# Establish a simple and quantitative deep learning-based method to analyse complicated intra- and inter-species social interaction behaviour for four stag beetle species

**Authors:** Michael Edbert Suryanto, Petrus Siregar, Tzong-Rong Ger, Chung-Der Hsiao

PMC · DOI: 10.1098/rsob.250060 · Open Biology · 2025-07-09

## TL;DR

This study uses deep learning to analyze social behaviors in four stag beetle species, offering a quantitative method to understand their interactions.

## Contribution

A simple, deep learning-based method is developed to quantitatively analyze intra- and inter-species social interactions in stag beetles.

## Key findings

- DLC effectively tracks key body parts to extract behavioral parameters like distance and orientation.
- Species-specific differences in aggression, courtship, and dominance were identified.
- The method provides objective insights into stag beetle social ecology and evolution.

## Abstract

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: Phalacrognathus muelleri, Prosopocoilus astacoides, Dorcus titanus and Prosopocoilus inclinatus. 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.

## Linked entities

- **Species:** Phalacrognathus muelleri (taxon 618351), Prosopocoilus astacoides (taxon 618406), Prosopocoilus inclinatus (taxon 231740)

## Full-text entities

- **Diseases:** aggression (MESH:D010554)
- **Species:** Lucanidae (stag beetles, family) [taxon 41105], Coleoptera (beetles, order) [taxon 7041], Phalacrognathus muelleri (species) [taxon 618351], Prosopocoilus inclinatus (species) [taxon 231740], Serrognathus titanus (species) [taxon 618631], Prosopocoilus astacoides (species) [taxon 618406]

## Full text

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## Figures

13 figures with captions in the complete paper: https://tomesphere.com/paper/PMC12308235/full.md

## References

44 references — full list in the complete paper: https://tomesphere.com/paper/PMC12308235/full.md

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Source: https://tomesphere.com/paper/PMC12308235