Deep Learning for Single-cell Omics Data Analysis
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Type
ThesisThesis type
Masters by ResearchAuthor/s
Huang, HaoAbstract
Single-cell omics sequencing technologies have provided unprecedented opportunities
in characterising biological systems at the omics scale, leading to systematic
understanding of various biological processes, such as stem cell fate decisions and
disease progression. Machine ...
See moreSingle-cell omics sequencing technologies have provided unprecedented opportunities in characterising biological systems at the omics scale, leading to systematic understanding of various biological processes, such as stem cell fate decisions and disease progression. Machine learning models have been at the centre for analysing single-cell omics data and inferring biological knowledge. Owing to the high dimensionality (e.g. large number of profiled genes) and highly complex nature of single-cell omics data, feature selection, a class of machine learning techniques that select a subset of informative features, is essential for handling single-cell omics data for downstream analyses. In this thesis, I first summarise machine learning and feature selection techniques, and their development and application to single-cell omics data based my recently published review. I then apply and evaluate deep learning-based feature selection methods for selecting cell type-specific genes for classifying cells in single-cell transcriptomics data. I demonstrate the utility and advantages of deep learning-based feature selection methods for cell type classification by creating single-cell transcriptomics datasets sampled from Tabula Muris and Tabula Sapiens atlases, with various data properties. Next, I incorporate the deep learningbased feature selection model in a multi-task learning framework for analysing single-cell multimodal omics data that simultaneously profile multiple molecular features of individual cells. I show that our multi-task deep learning framework is capable of performing data simulation, data augmentation, cell type classification, and feature selection for various single-cell multimodal omics data types.
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See moreSingle-cell omics sequencing technologies have provided unprecedented opportunities in characterising biological systems at the omics scale, leading to systematic understanding of various biological processes, such as stem cell fate decisions and disease progression. Machine learning models have been at the centre for analysing single-cell omics data and inferring biological knowledge. Owing to the high dimensionality (e.g. large number of profiled genes) and highly complex nature of single-cell omics data, feature selection, a class of machine learning techniques that select a subset of informative features, is essential for handling single-cell omics data for downstream analyses. In this thesis, I first summarise machine learning and feature selection techniques, and their development and application to single-cell omics data based my recently published review. I then apply and evaluate deep learning-based feature selection methods for selecting cell type-specific genes for classifying cells in single-cell transcriptomics data. I demonstrate the utility and advantages of deep learning-based feature selection methods for cell type classification by creating single-cell transcriptomics datasets sampled from Tabula Muris and Tabula Sapiens atlases, with various data properties. Next, I incorporate the deep learningbased feature selection model in a multi-task learning framework for analysing single-cell multimodal omics data that simultaneously profile multiple molecular features of individual cells. I show that our multi-task deep learning framework is capable of performing data simulation, data augmentation, cell type classification, and feature selection for various single-cell multimodal omics data types.
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Date
2023Rights statement
The author retains copyright of this thesis. It may only be used for the purposes of research and study. It must not be used for any other purposes and may not be transmitted or shared with others without prior permission.Faculty/School
Faculty of ScienceAwarding institution
The University of SydneyShare