Cosst: Multi-organ segmentation with partially labeled datasets using comprehensive supervisions and self-training
Deep learning models have demonstrated remarkable success in multi-organ segmentation
but typically require large-scale datasets with all organs of interest annotated. However …
but typically require large-scale datasets with all organs of interest annotated. However …
Prompting Vision Foundation Models for Pathology Image Analysis
The rapid increase in cases of non-alcoholic fatty liver disease (NAFLD) in recent years has
raised significant public concern. Accurately identifying tissue alteration regions is crucial for …
raised significant public concern. Accurately identifying tissue alteration regions is crucial for …
HoloHisto: end-to-end gigapixel WSI segmentation with 4K resolution sequential tokenization
In digital pathology, the traditional method for deep learning-based image segmentation
typically involves a two-stage process: initially segmenting high-resolution whole slide …
typically involves a two-stage process: initially segmenting high-resolution whole slide …
PrPSeg: Universal Proposition Learning for Panoramic Renal Pathology Segmentation
Understanding the anatomy of renal pathology is crucial for advancing disease diagnostics
treatment evaluation and clinical research. The complex kidney system comprises various …
treatment evaluation and clinical research. The complex kidney system comprises various …
Stochastic biogeography-based learning improved RIME algorithm: Application to image segmentation of lupus nephritis
B Zheng, Y Chen, C Wang, AA Heidari, L Liu, H Chen… - Cluster …, 2024 - Springer
Lupus nephritis (LN) is the most common symptom of systemic lupus erythematosus,
emphasizing its importance in the field of medicine. The growing frequency of LN has …
emphasizing its importance in the field of medicine. The growing frequency of LN has …
Semi-Supervised Instance Segmentation in Whole Slide Images via Dense Spatial Variability Enhancing
Current whole slide image (WSI) segmentation aims at extracting tumor regions from the
background. Unlike this, segmenting distinct tumor areas (instances) within a WSI driven by …
background. Unlike this, segmenting distinct tumor areas (instances) within a WSI driven by …
MedUniSeg: 2D and 3D Medical Image Segmentation via a Prompt-driven Universal Model
Universal segmentation models offer significant potential in addressing a wide range of
tasks by effectively leveraging discrete annotations. As the scope of tasks and modalities …
tasks by effectively leveraging discrete annotations. As the scope of tasks and modalities …