Litcius/Paper detail

Synthetic CT Generation of the Pelvis in Patients With Cervical Cancer: A Single Input Approach Using Generative Adversarial Network

Atallah Baydoun, Ke Xu, Jin Uk Heo, Huan Yang, Feifei Zhou, Latoya A. Bethell, Elisha Fredman, Rodney J. Ellis, Tarun K. Podder, Melanie Traughber, Raj Mohan Paspulati, Pengjiang Qian, Bryan Traughber, Raymond F. Muzic

2021IEEE Access30 citationsDOIOpen Access PDF

Abstract

F-labeled 2-fluoro-2-deoxy-D-glucose (FDG) positron emission tomography (PET), magnetic resonance (MR), and computed tomography (CT) images. Thereafter, images are co-registered to derive electron density attributes required for FDG-PET attenuation correction and radiation therapy planning. Nevertheless, this traditional approach is subject to MR-CT registration defects, expands treatment expenses, and increases the patient's radiation exposure. To overcome these disadvantages, we propose a new framework for cross-modality image synthesis which we apply on MR-CT image translation for cervical cancer diagnosis and treatment. The framework is based on a conditional generative adversarial network (cGAN) and illustrates a novel tactic that addresses, simplistically but efficiently, the paradigm of vanishing gradient vs. feature extraction in deep learning. Its contributions are summarized as follows: 1) The approach -termed sU-cGAN-uses, for the first time, a shallow U-Net (sU-Net) with an encoder/decoder depth of 2 as generator; 2) sU-cGAN's input is the same MR sequence that is used for radiological diagnosis, i.e. T2-weighted, Turbo Spin Echo Single Shot (TSE-SSH) MR images; 3) Despite limited training data and a single input channel approach, sU-cGAN outperforms other state of the art deep learning methods and enables accurate synthetic CT (sCT) generation. In conclusion, the suggested framework should be studied further in the clinical settings. Moreover, the sU-Net model is worth exploring in other computer vision tasks.

Topics & Concepts

Computer scienceAdversarial systemGenerative adversarial networkArtificial intelligenceGenerative grammarImage (mathematics)Radiomics and Machine Learning in Medical ImagingAI in cancer detectionGenerative Adversarial Networks and Image Synthesis