Data-driven classification of ventilated lung tissues using electrical impedance tomography

被引:6
|
作者
Gomez-Laberge, Camille [1 ]
Hogan, Matthew J. [2 ]
Elke, Gunnar [3 ]
Weiler, Norbert [3 ]
Frerichs, Inez [3 ]
Adler, Andy [4 ]
机构
[1] Harvard Univ, Sch Med, Childrens Hosp Boston, Dept Anesthesiol Perioperat & Pain Med, Boston, MA 02115 USA
[2] Ottawa Hosp, Res Inst, Neurosci Program, Ottawa, ON K1H 8M5, Canada
[3] Univ Med Ctr Schleswig Holstein, D-24105 Kiel, Germany
[4] Carleton Univ, Dept Syst & Comp Engn, Ottawa, ON K1S 5B6, Canada
关键词
electrical impedance tomography; lung ventilation; pattern recognition; cluster analysis; acute lung injury; RESPIRATORY-DISTRESS-SYNDROME; TIME-SERIES; EIT; FMRI; RECRUITMENT; DERECRUITMENT; ATELECTASIS; ANESTHESIA; MANEUVER; REGIONS;
D O I
10.1088/0967-3334/32/7/S13
中图分类号
Q6 [生物物理学];
学科分类号
071011 ;
摘要
Current methods for identifying ventilated lung regions utilizing electrical impedance tomography images rely on dividing the image into arbitrary regions of interest (ROI), manually delineating ROI, or forming ROI with pixels whose signal properties surpass an arbitrary threshold. In this paper, we propose a novel application of a data-driven classification method to identify ventilated lung ROI based on forming k clusters from pixels with correlated signals. A standard first-order model for lung mechanics is then applied to determine which ROI correspond to ventilated lung tissue. We applied the method in an experimental study of 16 mechanically ventilated swine in the supine position, which underwent changes in positive end-expiratory pressure (PEEP) and fraction of inspired oxygen (FIO2). In each stage of the experimental protocol, the method performed best with k = 4 and consistently identified 3 lung tissue ROI and 1 boundary tissue ROI in 15 of the 16 subjects. When testing for changes from baseline in lung position, tidal volume, and respiratory system compliance, we found that PEEP displaced the ventilated lung region dorsally by 2 cm, decreased tidal volume by 1.3%, and increased the respiratory system compliance time constant by 0.3 s. FIO2 decreased tidal volume by 0.7%. All effects were tested at p < 0.05 with n = 16. These findings suggest that the proposed ROI detection method is robust and sensitive to ventilation dynamics in the experimental setting.
引用
收藏
页数:13
相关论文
共 50 条
  • [31] Data-Driven Fault Classification Using Support Vector Machines
    Jallepalli, Deepthi
    Kakhki, Fatemeh Davoudi
    INTELLIGENT HUMAN SYSTEMS INTEGRATION 2021, 2021, 1322 : 316 - 322
  • [32] Automatic Classification of Data-Driven Respiratory Waveforms Using AI
    Walker, M. D.
    Su, K.
    Wollenweber, S. D.
    Johnsen, R.
    McGowan, D. R.
    EUROPEAN JOURNAL OF NUCLEAR MEDICINE AND MOLECULAR IMAGING, 2020, 47 (SUPPL 1) : S485 - S485
  • [33] Data-Driven Consensus Protocol Classification Using Machine Learning
    Marcozzi, Marco
    Filatovas, Ernestas
    Stripinis, Linas
    Paulavicius, Remigijus
    MATHEMATICS, 2024, 12 (02)
  • [34] Variation of poorly ventilated lung units (silent spaces) measured by electrical impedance tomography to dynamically assess recruitment
    Savino Spadaro
    Tommaso Mauri
    Stephan H. Böhm
    Gaetano Scaramuzzo
    Cecilia Turrini
    Andreas D. Waldmann
    Riccardo Ragazzi
    Antonio Pesenti
    Carlo Alberto Volta
    Critical Care, 22
  • [35] Variation of poorly ventilated lung units (silent spaces) measured by electrical impedance tomography to dynamically assess recruitment
    Spadaro, Savino
    Mauri, Tommaso
    Boehm, Stephan H.
    Scaramuzzo, Gaetano
    Turrini, Cecilia
    Waldmann, Andreas D.
    Ragazzi, Riccardo
    Pesenti, Antonio
    Volta, Carlo Alberto
    CRITICAL CARE, 2018, 22
  • [36] A feasibility study of magnetic resonance driven electrical impedance tomography using a phantom
    Wan, Yuqing
    Negishi, Michiro
    Constable, R. Todd
    PHYSIOLOGICAL MEASUREMENT, 2013, 34 (06) : 623 - 644
  • [37] Tactile Sensing Using Machine Learning-Driven Electrical Impedance Tomography
    Husain, Zainab
    Madjid, Nadya Abdel
    Liatsis, Panos
    IEEE SENSORS JOURNAL, 2021, 21 (10) : 11628 - 11642
  • [38] A logical approach to data-driven classification
    Osswald, R
    Petersen, W
    KI 2003: ADVANCES IN ARTIFICIAL INTELLIGENCE, 2003, 2821 : 267 - 281
  • [39] Data-Driven Classification of Screwdriving Operations
    Aronson, Reuben M.
    Bhatia, Ankit
    Jia, Zhenzhong
    Guillame-Bert, Mathieu
    Bourne, David
    Dubrawski, Artur
    Mason, Matthew T.
    2016 INTERNATIONAL SYMPOSIUM ON EXPERIMENTAL ROBOTICS, 2017, 1 : 244 - 253
  • [40] Data-driven signal detection and classification
    Sayeed, AM
    1997 IEEE INTERNATIONAL CONFERENCE ON ACOUSTICS, SPEECH, AND SIGNAL PROCESSING, VOLS I - V: VOL I: PLENARY, EXPERT SUMMARIES, SPECIAL, AUDIO, UNDERWATER ACOUSTICS, VLSI; VOL II: SPEECH PROCESSING; VOL III: SPEECH PROCESSING, DIGITAL SIGNAL PROCESSING; VOL IV: MULTIDIMENSIONAL SIGNAL PROCESSING, NEURAL NETWORKS - VOL V: STATISTICAL SIGNAL AND ARRAY PROCESSING, APPLICATIONS, 1997, : 3697 - 3700