Hui Tang, Mehdi Moradi, et al.
ISBI 2017
Deformable registration based multi-atlas segmentation has been successfully applied in a broad range of anatomy segmentation applications. However, the excellent performance comes with a high computational burden due to the requirement for deformable image registration and voxel-wise label fusion. To address this problem, we investigate the role of corrective learning (Wang et al., 2011) in speeding up multi-atlas segmentation. We propose to combine multi-atlas segmentation with corrective learning in a multi-scale analysis fashion for faster speeds. First, multi-atlas segmentation is applied in a low spatial resolution. After resampling the segmentation result back to the native image space, learning-based error correction is applied to correct systematic errors due to performing multi-atlas segmentation in a low spatial resolution. In cardiac CT and brain MR segmentation experiments, we show that applying multi-atlas segmentation in a coarse scale followed by learning-based error correction in the native space can substantially reduce the overall computational cost, with only modest or no sacrificing segmentation accuracy.
Hui Tang, Mehdi Moradi, et al.
ISBI 2017
Hui Tang, Mehdi Moradi, et al.
ISBI 2017
Xi Liang, Suman Sedai, et al.
SPIE Medical Imaging 2015
Ademir Ferreira Da Silva, Juan Nathaniel, et al.
Big Data 2022