RRFNet:一个基于重参数化技术的自由锚点脑肿瘤检测与分类网络。

IF 2.6 3区 综合性期刊 Q1 MULTIDISCIPLINARY SCIENCES
PLoS ONE Pub Date : 2025-06-16 eCollection Date: 2025-01-01 DOI:10.1371/journal.pone.0325483
Wei Liu, Xingxin Guo
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引用次数: 0

摘要

医学成像技术的进步促进了通过计算机断层扫描(CT)或磁共振成像(MRI)获得高质量的大脑图像,使专业的大脑专家能够更有效地诊断脑肿瘤。然而,人工诊断是耗时的,这使得通过脑成像自动检测和分类变得越来越重要。由于医学图像与自然场景图像的显著差异,以及背景复杂、噪声干扰、癌组织与正常组织界限模糊等挑战,传统的脑肿瘤目标检测模型在脑肿瘤检测中存在局限性。本研究探讨了深度学习在脑肿瘤检测中的应用,分析了模型参数数量、输入数据批次大小和锚盒使用三个因素对检测性能的影响。实验结果表明,过多的模型参数或锚盒的使用会降低检测精度。然而,增加脑肿瘤样本的数量可以提高检测性能。本研究采用RepConv和reppc3构建骨干网,结合FGConcat特征图拼接模块对脑肿瘤检测模型进行优化。实验结果表明,提出的repconvr - repc3 - fgconcat网络(RRFNet)可以在训练阶段学习到脑肿瘤的潜在语义信息,同时在推理过程中保持较少的参数数量,提高了脑肿瘤的检测速度。与YOLOv8相比,RRFNet对脑肿瘤的检测准确率更高,mAP值为79.2%。这种优化的方法提高了准确性和效率,这在时间和精度至关重要的临床环境中至关重要。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
RRFNet: A free-anchor brain tumor detection and classification network based on reparameterization technology.

Advancements in medical imaging technology have facilitated the acquisition of high-quality brain images through computed tomography (CT) or magnetic resonance imaging (MRI), enabling professional brain specialists to diagnose brain tumors more effectively. However, manual diagnosis is time-consuming, which has led to the growing importance of automatic detection and classification through brain imaging. Conventional object detection models for brain tumor detection face limitations in brain tumor detection owing to the significant differences between medical images and natural scene images, as well as challenges such as complex backgrounds, noise interference, and blurred boundaries between cancerous and normal tissues. This study investigates the application of deep learning to brain tumor detection, analyzing the effect of three factors, the number of model parameters, input data batch size, and the use of anchor boxes, on detection performance. Experimental results reveal that an excessive number of model parameters or the use of anchor boxes may reduce detection accuracy. However, increasing the number of brain tumor samples improves detection performance. This study, introduces a backbone network built using RepConv and RepC3, along with FGConcat feature map splicing module to optimize the brain tumor detection model. The experimental results show that the proposed RepConv-RepC3-FGConcat Network (RRFNet) can learn underlying semantic information about brain tumors during training stage, while maintaining a low number of parameters during inference, which improves the speed of brain tumor detection. Compared with YOLOv8, RRFNet achieved a higher accuracy in brain tumor detection, with a mAP value of 79.2%. This optimized approach enhances both accuracy and efficiency, which is essential in clinical settings where time and precision are critical.

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来源期刊
PLoS ONE
PLoS ONE 生物-生物学
CiteScore
6.20
自引率
5.40%
发文量
14242
审稿时长
3.7 months
期刊介绍: PLOS ONE is an international, peer-reviewed, open-access, online publication. PLOS ONE welcomes reports on primary research from any scientific discipline. It provides: * Open-access—freely accessible online, authors retain copyright * Fast publication times * Peer review by expert, practicing researchers * Post-publication tools to indicate quality and impact * Community-based dialogue on articles * Worldwide media coverage
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