Title of article :
A Run-Length Encoding Approach for Path Analysis of C. elegans Search Behavior
Author/Authors :
Huang, Li School of Computing - College of Computing and Digital Media - DePaul University - Chicago, USA , Kim, Hongkyun Department of Cell Biology and Anatomy - Chicago Medical School - Rosalind Franklin University - North Chicago, USA , Furst, Jacob School of Computing - College of Computing and Digital Media - DePaul University - Chicago, USA , Raicu, Daniela School of Computing - College of Computing and Digital Media - DePaul University - Chicago, USA
Abstract :
The nematode Caenorhabditis elegans explores the environment using a combination of different movement patterns, which include
straight movement, reversal, and turns. We propose to quantify C. elegans movement behavior using a computer vision approach
based on run-length encoding of step-length data. In this approach, the path of C. elegans is encoded as a string of characters, where
each character represents a path segment of a specific type of movement. With these encoded string data, we perform 𝑘-means cluster analysis to distinguish movement behaviors resulting from different genotypes and food availability. We found that shallow and
sharp turns are the most critical factors in distinguishing the differences among the movement behaviors. To validate our approach,
we examined the movement behavior of tph-1 mutants that lack an enzyme responsible for serotonin biosynthesis. A𝑘-means cluster
analysis with the path string-encoded data showed that tph-1 movement behavior on food is similar to that of wild-type animals
off food. We suggest that this run-length encoding approach is applicable to trajectory data in animal or human mobility data.
Keywords :
Run-Length , C. elegans , A𝑘-means
Journal title :
Computational and Mathematical Methods in Medicine