Deep neural network models for cell type prediction based on single-cell Hi-C data.
Bing ZhouQuanzhong LiuMeili WangHao WuPublished in: BMC genomics (2024)
SCANN enhances the training speed and requires fewer resources for predicting cell types. In addition, when the number of cells in different cell types was extremely unbalanced, SCANN has higher stability and flexibility in solving cell classification and cell type prediction using the single-cell Hi-C data. This predication method can assist biologists to study the differences in the chromosome structure of cells between different cell types.