MCL Research on Prostate Segmentation
Automatic segmentation of the prostate is a crucial step in the computer-aideddiagnosis of prostate cancer and in treatment planning. Current methods for prostatesegmentation primarily rely on deep learning models with neural networks. However,these models tend to be large and lack transparency, which is essential forphysicians. We proposed a new data-driven 3D prostate segmentation method onMRI named Green U-shaped Learning (GUSL). Different from deep learning basedmethods, GUSL employs a feed-forward system that utilizes successive subspacelearning (SSL).To keep enough detailed information on a dataset with a large image size, wepropose a cascading model in two stages, as shown in Figure 1: (1) segmentation ondownsampled images and (2) segmentation on the cropped patches. GUSL consistsof three main modules, as shown in Figure 2: representation learning, featurelearning, and residual correction. All modules are applied at multiple levels withvarying resolutions. We achieve fine-to-coarse unsupervised representation learning
using cascaded VoxelHop units, as well as coarse-to-fine segmentation throughfeature learning and residual correction. GUSL maintains a very competitive standingperformance-wise with other DL baseline models and keeps a smaller model sizeand less complexity, with transparency for doctors.