Please use this identifier to cite or link to this item: http://hdl.handle.net/10397/90813
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Title: Investigation of a novel deep learning-based computed tomography perfusion mapping framework for functional lung avoidance radiotherapy
Authors: Ren, G 
Lam, SK 
Zhang, J 
Xiao, H 
Cheung, ALY 
Ho, WY
Qin, J 
Cai, J 
Issue Date: Mar-2021
Source: Frontiers in oncology, Mar. 2021, v. 11, 644703
Abstract: Functional lung avoidance radiation therapy aims to minimize dose delivery to the normal lung tissue while favoring dose deposition in the defective lung tissue based on the regional function information. However, the clinical acquisition of pulmonary functional images is resource-demanding, inconvenient, and technically challenging. This study aims to investigate the deep learning-based lung functional image synthesis from the CT domain. Forty-two pulmonary macro-aggregated albumin SPECT/CT perfusion scans were retrospectively collected from the hospital. A deep learning-based framework (including image preparation, image processing, and proposed convolutional neural network) was adopted to extract features from 3D CT images and synthesize perfusion as estimations of regional lung function. Ablation experiments were performed to assess the effects of each framework component by removing each element of the framework and analyzing the testing performances. Major results showed that the removal of the CT contrast enhancement component in the image processing resulted in the largest drop in framework performance, compared to the optimal performance (~12%). In the CNN part, all the three components (residual module, ROI attention, and skip attention) were approximately equally important to the framework performance; removing one of them resulted in a 3–5% decline in performance. The proposed CNN improved ~4% overall performance and ~350% computational efficiency, compared to the U-Net model. The deep convolutional neural network, in conjunction with image processing for feature enhancement, is capable of feature extraction from CT images for pulmonary perfusion synthesis. In the proposed framework, image processing, especially CT contrast enhancement, plays a crucial role in the perfusion synthesis. This CTPM framework provides insights for relevant research studies in the future and enables other researchers to leverage for the development of optimized CNN models for functional lung avoidance radiation therapy.
Keywords: CT based image analysis
Deep learning
Functional lung avoidance radiation therapy
Lung function imaging
Perfusion imaging
Perfusion synthesis
Publisher: Frontiers Research Foundation
Journal: Frontiers in oncology 
EISSN: 2234-943X
DOI: 10.3389/fonc.2021.644703
Rights: Copyright © 2021 Ren, Lam, Zhang, Xiao, Cheung, Ho, Qin and Cai. This is an openaccess article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
The following publication Ren G, Lam S-k, Zhang J, Xiao H, Cheung AL-y, Ho W-y, Qin J and Cai J (2021) Investigation of a Novel Deep Learning-Based Computed Tomography Perfusion Mapping Framework for Functional Lung Avoidance Radiotherapy. Front. Oncol. 11:644703 is available at https://doi.org/10.3389/fonc.2021.644703
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