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    Attention-Based Graph Neural Network for Label Propagation in Single-Cell Omics

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    Author
    Bhadani, Rahul Kumar
    Issue Date
    2022
    Keywords
    classification
    graph neural network
    machine learning
    scRNA-seq
    single-cell
    transductive learning
    Advisor
    An, Lingling
    
    Metadata
    Show full item record
    Publisher
    The University of Arizona.
    Rights
    Copyright © is held by the author. Digital access to this material is made possible by the University Libraries, University of Arizona. Further transmission, reproduction, presentation (such as public display or performance) of protected items is prohibited except with permission of the author.
    Embargo
    Release after 05/19/2023
    Abstract
    Single-cell data analysis has been at forefront of development in biology and medicine since sequencing data has been made available. An important challenge in single-cell data analysis is the identification of cell types. Several methods have been proposed for cell-type identification. However, these methods do not capture the higher-order topological relationship between different samples. In this thesis, we propose an attention-based graph neural network that captures the higher-order topological relationship between different samples and performs transductive learning for predicting cell types. Evaluation of our method on publicly available datasets demonstrates the superiority of our method scAGN in terms of prediction accuracy. In addition, our method works best for highly sparse datasets in terms of F1 score, precision score, recall score, and Matthew's correlation coefficient as well. Further, our method's runtime complexity is consistently faster compared to other methods.
    Type
    text
    Electronic Thesis
    Degree Name
    M.S.
    Degree Level
    masters
    Degree Program
    Graduate College
    Statistics
    Degree Grantor
    University of Arizona
    Collections
    Master's Theses

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