CoRe-BT:一个用于鲁棒脑肿瘤分型的多模态放射学-病理学-文本基准数据集 / CoRe-BT: A Multimodal Radiology-Pathology-Text Benchmark for Robust Brain Tumor Typing
1️⃣ 一句话总结
这篇论文提出了一个名为CoRe-BT的多模态医学数据集,它整合了脑部核磁共振影像、病理切片和病理报告,旨在帮助开发即使在部分数据缺失的实际情况中,也能准确进行脑肿瘤分型的鲁棒人工智能模型。
Accurate brain tumor typing requires integrating heterogeneous clinical evidence, including magnetic resonance imaging (MRI), histopathology, and pathology reports, which are often incomplete at the time of diagnosis. We introduce CoRe-BT, a cross-modal radiology-pathology-text benchmark for brain tumor typing, designed to study robust multimodal learning under missing modality conditions. The dataset comprises 310 patients with multi-sequence brain MRI (T1, T1c, T2, FLAIR), including 95 cases with paired H&E-stained whole-slide pathology images and pathology reports. All cases are annotated with tumor type and grade, and MRI volumes include expert-annotated tumor masks, enabling both region-aware modeling and auxiliary learning tasks. Tumors are categorized into six clinically relevant classes capturing the heterogeneity of common and rare glioma subtypes. We evaluate tumor typing under variable modality availability by comparing MRI-only models with multimodal approaches that incorporate pathology information when present. Baseline experiments demonstrate the feasibility of multimodal fusion and highlight complementary modality contributions across clinically relevant typing tasks. CoRe-BT provides a grounded testbed for advancing multimodal glioma typing and representation learning in realistic scenarios with incomplete clinical data.
CoRe-BT:一个用于鲁棒脑肿瘤分型的多模态放射学-病理学-文本基准数据集 / CoRe-BT: A Multimodal Radiology-Pathology-Text Benchmark for Robust Brain Tumor Typing
这篇论文提出了一个名为CoRe-BT的多模态医学数据集,它整合了脑部核磁共振影像、病理切片和病理报告,旨在帮助开发即使在部分数据缺失的实际情况中,也能准确进行脑肿瘤分型的鲁棒人工智能模型。
源自 arXiv: 2603.03618