Author/Authors :
Lee, Kyounghun Yonsei University, Republic of Korea , Yoo, Minha National Institute for Mathematical Science - Daejeon, Republic of Korea , Jargal, Ariungerel Department of Computational Science and Engineering - Yonsei University, Republic of Korea , Kwon, Hyeuknam Yonsei University - Wonju, Republic of Korea
Abstract :
This paper proposes a deep learning method based on electrical impedance tomography (EIT) to estimate the thickness of
abdominal subcutaneous fat. EIT for evaluating the thickness of abdominal subcutaneous fat is an absolute imaging problem
that aims at reconstructing conductivity distributions from current-to-voltage data. Existing reconstruction methods based on
EIT have difficulty handling the inherent drawbacks of strong nonlinearity and severe ill-posedness of EIT; hence, absolute
imaging may not be possible using linearized methods. To handle nonlinearity and ill-posedness, we propose a deep learning
method that finds useful solutions within a restricted admissible set by accounting for prior information regarding abdominal
anatomy. We determined that a specially designed training dataset used during the deep learning process significantly reduces
ill-posedness in the absolute EIT problem. In the preprocessing stage, we normalize current-voltage data to alleviate the effects
of electrodeposition and body geometry by exploiting knowledge regarding electrode positions and body geometry. The
performance of the proposed method is demonstrated through numerical simulations and phantom experiments using a 10
channel EIT system and a human-like domain.