📄 论文总结
基于指令引导的胸部X光病灶分割及自动生成的大规模数据集 / Instruction-Guided Lesion Segmentation for Chest X-rays with Automatically Generated Large-Scale Dataset
1️⃣ 一句话总结
这项研究提出了一个名为指令引导病灶分割的新方法,通过自动构建的大规模数据集和训练模型,使医生仅需简单指令即可在胸部X光片中精确分割多种病灶,并生成文字解释,大大提升了医疗影像分析的效率和实用性。
The applicability of current lesion segmentation models for chest X-rays (CXRs) has been limited both by a small number of target labels and the reliance on long, detailed expert-level text inputs, creating a barrier to practical use. To address these limitations, we introduce a new paradigm: instruction-guided lesion segmentation (ILS), which is designed to segment diverse lesion types based on simple, user-friendly instructions. Under this paradigm, we construct MIMIC-ILS, the first large-scale instruction-answer dataset for CXR lesion segmentation, using our fully automated multimodal pipeline that generates annotations from chest X-ray images and their corresponding reports. MIMIC-ILS contains 1.1M instruction-answer pairs derived from 192K images and 91K unique segmentation masks, covering seven major lesion types. To empirically demonstrate its utility, we introduce ROSALIA, a vision-language model fine-tuned on MIMIC-ILS. ROSALIA can segment diverse lesions and provide textual explanations in response to user instructions. The model achieves high segmentation and textual accuracy in our newly proposed task, highlighting the effectiveness of our pipeline and the value of MIMIC-ILS as a foundational resource for pixel-level CXR lesion grounding.
基于指令引导的胸部X光病灶分割及自动生成的大规模数据集 / Instruction-Guided Lesion Segmentation for Chest X-rays with Automatically Generated Large-Scale Dataset
这项研究提出了一个名为指令引导病灶分割的新方法,通过自动构建的大规模数据集和训练模型,使医生仅需简单指令即可在胸部X光片中精确分割多种病灶,并生成文字解释,大大提升了医疗影像分析的效率和实用性。