K-Nearest-Neighbors Induced Topological PCA for scRNA Sequence Data Analysis
Sean Cottrell, Yuta Hozumi, Guo-Wei Wei

TL;DR
This paper introduces a novel topological PCA method combining persistent Laplacian and kNN techniques to improve dimensionality reduction in scRNA-seq data analysis, capturing multiscale heterogeneity more effectively.
Contribution
It proposes a new topological PCA framework using persistent Laplacian and kNN methods, enhancing robustness and multiscale analysis in single-cell RNA sequencing data.
Findings
Outperforms existing PCA-based methods in benchmark datasets.
Provides more accurate clustering and visualization of cell heterogeneity.
Demonstrates robustness to parameter variations in kNN-tPCA.
Abstract
Single-cell RNA sequencing (scRNA-seq) is widely used to reveal heterogeneity in cells, which has given us insights into cell-cell communication, cell differentiation, and differential gene expression. However, analyzing scRNA-seq data is a challenge due to sparsity and the large number of genes involved. Therefore, dimensionality reduction and feature selection are important for removing spurious signals and enhancing downstream analysis. Traditional PCA, a main workhorse in dimensionality reduction, lacks the ability to capture geometrical structure information embedded in the data, and previous graph Laplacian regularizations are limited by the analysis of only a single scale. We propose a topological Principal Components Analysis (tPCA) method by the combination of persistent Laplacian (PL) technique and L norm regularization to address multiscale and multiclass…
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Taxonomy
TopicsSingle-cell and spatial transcriptomics · Neuroinflammation and Neurodegeneration Mechanisms · Genomics and Chromatin Dynamics
MethodsPrincipal Components Analysis · Feature Selection
