4.6 Article

Improved Electrical Impedance Tomography Reconstruction via a Bayesian Approach With an Anatomical Statistical Shape Model

Journal

IEEE TRANSACTIONS ON BIOMEDICAL ENGINEERING
Volume 70, Issue 8, Pages 2486-2495

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TBME.2023.3250650

Keywords

Electrical impedance tomography; Bayesian inverse problem; statistical shape model; structural prior; mechanical ventilation

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This study developed a statistical shape model (SSM) to enhance the accuracy and reliability of electrical impedance tomography (EIT) reconstruction of lung ventilation. However, using patient-specific structural information did not show conclusive improvement. This research bears significance in the field of ventilation monitoring using EIT.
Objective: electrical impedance tomography (EIT) is a promising technique for rapid and continuous bedside monitoring of lung function. Accurate and reliable EIT reconstruction of ventilation requires patient-specific shape information. However, this shape information is often not available and current EIT reconstruction methods typically have limited spatial fidelity. This study sought to develop a statistical shape model (SSM) of the torso and lungs and evaluate whether patient-specific predictions of torso and lung shape could enhance EIT reconstructions in a Bayesian framework. Methods: torso and lung finite element surface meshes were fitted to computed tomography data from 81 participants, and a SSM was generated using principal component analysis and regression analyses. Predicted shapes were implemented in a Bayesian EIT framework and were quantitatively compared to generic reconstruction methods. Results: Five principal shape modes explained 38% of the cohort variance in lung and torso geometry, and regression analysis yielded nine total anthropometrics and pulmonary function metrics that significantly predicted these shape modes. Incorporation of SSM-derived structural information enhanced the accuracy and reliability of the EIT reconstruction as compared to generic reconstructions, demonstrated by reduced relative error, total variation, and Mahalanobis distance. Conclusion: As compared to deterministic approaches, Bayesian EIT afforded more reliable quantitative and visual interpretation of the reconstructed ventilation distribution. However, no conclusive improvement of reconstruction performance using patient specific structural information was observed as compared to the mean shape of the SSM. Significance: The presented Bayesian framework builds towards a more accurate and reliable method for ventilation monitoring via EIT.

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