Deep learning-based harmonization of CT reconstruction kernels towards improved clinical task performance.
Dongyang DuWenbing LvJieqin LvXiaohui ChenHubing WuArman RahmimLijun LuPublished in: European radiology (2022)
• The soft (B30f) and sharp (B70f) kernels strongly affect radiomics reproducibility and generalizability. • The convolutional neural network (CNN) harmonization methods performed better than location-scale (ComBat and centering-scaling) and matrix factorization harmonization methods (based on singular value decomposition (SVD) and independent component analysis (ICA)) in both clinical tasks. • The CNN harmonization methods improve feature reproducibility not only between specific kernels (B30f and B70f) from the same scanner, but also between unobserved kernels from different scanners of different vendors.