Litcius/Paper detail

Deep learning for robust and flexible tracking in behavioral studies for C. elegans

Kathleen Bates, Kim N. Le, Hang Lu

2022PLoS Computational Biology47 citationsDOIOpen Access PDF

Abstract

Robust and accurate behavioral tracking is essential for ethological studies. Common methods for tracking and extracting behavior rely on user adjusted heuristics that can significantly vary across different individuals, environments, and experimental conditions. As a result, they are difficult to implement in large-scale behavioral studies with complex, heterogenous environmental conditions. Recently developed deep-learning methods for object recognition such as Faster R-CNN have advantages in their speed, accuracy, and robustness. Here, we show that Faster R-CNN can be employed for identification and detection of Caenorhabditis elegans in a variety of life stages in complex environments. We applied the algorithm to track animal speeds during development, fecundity rates and spatial distribution in reproductive adults, and behavioral decline in aging populations. By doing so, we demonstrate the flexibility, speed, and scalability of Faster R-CNN across a variety of experimental conditions, illustrating its generalized use for future large-scale behavioral studies.

Topics & Concepts

Robustness (evolution)ScalabilityComputer scienceArtificial intelligenceHeuristicsDeep learningMachine learningVideo trackingCaenorhabditis elegansIdentification (biology)Animal behaviorBehavioral patternObject (grammar)BiologyEcologyZoologyOperating systemGeneSoftware engineeringBiochemistryDatabaseGenetics, Aging, and Longevity in Model Organisms