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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.
361

Estimating the Effective Electrotonic Length of Dendritic Neurons With Reduced Equivalent Cable Models

Poznanski, R. R., Glenn, L. Lee 01 January 1994 (has links)
No description available.
362

Computational Tools for Profiling Neural Cells via Molecular Image Data

Chen, Shuonan January 2023 (has links)
A fundamental goal in neuroscience research is to comprehensively characterize cell populations within the brain in order to uncover the mechanisms governing brain states and behavior. This involves profiling specific cells through multiple biological aspects and discerning their contributions to the brain's circuitry. Characterizing cell populations at a large scale from multiple perspectives is crucial for advancing our understanding of brain function. Recently, experimental technologies for generating large datasets have become more accessible to neuroscience researchers working at different biological scales, including molecular, cellular, and functional levels. These new technologies, including high-throughput sequencing, multiplexed spatial transcriptomics, cellular tracing, and multimodal experiments, provide us with a large number of rich datasets from which we can discern the underlying mechanisms governing the biological processes. Despite the power of these new technologies and how much information these datasets contain, such new data presents new computational challenges which prevent us from fully exploiting them to address critical biological questions. Specifically, this newly generated data differs substantially from traditional experimental data in terms of data size and captured dimensions. Traditional analytical approaches are either not applicable at all or need improvements that are specific to this type of new dataset. This in turn necessitates the development of robust and scalable analysis techniques that are specifically designed for the new data, as well as the exploration of the potential applications for these novel datasets. This thesis introduces computational tools we developed to analyze three distinct types of complex datasets. These datasets were meticulously collected using cutting-edge experimental techniques which investigate biological phenomena at multiple levels of resolution. Our methods utilize statistical modeling, image analysis, and computer vision techniques to better analyze such data and equip researchers with scalable and robust tools for the new data they generate. The first work in this thesis presents a demixing tool to accurately decipher high-throughput spatial transcriptomics signals in order to better understand molecular diversity among neurons. In the second work we propose a blind demixing method and use carefully simulated data to assess the feasibility of using cellular barcoding technology to reconstruct neural morphology. In the final work we develop a three-dimensional volumetric image registration pipeline and a semi-automatic registration framework, in order to map neuronal functional activity information to the molecular profiles of these neurons. We extensively validate our proposed methods using both simulations and real datasets that were generated in experimental laboratories, demonstrating the robustness of our methods and highlighting their potential utilization in future high-throughput experiments. In summary, this thesis provides three computational tools for facilitating analysis of advanced datasets at various biological levels. Addressing the computational challenges for these new datasets lays the foundation for a comprehensive understanding of cellular functions and brain functions, and the underlying mechanisms thereof. Though our methods were developed and validated using neuroscience data, we envision that these versatile tools can be seamlessly adapted and effectively applied to other fields, including but not limited to immunology and cancer research.
363

Cyclic AMP mediates the prostaglandin E₂-induced sensitization of bradykinin excitation in rat sensory neurons

Cui, Minglei January 1994 (has links)
This document only includes an excerpt of the corresponding thesis or dissertation. To request a digital scan of the full text, please contact the Ruth Lilly Medical Library's Interlibrary Loan Department (rlmlill@iu.edu).
364

GABA(A) receptor subunit expression and assembly in rat cerebellar neurons

Nadler, Laurie Sue January 1996 (has links)
No description available.
365

Neuronal development in the rat sensory ganglia

Memberg, Stacey Piszczkiewicz January 1995 (has links)
No description available.
366

Identification of a Culture Cell Model to Study Hemoglobin Expression in Neurons

Bhatta, Sabina 26 May 2011 (has links)
No description available.
367

MematineHCI and Amino-Alkyl-Cyclohexanes (621,625) Inhibit HSV-1 in SK-N-SH Neuronal Cells

Caplinger, John N. 14 December 2001 (has links)
No description available.
368

The effects of removal of synaptic input on thermosensitive neurons in the preoptic/anterior hypothalamic area /

Kelso, Stephen Robert January 1981 (has links)
No description available.
369

The effects of osmotic pressure, glucose and reproductive steroids on temperature-sensitive and -insensitive neurons in hypothalamic tissue slices /

Silva, Nancy Lynn January 1983 (has links)
No description available.
370

An electrophysiological analysis of temperature reception and integration in hypothalamic tissue slices /

Dean, Jay B. January 1986 (has links)
No description available.

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