| Literature DB >> 31551645 |
Jacob C Reinhold1, Blake E Dewey1,2, Aaron Carass1,3, Jerry L Prince1,3.
Abstract
Image synthesis learns a transformation from the intensity features of an input image to yield a different tissue contrast of the output image. This process has been shown to have application in many medical image analysis tasks including imputation, registration, and segmentation. To carry out synthesis, the intensities of the input images are typically scaled-i.e., normalized-both in training to learn the transformation and in testing when applying the transformation, but it is not presently known what type of input scaling is optimal. In this paper, we consider seven different intensity normalization algorithms and three different synthesis methods to evaluate the impact of normalization. Our experiments demonstrate that intensity normalization as a preprocessing step improves the synthesis results across all investigated synthesis algorithms. Furthermore, we show evidence that suggests intensity normalization is vital for successful deep learning-based MR image synthesis.Entities:
Keywords: brain MRI; image synthesis; intensity normalization
Year: 2019 PMID: 31551645 PMCID: PMC6758567 DOI: 10.1117/12.2513089
Source DB: PubMed Journal: Proc SPIE Int Soc Opt Eng ISSN: 0277-786X