Biosignals learning and synthesis using deep neural networks

被引:26
|
作者
Belo, David [1 ]
Rodrigues, Joao [1 ]
Vaz, Joao R. [2 ,3 ,4 ]
Pezarat-Correia, Pedro [2 ]
Gamboa, Hugo [1 ]
机构
[1] Univ Nova Lisboa, LIBPhys Lab Instrumentat Biomed Engn & Radiat Phy, Fac Ciencias & Tecnol, P-2829516 Caparica, Portugal
[2] Univ Lisbon, Lab Motor Behav, CIPER, Fac Motricidade Humana, Estrada Costa, P-1499002 Cruz Quebrada Dafundo, Portugal
[3] Laureate Int Univ, Univ Europeia, Lisbon, Portugal
[4] Sport Lisboa & Benf, Benf Lab, Lisbon, Portugal
关键词
Neural networks; DNN; GRU; Synthesis; Biosignals; ECG; EMG; RESP;
D O I
10.1186/s12938-017-0405-0
中图分类号
R318 [生物医学工程];
学科分类号
0831 ;
摘要
Background: Modeling physiological signals is a complex task both for understanding and synthesize biomedical signals. We propose a deep neural network model that learns and synthesizes biosignals, validated by the morphological equivalence of the original ones. This research could lead the creation of novel algorithms for signal reconstruction in heavily noisy data and source detection in biomedical engineering field. Method: The present work explores the gated recurrent units (GRU) employed in the training of respiration (RESP), electromyograms (EMG) and electrocardiograms (ECG). Each signal is pre-processed, segmented and quantized in a specific number of classes, corresponding to the amplitude of each sample and fed to the model, which is composed by an embedded matrix, three GRU blocks and a softmax function. This network is trained by adjusting its internal parameters, acquiring the representation of the abstract notion of the next value based on the previous ones. The simulated signal was generated by forecasting a random value and re-feeding itself. Results and conclusions: The resulting generated signals are similar with the morphological expression of the originals. During the learning process, after a set of iterations, the model starts to grasp the basic morphological characteristics of the signal and later their cyclic characteristics. After training, these models' prediction are closer to the signals that trained them, specially the RESP and ECG. This synthesis mechanism has shown relevant results that inspire the use to characterize signals from other physiological sources.
引用
收藏
页数:17
相关论文
共 50 条
  • [31] Collaborative Learning for Deep Neural Networks
    Song, Guocong
    Chai, Wei
    ADVANCES IN NEURAL INFORMATION PROCESSING SYSTEMS 31 (NIPS 2018), 2018, 31
  • [32] Big learning and deep neural networks
    Montavon, Grégoire
    Müller, Klaus-Robert
    Lecture Notes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics), 2012, 7700 LECTURE NO : 419 - 420
  • [33] Multiplierless Neural Networks for Deep Learning
    Banduka, Maja Lutovac
    Lutovac, Miroslav
    2024 13TH MEDITERRANEAN CONFERENCE ON EMBEDDED COMPUTING, MECO 2024, 2024, : 262 - 265
  • [34] Shortcut learning in deep neural networks
    Geirhos, Robert
    Jacobsen, Joern-Henrik
    Michaelis, Claudio
    Zemel, Richard
    Brendel, Wieland
    Bethge, Matthias
    Wichmann, Felix A.
    NATURE MACHINE INTELLIGENCE, 2020, 2 (11) : 665 - 673
  • [35] LEARNING DEEP TRAJECTORY DESCRIPTOR FOR ACTION RECOGNITION IN VIDEOS USING DEEP NEURAL NETWORKS
    Shi, Yemin
    Zeng, Wei
    Huang, Tiejun
    Wang, Yaowei
    2015 IEEE INTERNATIONAL CONFERENCE ON MULTIMEDIA & EXPO (ICME), 2015,
  • [36] Deep Learning Neural Networks and Bayesian Neural Networks in Data Analysis
    Chernoded, Andrey
    Dudko, Lev
    Myagkov, Igor
    Volkov, Petr
    XXIII INTERNATIONAL WORKSHOP HIGH ENERGY PHYSICS AND QUANTUM FIELD THEORY (QFTHEP 2017), 2017, 158
  • [37] Training Spiking Neural Networks Using Lessons From Deep Learning
    Eshraghian, Jason K.
    Ward, Max
    Neftci, Emre O.
    Wang, Xinxin
    Lenz, Gregor
    Dwivedi, Girish
    Bennamoun, Mohammed
    Jeong, Doo Seok
    Lu, Wei D.
    PROCEEDINGS OF THE IEEE, 2023, 111 (09) : 1016 - 1054
  • [38] Spectrographic Seizure Detection Using Deep Learning With Convolutional Neural Networks
    Yan, Peter
    Wang, Fei
    Grinspan, Zachary
    NEUROLOGY, 2018, 90
  • [39] Prediction of sea surface temperatures using deep learning neural networks
    Partha Pratim Sarkar
    Prashanth Janardhan
    Parthajit Roy
    SN Applied Sciences, 2020, 2
  • [40] Learning Eligibility in Cancer Clinical Trials Using Deep Neural Networks
    Bustos, Aurelia
    Pertusa, Antonio
    APPLIED SCIENCES-BASEL, 2018, 8 (07):