Decoding intra-tumoral spatial heterogeneity on radiological images using the Hilbert curve.
Lu WangNan XuJiangdian SongPublished in: Insights into imaging (2021)
Our study indicates that Hilbert curve-based spatial correspondence mapping is promising for decoding intra-tumoral spatial heterogeneity of partial or whole tumor samples on radiological images. This spatial-locality-preserving approach for voxel expansion enables existing radiomics and convolution neural networks to filter structured and spatially correlated high-dimensional intra-tumoral heterogeneity.