Deep learning-assisted comparative analysis of animal trajectories with DeepHL

被引:31
|
作者
Maekawa, Takuya [1 ]
Ohara, Kazuya [1 ]
Zhang, Yizhe [1 ]
Fukutomi, Matasaburo [2 ]
Matsumoto, Sakiko [3 ,4 ]
Matsumura, Kentarou [4 ]
Shidara, Hisashi [5 ]
Yamazaki, Shuhei J. [6 ]
Fujisawa, Ryusuke [7 ]
Ide, Kaoru [8 ]
Nagaya, Naohisa [9 ]
Yamazaki, Koji [10 ]
Koike, Shinsuke [11 ]
Miyatake, Takahisa [4 ]
Kimura, Koutarou D. [6 ,12 ]
Ogawa, Hiroto [5 ]
Takahashi, Susumu [8 ]
Yoda, Ken [3 ]
机构
[1] Osaka Univ, Grad Sch Informat Sci & Technol, Osaka, Japan
[2] Hokkaido Univ, Grad Sch Life Sci, Sapporo, Hokkaido, Japan
[3] Nagoya Univ, Grad Sch Environm Studies, Nagoya, Aichi, Japan
[4] Okayama Univ, Grad Sch Environm & Life Sci, Okayama, Japan
[5] Hokkaido Univ, Dept Biol Sci, Sapporo, Hokkaido, Japan
[6] Osaka Univ, Grad Sch Sci, Osaka, Japan
[7] Kyushu Inst Technol, Grad Sch Comp Sci & Syst Engn, Iizuka, Fukuoka, Japan
[8] Doshisha Univ, Grad Sch Brain Sci, Kyotanabe, Japan
[9] Kyoto Sangyo Univ, Dept Intelligent Syst, Kyoto, Japan
[10] Tokyo Univ Agr, Dept Forest Sci, Tokyo, Japan
[11] Tokyo Univ Agr & Technol, Grad Sch Agr, Tokyo, Japan
[12] Nagoya City Univ, Grad Sch Sci, Nagoya, Aichi, Japan
关键词
NEURAL-NETWORKS; GO; BEHAVIORS; DEATH; MODEL; GAME;
D O I
10.1038/s41467-020-19105-0
中图分类号
O [数理科学和化学]; P [天文学、地球科学]; Q [生物科学]; N [自然科学总论];
学科分类号
07 ; 0710 ; 09 ;
摘要
A comparative analysis of animal behavior (e.g., male vs. female groups) has been widely used to elucidate behavior specific to one group since pre-Darwinian times. However, big data generated by new sensing technologies, e.g., GPS, makes it difficult for them to contrast group differences manually. This study introduces DeepHL, a deep learning-assisted platform for the comparative analysis of animal movement data, i.e., trajectories. This software uses a deep neural network based on an attention mechanism to automatically detect segments in trajectories that are characteristic of one group. It then highlights these segments in visualized trajectories, enabling biologists to focus on these segments, and helps them reveal the underlying meaning of the highlighted segments to facilitate formulating new hypotheses. We tested the platform on a variety of trajectories of worms, insects, mice, bears, and seabirds across a scale from millimeters to hundreds of kilometers, revealing new movement features of these animals. Comparative analysis of animal behaviour using locomotion data such as GPS data is difficult because the large amount of data makes it difficult to contrast group differences. Here the authors apply deep learning to detect and highlight trajectories characteristic of a group across scales of millimetres to hundreds of kilometres.
引用
收藏
页数:15
相关论文
共 50 条
  • [31] ROPRNet: Deep learning-assisted recurrence prediction for retinopathy of prematurity
    Huang, Peijie
    Xie, Yiying
    Wu, Rong
    Lin, Qiuxia
    Cai, Nian
    Chen, Haitao
    Feng, Songfu
    BIOMEDICAL SIGNAL PROCESSING AND CONTROL, 2025, 100
  • [32] Deep Reinforcement Learning-Assisted Energy Harvesting Wireless Networks
    Ye, Junliang
    Gharavi, Hamid
    IEEE TRANSACTIONS ON GREEN COMMUNICATIONS AND NETWORKING, 2021, 5 (02): : 990 - 1002
  • [33] Deep learning-assisted frequency-domain photoacoustic microscopy
    Tserevelakis, George J.
    Barmparis, Georgios D.
    Kokosalis, Nikolaos
    Giosa, Eirini Smaro
    Pavlopoulos, Anastasios
    Tsironis, Giorgos P.
    Zacharakis, Giannis
    OPTICS LETTERS, 2023, 48 (10) : 2720 - 2723
  • [34] Deep Learning-Assisted Triboelectric Sensor for Complex Gesture Recognition
    Zhang, Ping
    Pan, Weimeng
    Li, Zhihao
    Liu, Baocheng
    ACS OMEGA, 2025, 10 (09): : 9381 - 9389
  • [35] Deep learning-assisted (automatic) diagnosis of glaucoma using a smartphone
    Nakahara, Kenichi
    Asaoka, Ryo
    Tanito, Masaki
    Shibata, Naoto
    Mitsuhashi, Keita
    Fujino, Yuri
    Matsuura, Masato
    Inoue, Tatsuya
    Azuma, Keiko
    Obata, Ryo
    Murata, Hiroshi
    BRITISH JOURNAL OF OPHTHALMOLOGY, 2022, 106 (04) : 587 - 592
  • [36] A Guessing Entropy-Based Framework for Deep Learning-Assisted Side-Channel Analysis
    Zhang, Ziyue
    Ding, A. Adam
    Fei, Yunsi
    IEEE TRANSACTIONS ON INFORMATION FORENSICS AND SECURITY, 2023, 18 : 3018 - 3030
  • [37] Deep Learning-Assisted Multivariate Analysis for Nanoscale Characterization of Heterogeneous Beam-Sensitive Materials
    Kosasih, Felix Utama
    Su, Fanzhi
    Du, Tian
    Ratnasingham, Sinclair Ryley
    Briscoe, Joe
    Ducati, Caterina
    MICROSCOPY AND MICROANALYSIS, 2023, 29 (03) : 1047 - 1061
  • [38] Deep Learning-Assisted Analysis of GO-Reinforcing Effects on the Interfacial Transition Zone of CWRB
    Yu, Jiajian
    Chen, Zhiwei
    Xu, Xiaoli
    Su, Xinjie
    Liang, Shuai
    Wang, Yanchao
    Hong, Junqing
    Zhang, Shaofeng
    MATERIALS, 2024, 17 (23)
  • [39] Explainable Deep Learning-Assisted Self-Calibrating Colorimetric Patches for In Situ Sweat Analysis
    Zhang, Jiabing
    Liu, Zhihao
    Tang, Yongtao
    Wang, Shuang
    Meng, Jianxin
    Li, Fengyu
    ANALYTICAL CHEMISTRY, 2024, 96 (03) : 1205 - 1213
  • [40] A Deep Learning-Assisted Electroretinogram Analysis System for Automated Abnormality Detection in Patient Retinal Function
    Binh Duong Giap
    Likosky, Keely
    Lustre, Jefferson
    Srinivasan, Karthik
    Khan, Naheed
    Nallasamy, Nambi
    INVESTIGATIVE OPHTHALMOLOGY & VISUAL SCIENCE, 2024, 65 (07)