Interdisciplinary Program in Bioengineering, Georgia Institute of Technology, Atlanta, Georgia, United States of America.
School of Chemical & Biomolecular Engineering, Georgia Institute of Technology, Atlanta, Georgia, United States of America.
PLoS Comput Biol. 2022 Apr 8;18(4):e1009942. doi: 10.1371/journal.pcbi.1009942. eCollection 2022 Apr.
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.
稳健、准确的行为追踪对于行为学研究至关重要。常见的跟踪和提取行为的方法依赖于用户调整的启发式方法,这些方法在不同的个体、环境和实验条件下可能会有很大的差异。因此,它们很难在具有复杂、异质环境条件的大规模行为研究中实施。最近开发的用于对象识别的深度学习方法,如 Faster R-CNN,在速度、准确性和鲁棒性方面具有优势。在这里,我们展示了 Faster R-CNN 可以用于识别和检测复杂环境中各种生命阶段的秀丽隐杆线虫。我们将该算法应用于跟踪动物在发育过程中的速度、繁殖期成虫的繁殖率和空间分布以及老年群体的行为下降。通过这样做,我们展示了 Faster R-CNN 在各种实验条件下的灵活性、速度和可扩展性,说明了它在未来大规模行为研究中的广泛应用。