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使用优化的YOLOv5架构进行准确且实时的脑肿瘤检测与分类。

Accurate and real-time brain tumour detection and classification using optimized YOLOv5 architecture.

作者信息

Saranya M, Praveena R

机构信息

Department of Biomedical Engineering, Mahendra Institute of Technology, Namakkal, India.

Department of Electronics and Communication Engineering, Muthayammal Engineering college, Rasipuram, 600 062, Namakkal, India.

出版信息

Sci Rep. 2025 Jul 12;15(1):25286. doi: 10.1038/s41598-025-07773-1.

Abstract

The brain tumours originate in the brain or its surrounding structures, such as the pituitary and pineal glands, and can be benign or malignant. While benign tumours may grow into neighbouring tissues, metastatic tumours occur when cancer from other organs spreads to the brain. This is because identification and staging of such tumours are critical because basically all aspects involving a patient's disease entail accurate diagnosis as well as the staging of the tumour. Image segmentation is incredibly valuable to medical imaging since it can make possible to simulate surgical operations, diseases diagnosis, anatomical and pathologic analysis. This study performs the prediction and classification of brain tumours present in MRI, a combined classification and localization framework model is proposed connecting Fully Convolutional Neural Network (FCNN) and You Only Look Once version 5 (YOLOv5). The FCNN model is designed to classify images into four categories: benign - glial, adenomas and pituitary related, and meningeal. It utilizes a derivative of Root Mean Square Propagation (RMSProp)optimization to boost the classification rate, based upon which the performance was evaluated with the standard measures that are precision, recall, F1 coefficient, specificity and accuracy. Subsequently, the YOLOv5 architectural design for more accurate detection of tumours is incorporated, with the subsequent use of FCNN for creation of the segmentation's masks of the tumours. Thus, the analysis proves that the suggested approach has more accuracy than the existing system with 98.80% average accuracy in the identification and categorization of brain tumour. This integration of detection and segmentation models presents one of the most effective techniques for enhancing the diagnostic performance of the system to add value within the medical imaging field. On the basis of these findings, it becomes possible to conclude that the advancements in the deep learning structures could apparently improve the tumour diagnosis while contributing to the finetuning of the clinical management.

摘要

脑肿瘤起源于大脑或其周围结构,如垂体和松果体,可为良性或恶性。虽然良性肿瘤可能会向邻近组织生长,但当其他器官的癌症扩散到大脑时,就会发生转移性肿瘤。这是因为此类肿瘤的识别和分期至关重要,因为基本上涉及患者疾病的所有方面都需要准确诊断以及肿瘤分期。图像分割对医学成像非常有价值,因为它可以使模拟手术操作、疾病诊断、解剖和病理分析成为可能。本研究对磁共振成像(MRI)中存在的脑肿瘤进行预测和分类,提出了一种将全卷积神经网络(FCNN)和你只看一次版本5(YOLOv5)连接起来的联合分类和定位框架模型。FCNN模型旨在将图像分为四类:良性——神经胶质、腺瘤和垂体相关、脑膜。它利用均方根传播(RMSProp)优化的一种导数来提高分类率,并在此基础上用精度、召回率、F1系数、特异性和准确率等标准指标评估性能。随后,纳入YOLOv5的架构设计以更准确地检测肿瘤,随后使用FCNN创建肿瘤的分割掩码。因此,分析证明,所提出的方法比现有系统具有更高的准确性,在脑肿瘤的识别和分类中平均准确率为98.80%。这种检测和分割模型的整合是提高系统诊断性能以在医学成像领域增加价值的最有效技术之一。基于这些发现,可以得出结论,深度学习结构的进步显然可以改善肿瘤诊断,同时有助于临床管理的微调。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/9696/12255775/a3c7610dd614/41598_2025_7773_Fig1_HTML.jpg

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