Physics-Constrained Deep Learning for Robust Inverse ECG Modeling

被引:13
|
作者
Xie, Jianxin [1 ]
Yao, Bing [1 ]
机构
[1] Oklahoma State Univ, Sch Ind Engn & Management, Stillwater, OK 74078 USA
关键词
Electrocardiography; Heart; Electric potential; Spatiotemporal phenomena; Deep learning; Physics; Inverse problems; inverse ECG modeling; Gaussian process upper-confidence-bound; EPICARDIAL POTENTIALS; NEURAL-NETWORKS; REGULARIZATION; ELECTROCARDIOGRAPHY; RECONSTRUCTION; INFARCTION; DIAGNOSIS;
D O I
10.1109/TASE.2022.3144347
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
The rapid development in advanced sensing and imaging brings about a data-rich environment, facilitating the effective modeling, monitoring, and control of complex systems. For example, the body-sensor network captures multi-channel information pertinent to the electrical activity of the heart (i.e., electrocardiograms (ECG)), which enables medical scientists to monitor and detect abnormal cardiac conditions. However, the high-dimensional sensing data are generally complexly structured. Realizing the full data potential depends to a great extent on advanced analytical and predictive methods. This paper presents a physics-constrained deep learning (P-DL) framework for robust inverse ECG modeling. This method integrates the physics law of the cardiac electrical wave propagation with the advanced deep learning infrastructure to solve the inverse ECG problem and predict the spatiotemporal electrodynamics in the heart from the electric potentials measured by the body-surface sensor network. Experimental results show that the proposed P-DL method significantly outperforms existing methods that are commonly used in current practice.
引用
收藏
页码:151 / 166
页数:16
相关论文
共 50 条
  • [21] Physics-constrained deep learning of multi-zone building thermal dynamics
    Drgona, Jan
    Tuor, Aaron R.
    Chandan, Vikas
    Vrabie, Draguna L.
    ENERGY AND BUILDINGS, 2021, 243
  • [22] Deep autoencoders for physics-constrained data-driven nonlinear materials modeling
    He, Xiaolong
    He, Qizhi
    Chen, Jiun-Shyan
    COMPUTER METHODS IN APPLIED MECHANICS AND ENGINEERING, 2021, 385
  • [23] Discovery the inverse variational problems from noisy data by physics-constrained machine learning
    Hongbo Qu
    Hongchen Liu
    Shuang Jiang
    Jiabin Wang
    Yonghong Hou
    Applied Intelligence, 2023, 53 : 11229 - 11240
  • [24] Physics-Constrained Vulnerability Assessment of Deep Reinforcement Learning-Based SCOPF
    Zeng, Lanting
    Sun, Mingyang
    Wan, Xu
    Zhang, Zhenyong
    Deng, Ruilong
    Xu, Yan
    IEEE TRANSACTIONS ON POWER SYSTEMS, 2023, 38 (03) : 2690 - 2704
  • [25] Data-Driven Electrostatics Analysis based on Physics-Constrained Deep learning
    Jin, Wentian
    Peng, Shaoyi
    Tan, Sheldon X-D
    PROCEEDINGS OF THE 2021 DESIGN, AUTOMATION & TEST IN EUROPE CONFERENCE & EXHIBITION (DATE 2021), 2021, : 1382 - 1387
  • [26] Discovery the inverse variational problems from noisy data by physics-constrained machine learning
    Qu, Hongbo
    Liu, Hongchen
    Jiang, Shuang
    Wang, Jiabin
    Hou, Yonghong
    APPLIED INTELLIGENCE, 2023, 53 (09) : 11229 - 11240
  • [27] Physics-constrained deep learning for high-dimensional surrogate modeling and uncertainty quantification without labeled data
    Zhu, Yinhao
    Zabaras, Nicholas
    Koutsourelakis, Phaedon-Stelios
    Perdikaris, Paris
    JOURNAL OF COMPUTATIONAL PHYSICS, 2019, 394 : 56 - 81
  • [28] Bounded nonlinear forecasts of partially observed geophysical systems with physics-constrained deep learning
    Ouala, Said
    Brunton, Steven L.
    Chapron, Bertrand
    Pascual, Ananda
    Collard, Fabrice
    Gaultier, Lucile
    Fablet, Ronan
    PHYSICA D-NONLINEAR PHENOMENA, 2023, 446
  • [29] Enhanced physics-constrained deep neural networks for modeling vanadium redox flow battery
    He, QiZhi
    Fu, Yucheng
    Stinis, Panos
    Tartakovsky, Alexandre
    JOURNAL OF POWER SOURCES, 2022, 542
  • [30] Deep Dynamics: Vehicle Dynamics Modeling With a Physics-Constrained Neural Network for Autonomous Racing
    Chrosniak, John
    Ning, Jingyun
    Behl, Madhur
    IEEE ROBOTICS AND AUTOMATION LETTERS, 2024, 9 (06) : 5292 - 5297