Segment anything model for medical image segmentation: Current applications and future directions
Due to the inherent flexibility of prompting, foundation models have emerged as the
predominant force in the fields of natural language processing and computer vision. The …
predominant force in the fields of natural language processing and computer vision. The …
Sam-assisted remote sensing imagery semantic segmentation with object and boundary constraints
Semantic segmentation of remote sensing imagery plays a pivotal role in extracting precise
information for diverse downstream applications. Recent development of the segment …
information for diverse downstream applications. Recent development of the segment …
Foundation model for advancing healthcare: Challenges, opportunities, and future directions
Foundation model, which is pre-trained on broad data and is able to adapt to a wide range
of tasks, is advancing healthcare. It promotes the development of healthcare artificial …
of tasks, is advancing healthcare. It promotes the development of healthcare artificial …
3dsam-adapter: Holistic adaptation of sam from 2d to 3d for promptable tumor segmentation
Despite that the segment anything model (SAM) achieved impressive results on general-
purpose semantic segmentation with strong generalization ability on daily images, its …
purpose semantic segmentation with strong generalization ability on daily images, its …
Scribformer: Transformer makes cnn work better for scribble-based medical image segmentation
Most recent scribble-supervised segmentation methods commonly adopt a CNN framework
with an encoder-decoder architecture. Despite its multiple benefits, this framework generally …
with an encoder-decoder architecture. Despite its multiple benefits, this framework generally …
Continual self-supervised learning: Towards universal multi-modal medical data representation learning
Self-supervised learning (SSL) is an efficient pre-training method for medical image
analysis. However current research is mostly confined to certain modalities consuming …
analysis. However current research is mostly confined to certain modalities consuming …
Semantics and instance interactive learning for labeling and segmentation of vertebrae in CT images
Automatically labeling and segmenting vertebrae in 3D CT images compose a complex
multi-task problem. Current methods progressively conduct vertebra labeling and semantic …
multi-task problem. Current methods progressively conduct vertebra labeling and semantic …
Large foundation model for cancer segmentation
Recently, large language models such as ChatGPT have made huge strides in
understanding and generating human-like text and have demonstrated considerable …
understanding and generating human-like text and have demonstrated considerable …
[HTML][HTML] A 25-Year Retrospective of the Use of AI for Diagnosing Acute Stroke: Systematic Review
Z Wang, W Yang, Z Li, Z Rong, X Wang, J Han… - Journal of Medical …, 2024 - jmir.org
Background Stroke is a leading cause of death and disability worldwide. Rapid and accurate
diagnosis is crucial for minimizing brain damage and optimizing treatment plans. Objective …
diagnosis is crucial for minimizing brain damage and optimizing treatment plans. Objective …
[HTML][HTML] Segmentation Network for Multi-Shape Tea Bud Leaves Based on Attention and Path Feature Aggregation
T Chen, H Li, J Lv, J Chen, W Wu - Agriculture, 2024 - mdpi.com
Accurately detecting tea bud leaves is crucial for the automation of tea picking robots.
However, challenges arise due to tea stem occlusion and overlapping of buds and leaves …
However, challenges arise due to tea stem occlusion and overlapping of buds and leaves …