Deciphering Cell Systems: Machine Learning Perspectives And Approaches For The Analysis Of Single-Cell Data
Yongjian Yang

TL;DR
This paper presents advanced machine learning methods, including neural networks and generative models, to analyze single-cell RNA sequencing data, revealing insights into gene regulation, cell interactions, and protein expression.
Contribution
It introduces novel computational approaches for single-cell data analysis, enhancing interpretability and addressing high-dimensional challenges in cellular biology.
Findings
Improved understanding of cell-cell communication mechanisms
Novel gene function inference through knockout simulations
Enhanced interpretability of neural network models for multimodal data
Abstract
This dissertation explores the application of machine learning in molecular biology, focusing on gene expression regulation and cellular behavior at the single-cell level. Using modern neural networks, the research addresses key challenges in cell-cell communication, gene function inference, and protein expression analysis, with a special focus on single-cell RNA sequencing (scRNA-seq) data. Advanced computational methodologies integrating systems biology and neural network techniques were developed to handle the complexity and high-dimensionality of single-cell data, leading to a deeper understanding of genotype-phenotype relationships. This work proposes novel solutions to optimization problems in manifold learning, explores generative models for gene regulatory networks, and simulates gene knockout at single-cell resolution. Furthermore, the research enhances the interpretability of…
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Taxonomy
TopicsCell Image Analysis Techniques
MethodsFocus
