XMorph:基于大语言模型辅助混合深度智能的可解释脑肿瘤分析 / XMorph: Explainable Brain Tumor Analysis Via LLM-Assisted Hybrid Deep Intelligence
1️⃣ 一句话总结
这篇论文提出了一种名为XMorph的可解释且高效的人工智能框架,它通过结合深度学习与大语言模型,不仅能高精度地自动识别三种主要脑肿瘤,还能为医生提供清晰的视觉和文字解释,从而帮助解决AI医疗诊断中常见的‘黑箱’和计算效率问题。
Deep learning has significantly advanced automated brain tumor diagnosis, yet clinical adoption remains limited by interpretability and computational constraints. Conventional models often act as opaque ''black boxes'' and fail to quantify the complex, irregular tumor boundaries that characterize malignant growth. To address these challenges, we present XMorph, an explainable and computationally efficient framework for fine-grained classification of three prominent brain tumor types: glioma, meningioma, and pituitary tumors. We propose an Information-Weighted Boundary Normalization (IWBN) mechanism that emphasizes diagnostically relevant boundary regions alongside nonlinear chaotic and clinically validated features, enabling a richer morphological representation of tumor growth. A dual-channel explainable AI module combines GradCAM++ visual cues with LLM-generated textual rationales, translating model reasoning into clinically interpretable insights. The proposed framework achieves a classification accuracy of 96.0%, demonstrating that explainability and high performance can co-exist in AI-based medical imaging systems. The source code and materials for XMorph are all publicly available at: this https URL.
XMorph:基于大语言模型辅助混合深度智能的可解释脑肿瘤分析 / XMorph: Explainable Brain Tumor Analysis Via LLM-Assisted Hybrid Deep Intelligence
这篇论文提出了一种名为XMorph的可解释且高效的人工智能框架,它通过结合深度学习与大语言模型,不仅能高精度地自动识别三种主要脑肿瘤,还能为医生提供清晰的视觉和文字解释,从而帮助解决AI医疗诊断中常见的‘黑箱’和计算效率问题。
源自 arXiv: 2602.21178