Suryanto Michael Edbert, Siregar Petrus, Ger Tzong-Rong, Hsiao Chung-Der
Chung Yuan Christian University, Taoyuan, Taiwan.
Department of Chemistry, Chung Yuan Christian University, Taoyuan, Taiwan.
Open Biol. 2025 Jul;15(7):250060. doi: 10.1098/rsob.250060. Epub 2025 Jul 9.
Stag beetles (Lucanidae) exhibit diverse social behaviours, yet quantifying these interactions remains challenging. Understanding social interactions within and between species is crucial for comprehending their behaviour, ecology and evolution. Stag beetles exhibit diverse social behaviours, including intraspecific competition, courtship and interspecific interactions, often involving complex physical displays and subtle cues. Traditional ethological methods for analysing these behaviours are time-consuming, subjective and limited in their ability to capture the nuances of dynamic interactions. This project aims to develop a simple and quantitative deep learning-based method to analyse complicated intra- and inter-species social interaction behaviour in four stag beetle species. This study utilizes DeepLabCut™ (DLC), a state-of-the-art deep learning-based pose estimation tool, to analyse and compare intra- and inter-species social interactions in four stag beetle species: , , and . High-resolution videos of staged encounters were collected, and DLC was trained to accurately track key body parts of individual beetles. Behavioural parameters such as distance between individuals, orientation angles and movement trajectories were extracted from the pose data. Statistical analyses were conducted to identify species-specific differences in social behaviour, including aggression levels, courtship displays and dominance hierarchies. This study demonstrates the effectiveness of DLC in objectively quantifying complex social interactions in insects, providing valuable insights into the social ecology and evolutionary divergence of stag beetles.
锹甲(锹甲科)表现出多样的社会行为,但对这些互动进行量化仍然具有挑战性。了解物种内部和物种之间的社会互动对于理解它们的行为、生态和进化至关重要。锹甲表现出多样的社会行为,包括种内竞争、求偶和种间互动,通常涉及复杂的身体展示和微妙的线索。用于分析这些行为的传统行为学方法耗时、主观,并且在捕捉动态互动细微差别方面能力有限。本项目旨在开发一种基于深度学习的简单定量方法,以分析四种锹甲物种中复杂的种内和种间社会互动行为。本研究利用DeepLabCut™(DLC),一种基于深度学习的先进姿态估计工具,来分析和比较四种锹甲物种( 、 、 和 )的种内和种间社会互动。收集了 staged encounters 的高分辨率视频,并训练DLC以准确跟踪单个甲虫的关键身体部位。从姿态数据中提取个体之间的距离、方位角和运动轨迹等行为参数。进行统计分析以确定社会行为中特定物种的差异,包括攻击水平、求偶展示和优势等级制度。本研究证明了DLC在客观量化昆虫复杂社会互动方面的有效性,为锹甲的社会生态学和进化分歧提供了有价值的见解。