SlowMoMan: a web app for discovery of important features along user-drawn trajectories in 2D embeddings.

Deol, Kiran, Griffin M Weber, and Yun William Yu. 2024. “SlowMoMan: a Web App for Discovery of Important Features Along User-Drawn Trajectories in 2D Embeddings.”. Bioinformatics Advances 4 (1): vbae095.

Abstract

MOTIVATION: Nonlinear low-dimensional embeddings allow humans to visualize high-dimensional data, as is often seen in bioinformatics, where datasets may have tens of thousands of dimensions. However, relating the axes of a nonlinear embedding to the original dimensions is a nontrivial problem. In particular, humans may identify patterns or interesting subsections in the embedding, but cannot easily identify what those patterns correspond to in the original data.

RESULTS: Thus, we present SlowMoMan (SLOW Motions on MANifolds), a web application which allows the user to draw a one-dimensional path onto a 2D embedding. Then, by back-projecting the manifold to the original, high-dimensional space, we sort the original features such that those most discriminative along the manifold are ranked highly. We show a number of pertinent use cases for our tool, including trajectory inference, spatial transcriptomics, and automatic cell classification.

AVAILABILITY AND IMPLEMENTATION: Software: https://yunwilliamyu.github.io/SlowMoMan/; Code: https://github.com/yunwilliamyu/SlowMoMan.

Last updated on 04/24/2025
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