Pulmonary electrical impedance tomography based on deep recurrent neural networks
Pulmonary electrical impedance tomography based on deep recurrent neural networks
Electrical impedance tomography (EIT) is a non-invasive functional imaging technology. In order to enhance the quality of lung EIT images, novel algorithms, namely LSTM-LSTM, LSTM-BiLSTM, BiLSTM-LSTM, and BiLSTM-BiLSTM, leveraging LSTM or BiLSTM networks, were developed. Simulation results demonstrate that the optimized deep recurrent neural network significantly enhanced the quality of the reconstructed images. Specifically, the correlation coefficients of the LSTM-LSTM and the LSTM-BiLSTM algorithms exhibited maximum increases of 27.5% and 25.4% over the LSTM algorithm, respectively. Moreover, in comparison to the BiLSTM algorithm, the correlation coefficients of the BiLSTM-LSTM and BiLSTM-BiLSTM algorithms increased by 11.7% and 13.4%, respectively. Overall, the quality of EIT images showed notable enhancement. This research offers a valuable approach for enhancing EIT image quality and presents a novel application of LSTM networks in EIT technology.
Zhenzhong Song、Jianping Li、Jun Zhang、Hanyun Wen、Suqin Zhang、Wei Jiang、Xingxing Zhou
医学研究方法计算技术、计算机技术
Zhenzhong Song,Jianping Li,Jun Zhang,Hanyun Wen,Suqin Zhang,Wei Jiang,Xingxing Zhou.Pulmonary electrical impedance tomography based on deep recurrent neural networks[EB/OL].(2025-04-20)[2025-05-02].https://arxiv.org/abs/2504.14521.点此复制
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