Chourib Ikram
Independant Researcher, 75000 Paris, France.
J Imaging. 2025 Aug 21;11(8):282. doi: 10.3390/jimaging11080282.
Accurate and timely detection of brain tumors from magnetic resonance imaging (MRI) scans is critical for improving patient outcomes and informing therapeutic decision-making. However, the complex heterogeneity of tumor morphology, scarcity of annotated medical data, and computational demands of deep learning models present substantial challenges for developing reliable automated diagnostic systems. In this study, we propose a robust and scalable deep learning framework for brain tumor detection and classification, built upon an enhanced YOLO-v11 architecture combined with a two-stage transfer learning strategy. The first stage involves training a base model on a large, diverse MRI dataset. Upon achieving a mean Average Precision (mAP) exceeding 90%, this model is designated as the Brain Tumor Detection Model (BTDM). In the second stage, the BTDM is fine-tuned on a structurally similar but smaller dataset to form Brain Tumor Detection and Segmentation (BTDS), effectively leveraging domain transfer to maintain performance despite limited data. The model is further optimized through domain-specific data augmentation-including geometric transformations-to improve generalization and robustness. Experimental evaluations on publicly available datasets show that the framework achieves high mAP@0.5 scores (up to 93.5% for the BTDM and 91% for BTDS) and consistently outperforms existing state-of-the-art methods across multiple tumor types, including glioma, meningioma, and pituitary tumors. In addition, a post-processing module enhances interpretability by generating segmentation masks and extracting clinically relevant metrics such as tumor size and severity level. These results underscore the potential of our approach as a high-performance, interpretable, and deployable clinical decision-support tool, contributing to the advancement of intelligent real-time neuro-oncological diagnostics.
从磁共振成像(MRI)扫描中准确及时地检测脑肿瘤对于改善患者预后和指导治疗决策至关重要。然而,肿瘤形态的复杂异质性、标注医学数据的稀缺性以及深度学习模型的计算需求,给开发可靠的自动化诊断系统带来了巨大挑战。在本研究中,我们提出了一个用于脑肿瘤检测和分类的强大且可扩展的深度学习框架,该框架基于增强的YOLO-v11架构并结合两阶段迁移学习策略构建。第一阶段涉及在一个大型多样的MRI数据集上训练一个基础模型。当平均精度均值(mAP)超过90%时,该模型被指定为脑肿瘤检测模型(BTDM)。在第二阶段,BTDM在结构相似但较小的数据集上进行微调,以形成脑肿瘤检测与分割(BTDS),尽管数据有限,但通过有效利用域迁移来保持性能。该模型通过特定领域的数据增强(包括几何变换)进一步优化,以提高泛化能力和鲁棒性。在公开可用数据集上的实验评估表明,该框架实现了较高的mAP@0.5分数(BTDM高达93.5%,BTDS为91%),并且在包括胶质瘤、脑膜瘤和垂体瘤在内的多种肿瘤类型上始终优于现有的先进方法。此外,一个后处理模块通过生成分割掩码并提取诸如肿瘤大小和严重程度等级等临床相关指标来增强可解释性。这些结果强调了我们的方法作为一种高性能、可解释且可部署的临床决策支持工具的潜力,有助于推动智能实时神经肿瘤诊断的发展。