TITLE:
Computational Geometric Analysis for C. elegans Trajectories on Thermal and Salinity Gradient
AUTHORS:
Yuetan Chu
KEYWORDS:
C. elegans, Tropism, Trajectories Classification, Computational Geometric Analysis, PCA
JOURNAL NAME:
American Journal of Computational Mathematics,
Vol.10 No.4,
December
18,
2020
ABSTRACT: Elegans are one of the best model organisms in neural researches, and tropism movement is a typical learning and memorizing activity. Based on one imaging technique called Fast Track-Capturing Microscope (FTCM), we investigated the movement regulation. Two movement patterns are extracted from various trajectories through analysis on turning angle. Then we applied this classification on trajectory regulation on the compound gradient field, and theoretical results corresponded with experiments well, which can initially verify the conclusion. Our breakthrough is performed computational geometric analysis on trajectories. Several independent features were combined to describe movement properties by principal composition analysis (PCA) and support vector machine (SVM). After normalizing all data sets, no-supervising machine learning was processed along with some training under certain supervision. The final classification results performed perfectly, which indicates the further application of such computational analysis in biology researches combining with machine learning.