论文ICLR 2026 Poster2026 年trustworthy medical AI 融合像素与基因:计算病理中的空间感知学习
ICLR 2026 Poster accepted paper at ICLR 2026. Recent years have witnessed remarkable progress in multimodal learning within computational pathology. Existing models primarily rely on vision and language modalities; however, language alone lacks molecular specificity and offers limited pathological supervision, leading to representational bottlenecks. In this paper, we propose STAMP, a Spatial Transcriptomics-Augmented Multimodal Pathology representation learning framework that integrates spatially-resolved gene expression profiles to enable molecule-guided joint embedding of pathology images and transcriptomic data. Our study shows that self-supervised, gene-guided training provides a robust and task-agnostic signal for learning pathology image representations. Code/project link: https://github.com/Hanminghao/STAMP
论文ICLR 2026 Poster2026 年surgical/interventional AI HFSTI-Net:视频息肉分割的层级频率-空间-时间交互
ICLR 2026 Poster accepted paper at ICLR 2026. Automatic video polyp segmentation (VPS) is crucial for preventing and treating colorectal cancer by ensuring accurate identification of polyps in colonoscopy examinations. However, its clinical application is hampered by two key challenges: shape collapse, which compromises structural integrity, and episodic amnesia, which causes instability in challenging video sequences. To address these challenges, we present a novel video segmentation network, \emph{HFSTI-Net}, which integrates global perception with spatiotemporal consistency in spatial, temporal, and frequency domains. Specifically, to address shape collapse under low contrast or visual ambiguity, we design a Hierarchical Frequency-spatial Interaction (HFSI) module that fuses spatial and frequency cues for fine-grained boundary localization. Code/project link: https://github.com/Yuanqin-He/HFSTI-Net
论文ICLR 2026 Poster2026 年clinical NLP 用于胸部 X 光图像的结构化、标注式、定位化 VQA 数据集:含完整句答案与场景图
ICLR 2026 Poster accepted paper at ICLR 2026. Visual Question Answering (VQA) enables targeted and context-dependent analysis of medical images, such as chest X-rays (CXRs). However, existing VQA datasets for CXRs are typically constrained by simplistic and brief answer formats, lacking localization annotations (e.g., bounding boxes) and structured tags (e.g., region or radiological finding/disease tags). To address these limitations, we introduce MIMIC-Ext-CXR-QBA (abbr. CXR-QBA), a large-scale CXR VQA dataset derived from MIMIC-CXR, comprising 42 million QA-pairs with multi-granular, multi-part answers, detailed bounding boxes, and structured tags. Code/project link: https://github.com/philip-mueller/mimic-ext-cxr-qba/
论文ICLR 2026 Poster2026 年trustworthy medical AI 超越分类准确率:Neural-MedBench 与深层推理基准的必要性
ICLR 2026 Poster accepted paper at ICLR 2026. Epilepsy affects over 50 million people worldwide, and one-third of patients suffer drug-resistant seizures where surgery offers the best chance of seizure freedom. Accurate localization of the epileptogenic zone (EZ) relies on intracranial EEG (iEEG). Clinical workflows, however, remain constrained by labor-intensive manual review. At the same time, existing data-driven approaches are typically developed on single-center datasets that are inconsistent in format and metadata, lack standardized benchmarks, and rarely release pathological event annotations, creating barriers to reproducibility, cross-center validation, and clinical relevance. Code/project link: https://omni-ieeg.github.io/omni-ieeg/; https://github.com/Omni-iEEG/Omni-iEEG
数据资源retinal fundus photographs with glaucoma and structure annotationsophthalmology fundus image challenge datasetREFUGE challenge dataset; official splits described on Grand Challenge申请访问 REFUGE 视网膜眼底青光眼挑战数据集
REFUGE is a retinal fundus imaging challenge dataset for glaucoma assessment. It supports glaucoma classification, optic disc and cup segmentation, fovea localization, and fair comparison of ophthalmology AI methods on color fundus photographs.
数据资源chest radiographs with pneumonia/lung opacity annotationschest X-ray pneumonia detection challenge datasetRSNA 2018 AI image challenge dataset开放访问 RSNA 肺炎检测挑战数据集
The RSNA Pneumonia Detection Challenge dataset is a chest radiograph benchmark for detecting pneumonia-related lung opacities. It supports object detection, chest X-ray classification, localization, and radiology AI evaluation under a competition framework.
数据资源chest radiographs with radiologist annotationschest X-ray detection and classification datasetVinDr-CXR release on PhysioNet; version 1.0.0开放访问 VinDr-CXR:越南胸部 X 光数据集
VinDr-CXR is a chest X-ray dataset with radiologist annotations from Vietnamese hospitals. It supports abnormality classification, lesion localization, radiology object detection, and robustness studies across clinical sites and populations.