| Record Type: |
Electronic resources
: Monograph/item
|
| Title/Author: |
Foundation models for general medical AI/ edited by Zhongying Deng ... [et al.]. |
| Reminder of title: |
second International Workshop, MedAGI 2024, held in conjunction with MICCAI 2024, Marrakesh, Morocco, October 6, 2024 : proceedings / |
| remainder title: |
MedAGI 2024 |
| other author: |
Deng, Zhongying. |
| corporate name: |
MedAGI (Workshop) |
| Published: |
Cham :Springer Nature Switzerland : : 2025., |
| Description: |
x, 174 p. :ill. (chiefly color), digital ;24 cm. |
| [NT 15003449]: |
FastSAM-3DSlicer: A 3D-Slicer Extension for 3D Volumetric Segment Anything Model with Uncertainty Quantification. -- The Importance of Downstream Networks in Digital Pathology Foundation Models. -- Temporal-spatial Adaptation of Promptable SAM Enhance Accuracy and Generalizability of cine CMR Segmentation. -- Navigating Data Scarcity using Foundation Models: A Benchmark of Few-Shot and Zero-Shot Learning Approaches in Medical Imaging. -- AutoEncoder-Based Feature Transformation with Multiple Foundation Models in Computational Pathology. -- OSATTA: One-Shot Automatic Test Time Augmentation for Domain Adaptation. -- Automating MedSAM by Learning Prompts with Weak Few-Shot Supervision. -- SAT-Morph: Unsupervised Deformable Medical Image Registration using Vision Foundation Models with Anatomically Aware Text Prompt. -- Promptable Counterfactual Diffusion Model for Unified Brain Tumor Segmentation and Generation with MRIs. -- D- Rax: Domain-specific Radiologic assistant leveraging multi-modal data and eXpert model predictions. -- Optimal Prompting in SAM for Few-Shot and Weakly Supervised Medical Image Segmentation. -- UniCrossAdapter: Multimodal Adaptation of CLIP for Radiology Report Generation. -- TUMSyn: A Text-Guided Generalist model for Customized Multimodal MR Image Synthesis. -- SAMU: An Efficient and Promptable Foundation Model for Medical Image Segmentation. -- Anatomical Embedding-Based Training Method for Medical Image Segmentation Foundation Models. -- Boosting Vision-Language Models for Histopathology Classification: Predict all at once. -- MAGDA: Multi-agent guideline-driven diagnostic assistance. |
| Contained By: |
Springer Nature eBook |
| Subject: |
Diagnostic imaging - Congresses. - |
| Online resource: |
https://doi.org/10.1007/978-3-031-73471-7 |
| ISBN: |
9783031734717 |