Author/Authors :
Yang, Fan School of Biology & Engineering - Guizhou Medical University - Guiyang - Guizhou Province, China , He, Yan School of Biology & Engineering - Guizhou Medical University - Guiyang - Guizhou Province, China , Hussain, Mubashir School of Biological Science and Medical Engineering - Southeast University - Nanjing, Jiangsu Province, China , Xie, Hong Department of Medical Imaging - The Affiliated Hospital of Guizhou Medical University - Guiyang - Guizhou Province, China , Lei, Pinggui Department of Medical Imaging - The Affiliated Hospital of Guizhou Medical University - Guiyang - Guizhou Province, China
Abstract :
Free-breathing cardiac magnetic resonance (CMR) imaging has short examination time with high reproducibility. Detection of the
end-diastole and the end-systole frames of the free-breathing cardiac magnetic resonance, supplemented by visual identification,
is time consuming and laborious. We propose a novel method for automatic identification of both the end-diastole and the endsystole frames, in the free-breathing CMR imaging. The proposed technique utilizes the convolutional neural network to locate
the left ventricle and to obtain the end-diastole and the end-systole frames from the respiratory motion signal. The proposed
procedure works successfully on our free-breathing CMR data, and the results demonstrate a high degree of accuracy and stability.
Convolutional neural network improves the postprocessing efficiency greatly and facilitates the clinical application of the freebreathing CMR imaging.
Keywords :
End-Diastole , Magnetic , Free-Breathing , End-Systole