Table 2.
Study | Dataset | Modality | Applied infant ages | Method |
---|---|---|---|---|
(a) Intensity-based approaches | ||||
(Wei et al., 2017) | 24 infants (leave-two-out validation) | T1w or T2w | 2 W to 12 M, 3 M to 12 M, 6 M to 12 M, 9 M to 12 M | Learning based method using random forest and auto-context |
(Wang et al., 2014c) | 9 infants (leave-one-out validation) | T1w or T2w | 2 W to 6 M, 6 M to 12 M | Sparse learning based method |
(Wu et al., 2015) | 24 infants (leave-one-out validation) | T1w or T2w | 2 W to 12 M, 3 M to 12 M, 6 M to 12 M, 9 M to 12 M | Longitudinal-image-guided correspondence detection |
(b) Segmentation-based approaches | ||||
(Wang et al., 2012a) | 28 infants | T1w, T2w, FA | 2 W, 3 M, 6 M, 9 M, 12 M | Tissue maps based method |
(Shi et al., 2010a) | 10 infants (leave-one-out validation) | T1w and T2w | Neonate, 1 Y, 2 Y | Tissue maps based method |
(Ha et al., 2011) | 10 infants | T1w | Neonate to 2 Y | Tissue maps and geometric descriptors based method |
(c) Hybrid approaches | ||||
(Dong et al., 2017) | 10 infants (leave-two -out validation) | T1w and T2w | 2 W to 12 M, 3 M to 12 M, 6 M to 12 M, 2 W to3 M, 2 W to 6 M, 3 M to 6 M | Joint segmentation and registration |
(W: weeks; M: months; Y: years; GA: gestational age)