Genomics data analysis via spectral shape and topology.
Erik J AmézquitaFarzana NasrinKathleen M StoreyMasato YoshizawaPublished in: PloS one (2023)
Mapper, a topological algorithm, is frequently used as an exploratory tool to build a graphical representation of data. This representation can help to gain a better understanding of the intrinsic shape of high-dimensional genomic data and to retain information that may be lost using standard dimension-reduction algorithms. We propose a novel workflow to process and analyze RNA-seq data from tumor and healthy subjects integrating Mapper, differential gene expression, and spectral shape analysis. Precisely, we show that a Gaussian mixture approximation method can be used to produce graphical structures that successfully separate tumor and healthy subjects, and produce two subgroups of tumor subjects. A further analysis using DESeq2, a popular tool for the detection of differentially expressed genes, shows that these two subgroups of tumor cells bear two distinct gene regulations, suggesting two discrete paths for forming lung cancer, which could not be highlighted by other popular clustering methods, including t-distributed stochastic neighbor embedding (t-SNE). Although Mapper shows promise in analyzing high-dimensional data, tools to statistically analyze Mapper graphical structures are limited in the existing literature. In this paper, we develop a scoring method using heat kernel signatures that provides an empirical setting for statistical inferences such as hypothesis testing, sensitivity analysis, and correlation analysis.
Keyphrases
- data analysis
- rna seq
- electronic health record
- gene expression
- single cell
- big data
- machine learning
- magnetic resonance imaging
- deep learning
- high resolution
- healthcare
- genome wide identification
- artificial intelligence
- copy number
- social media
- transcription factor
- sensitive detection
- mass spectrometry
- magnetic resonance
- label free