Multi-environment model estimation for motility analysis of Caenorhabditis Elegans
Raphael Sznitman, Manaswi Gupta, Gregory D. Hager, Paulo E. Arratia,, and Josue Sznitman

TL;DR
This paper introduces MEME, a versatile, automated image segmentation framework for C. elegans motility analysis across diverse environments, reducing manual tuning and improving segmentation accuracy.
Contribution
The novel MEME framework uses Mixture of Gaussian models for automated, environment-agnostic segmentation of C. elegans from images with minimal input.
Findings
MEME outperforms threshold-based methods in most tested environments.
The platform enables easy extraction of nematode skeletons for motility analysis.
Single-image model learning simplifies the segmentation process.
Abstract
The nematode Caenorhabditis elegans is a well-known model organism used to investigate fundamental questions in biology. Motility assays of this small roundworm are designed to study the relationships between genes and behavior. Commonly, motility analysis is used to classify nematode movements and characterize them quantitatively. Over the past years, C. elegans' motility has been studied across a wide range of environments, including crawling on substrates, swimming in fluids, and locomoting through microfluidic substrates. However, each environment often requires customized image processing tools relying on heuristic parameter tuning. In the present study, we propose a novel Multi-Environment Model Estimation (MEME) framework for automated image segmentation that is versatile across various environments. The MEME platform is constructed around the concept of Mixture of Gaussian (MOG)…
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