Litcius/Paper detail

CT Image Harmonization for Enhancing Radiomics Studies

Md. Selim, Jie Zhang, Baowei Fei, Guoqiang Zhang, Jin Chen

20212021 IEEE International Conference on Bioinformatics and Biomedicine (BIBM)13 citationsDOI

Abstract

While remarkable advances have been made in Computed Tomography (CT), most of the existing efforts focus on imaging enhancement while reducing radiation dose. How to normalize CT images acquired using non-standard protocols is vital for decision-making in cross-center large-scale radiomics studies but remains the boundary to explore. We develop a novel GAN-based image standardization algorithm called RadiomicGAN to mitigate the discrepancy caused by using non-standard acquisition protocols. In RadiomicGAN, a pre-trained U-Net has been adopted as part of the generator to learn radiomic feature distributions efficiently, and a novel training approach, called Window Training, has been developed to smoothly transform the pre-trained model to the medical imaging domain. In the experiments, we compared RadiomicGAN with four state-of-the-art CT image standardization approaches on both patient and phantom CT images acquired using three different reconstruction kernels. We objectively evaluated model performance based on more than 1,000 radiomic features. The results show that RadiomicGAN clearly outperforms the compared models. The source code, manual, and sample data are available at https://github.con selim-iitdu/radiomicGAN.

Topics & Concepts

Computer scienceStandardizationArtificial intelligenceMedical imagingImaging phantomRadiomicsFeature (linguistics)Code (set theory)Focus (optics)Image registrationComputer visionPattern recognition (psychology)Image (mathematics)Nuclear medicineSet (abstract data type)MedicineOperating systemProgramming languagePhysicsPhilosophyLinguisticsOpticsRadiomics and Machine Learning in Medical ImagingMedical Imaging Techniques and ApplicationsAI in cancer detection