinear contributions from the interfacial medium. An optimization based study of linear equivalent circuit models for representing signals recorded at the neuron-electrode interface subsequently iv proved conclusively that the process of signal transduction across the interface is indeed nonlinear. Following this a theoretical framework for the extraction of the complex nonlinear material parameters of the interfacial medium like the dielectric permittivity, conductivity and diffusivity tensors based on dynamic nonlinear Volterra-Wiener modeling was developed. Within this framework, the use of Gaussian bandlimited white noise for nonlinear impedance spectroscopy was shown to offer considerable advantages over the use of sinusoidal inputs for nonlinear harmonic analysis currently employed in impedance characterization of nonlinear electrochemical systems. Signal transduction at the neuron-microelectrode interface is mediated by the interfacial medium confined to a thin cleft with thickness on the scale of 20-110 nm giving rise to Knudsen numbers (ratio of mean free path to characteristic system length) in the range of 0.015 and 0.003 for ionic electrodiffusion. At these Knudsen numbers, the continuum assumptions made in the use of Poisson-Nernst-Planck system of equations for modeling ionic electrodiffusion are not valid. Therefore, a lattice Boltzmann method (LBM) based multiphysics solver suitable for modeling ionic electrodiffusion at the mesoscale neuron-microelectrode interface was developed. Additionally, a molecular speed dependent relaxation time was proposed for use in the lattice Boltzmann equation. Such a relaxation time holds promise for enhancing the numerical stability of lattice Boltzmann algorithms as it helped recover a physically correct description of microscopic phenomena related to particle collisions governed by their local density on the lattice. Next, using this multiphysics solver simulations were carried out for the charge relaxation dynamics of an electrolytic nanocapacitor with the intention of ultimately employing it for a simulation of the capacitive coupling between the neuron and the v planar microelectrode on a microelectrode array (MEA). Simulations of the charge relaxation dynamics for a step potential applied at t = 0 to the capacitor electrodes were carried out for varying conditions of electric double layer (EDL) overlap, solvent viscosity, electrode spacing and ratio of cation to anion diffusivity. For a large EDL overlap, an anomalous plasma-like collective behavior of oscillating ions at a frequency much lower than the plasma frequency of the electrolyte was observed and as such it appears to be purely an effect of nanoscale confinement. Results from these simulations are then discussed in the context of the dynamics of the interfacial medium in the neuron-microelectrode cleft. In conclusion, a synergistic approach to engineering the neuron-microelectrode interface is outlined through a use of the nonlinear dynamic modeling, simulation and characterization tools developed as part of this dissertation research.

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