TY - GEN
T1 - Contactless Electrical Impedance Tomography with Deep Learning for Lung Monitoring
T2 - 2024 IEEE Sensors, SENSORS 2024
AU - Guo, Yuxi
AU - Soleimani, Manuchehr
AU - Zhang, Maomao
PY - 2024/12/17
Y1 - 2024/12/17
N2 - This study proposes the application of contactless electrical impedance tomography (CEIT) for lung imaging, which is a crucial tool for respiratory disease diagnosis and monitoring. By employing the contactless measurement approach, CEIT not only avoids the contact impedance of traditional EIT but also has the potential to reduce discomfort for users, such as avoiding pressure on the chest caused by traditional EIT electrode belts. This study designed a phantom experiment to investigate the feasibility of CEIT in monitoring lung respiration. The deformations of the lung simulators are monitored through the difference in magnitude and phase angle of the measured impedance data. An image reconstruction algorithm combining the Landweber iteration and neural network was proposed. The method comprehensively utilized impedance magnitude and phase angle information, significantly improving the quality of CEIT's image reconstruction. With the proposed image reconstruction method, our CEIT can effectively achieve ventilation monitoring. It is a significant advancement for CEIT in the field of lung monitoring.
AB - This study proposes the application of contactless electrical impedance tomography (CEIT) for lung imaging, which is a crucial tool for respiratory disease diagnosis and monitoring. By employing the contactless measurement approach, CEIT not only avoids the contact impedance of traditional EIT but also has the potential to reduce discomfort for users, such as avoiding pressure on the chest caused by traditional EIT electrode belts. This study designed a phantom experiment to investigate the feasibility of CEIT in monitoring lung respiration. The deformations of the lung simulators are monitored through the difference in magnitude and phase angle of the measured impedance data. An image reconstruction algorithm combining the Landweber iteration and neural network was proposed. The method comprehensively utilized impedance magnitude and phase angle information, significantly improving the quality of CEIT's image reconstruction. With the proposed image reconstruction method, our CEIT can effectively achieve ventilation monitoring. It is a significant advancement for CEIT in the field of lung monitoring.
KW - contactless impedance tomography
KW - impedance electrical tomography
KW - lung monitoring
UR - http://www.scopus.com/inward/record.url?scp=85215287513&partnerID=8YFLogxK
U2 - 10.1109/SENSORS60989.2024.10784949
DO - 10.1109/SENSORS60989.2024.10784949
M3 - Chapter in a published conference proceeding
AN - SCOPUS:85215287513
T3 - Proceedings of IEEE Sensors
BT - 2024 IEEE Sensors, SENSORS 2024 - Conference Proceedings
PB - IEEE
CY - U. S. A.
Y2 - 20 October 2024 through 23 October 2024
ER -