Deriving ventilation imaging from 4DCT by deep convolutional neural network
Yuncheng Zhong, Yevgeniy Vinogradskiy, Liyuan Chen, Nick Myziuk,, Richard Castillo, Edward Castillo, Thomas Guerrero, Steve Jiang, and Jing, Wang

TL;DR
This paper introduces a deep convolutional neural network approach to derive lung ventilation images directly from 4DCT scans, eliminating the need for deformable image registration and improving consistency and accuracy.
Contribution
The study presents a novel CNN-based method for ventilation imaging from 4DCT that bypasses traditional registration-based techniques, enhancing reliability.
Findings
Predicted ventilation images closely match label images.
Similarity index and correlation coefficient exceeded 0.88.
Method reduces uncertainty associated with deformable image registration.
Abstract
Purpose: Functional imaging is emerging as an important tool for lung cancer treatment planning and evaluation. Compared with traditional methods such as nuclear medicine ventilation-perfusion (VQ), positron emission tomography (PET), single photon emission computer tomography (SPECT), or magnetic resonance imaging (MRI), which use contrast agents to form 2D or 3D functional images, ventilation imaging obtained from 4DCT lung images is convenient and cost-effective because of its availability during radiation treatment planning. Current methods of obtaining ventilation images from 4DCT lung images involve deformable image registration (DIR) and a density (HU) change-based algorithm (DIR/HU); therefore the resulting ventilation images are sensitive to the selection of DIR algorithms. Methods: We propose a deep convolutional neural network (CNN)-based method to derive the ventilation…
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