Paper List
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A Unified Variational Principle for Branching Transport Networks: Wave Impedance, Viscous Flow, and Tissue Metabolism
This paper solves the core problem of predicting the empirically observed branching exponent (α≈2.7) in mammalian arterial trees, which neither Murray...
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Household Bubbling Strategies for Epidemic Control and Social Connectivity
This paper addresses the core challenge of designing household merging (social bubble) strategies that effectively control epidemic risk while maximiz...
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Empowering Chemical Structures with Biological Insights for Scalable Phenotypic Virtual Screening
This paper addresses the core challenge of bridging the gap between scalable chemical structure screening and biologically informative but resource-in...
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A mechanical bifurcation constrains the evolution of cell sheet folding in the family Volvocaceae
This paper addresses the core problem of why there is an evolutionary gap in species with intermediate cell numbers (e.g., 256 cells) in Volvocaceae, ...
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Bayesian Inference in Epidemic Modelling: A Beginner’s Guide Illustrated with the SIR Model
This guide addresses the core challenge of estimating uncertain epidemiological parameters (like transmission and recovery rates) from noisy, real-wor...
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Geometric framework for biological evolution
This paper addresses the fundamental challenge of developing a coordinate-independent, geometric description of evolutionary dynamics that bridges gen...
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A multiscale discrete-to-continuum framework for structured population models
This paper addresses the core challenge of systematically deriving uniformly valid continuum approximations from discrete structured population models...
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Whole slide and microscopy image analysis with QuPath and OMERO
使QuPath能够直接分析存储在OMERO服务器中的图像而无需下载整个数据集,克服了大规模研究的本地存储限制。
基于病例相似性搜索的放射学印象多模态检索增强草稿生成
Independent AI Researcher, Austin, Texas, USA
30秒速读
IN SHORT: 通过将印象草稿基于检索到的历史病例,并采用明确引用和基于置信度的拒绝机制,解决放射学报告生成中的幻觉问题。
核心创新
- Methodology Multimodal fusion of CLIP-based image and text embeddings improves retrieval performance from Recall@5=0.633 (image-only) to 0.956 (fusion).
- Methodology Citation-constrained draft generation with explicit case identifiers ensures traceability and reduces unsupported claims.
- Biology Demonstrates that textual impression semantics provide complementary clinical information beyond visual appearance alone for chest X-ray interpretation.
主要结论
- 多模态融合(α=0.5)在临床相关发现上实现了Recall@5=0.956,显著优于仅图像检索(Recall@5=0.633)。
- 部署的系统实现了平均引用覆盖率为0.867,平均top-1检索相似度为0.980,展示了强大的证据基础。
- 基于置信度的拒绝机制通过相似度阈值防止对分布外输入生成报告,增强了临床安全性。
摘要: 随着深度学习和大型语言模型的兴起,自动化放射学报告生成受到越来越多的关注。然而,完全生成式方法经常出现幻觉和缺乏临床基础的问题,限制了其在真实工作流程中的可靠性。本研究提出了一种多模态检索增强生成系统,用于胸部X光印象的基于事实的草稿生成。该系统结合了对比图像-文本嵌入、基于病例的相似性检索和引用约束的草稿生成,以确保与历史放射学报告的事实一致性。使用MIMIC-CXR数据集的精选子集构建了多模态检索数据库。图像嵌入使用CLIP编码器生成,而文本嵌入则从结构化的印象部分提取。使用FAISS索引实现了融合相似性框架,用于可扩展的最近邻检索。检索到的病例用于构建基于事实的提示以生成印象草稿,并通过安全机制强制执行引用覆盖和基于置信度的拒绝。实验结果表明,与仅使用图像的检索相比,多模态融合显著提高了检索性能,在临床相关发现上实现了Recall@5超过0.95。基于事实的草稿生成流程产生了具有明确引用可追溯性的可解释输出,相比传统生成方法提高了可信度。这项工作突显了检索增强多模态系统在可靠临床决策支持和放射学工作流程增强方面的潜力。