Orthogonal outlier detection and dimension estimation for improved MDS embedding of biological datasets

Front Bioinform. 2023 Aug 10:3:1211819. doi: 10.3389/fbinf.2023.1211819. eCollection 2023.

Abstract

Conventional dimensionality reduction methods like Multidimensional Scaling (MDS) are sensitive to the presence of orthogonal outliers, leading to significant defects in the embedding. We introduce a robust MDS method, called DeCOr-MDS (Detection and Correction of Orthogonal outliers using MDS), based on the geometry and statistics of simplices formed by data points, that allows to detect orthogonal outliers and subsequently reduce dimensionality. We validate our methods using synthetic datasets, and further show how it can be applied to a variety of large real biological datasets, including cancer image cell data, human microbiome project data and single cell RNA sequencing data, to address the task of data cleaning and visualization.

Keywords: microbiome data; multidimensional scaling; orthogonal outliers; outlier correction; outlier detection; scRNA seq; shape data.

Grants and funding

This research was supported by a NSERC Discovery grant (PG 22R3468) and a MITACS PIMS fellowship.