Lo, Kuang ChengKuang ChengLoLin, Cheng WeiCheng WeiLinLee, Hsin YingHsin YingLeeHsu, HaoHaoHsuWINSTON HSUTUNG-HUNG SUChen, Shih YuShih YuChenYUNG-MING JENG2023-10-262023-10-262023-01-01978166547358319457928https://scholars.lib.ntu.edu.tw/handle/123456789/636596Cellular segmentation is a fundamental prerequisite to many biological analyses. With the development of multiplexed imaging technologies, the need for accurately segmenting individual cells has significantly increased in recent years. However, current deep learning methods cannot deal with staining markers in an arbitrary order or different numbers. Moreover, acquiring pixel-level annotation is incredibly time-consuming in high-dimensional images. To tackle these issues, we incorporate pathology knowledge into our model and present a novel self-training framework. Concretely, we apply a serial attention mechanism and pooling operation to compress the multi-channel image during the training process. Afterward, the nuclei information guides the self-training in the pseudo-label stage. Experiments demonstrate our method is superior to the existing methods in both qualitative and quantitative results.Cell segmentation | CODEX | deep learning | highly-multiplexed imaging | self-training[SDGs]SDG3Self-Training with High-Dimensional Markers for Cell Instance Segmentationconference paper10.1109/ISBI53787.2023.102308372-s2.0-85172114707https://api.elsevier.com/content/abstract/scopus_id/85172114707