用于检测和分割局部磁共振成像脑肿瘤图像的 YOLO-UNet 架构

IF 2.4 Q3 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Applied Computational Intelligence and Soft Computing Pub Date : 2024-02-08 DOI:10.1155/2024/3819801
Nur Iriawan, A. A. Pravitasari, Ulfa S. Nuraini, Nur I. Nirmalasari, Taufik Azmi, Muhammad Nasrudin, Adam F. Fandisyah, K. Fithriasari, S. W. Purnami, Irhamah, Widiana Ferriastuti
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引用次数: 0

摘要

脑肿瘤的检测和分割是生物医学工程研究领域的主要问题,由于脑肿瘤在磁共振成像中的形状和位置各不相同,这一直是个难题。磁共振图像的质量对于清晰显示肿瘤的形状和边界也起着重要作用。清晰的肿瘤形状和边界将提高医疗手术的安全性。分析这些不同范围的图像类型需要精细的计算机量化和可视化工具。本文采用深度学习方法,结合卷积神经网络(CNN)和全卷积网络(FCN)方法,对脑肿瘤核磁共振图像进行检测和分割。其基本发现是利用 YOLO-CNN 检测和定位肿瘤区域,并利用 FCN-UNet 架构分割肿瘤区域。这项分析提供了自动检测和分割以及肿瘤位置。使用 UNet 进行的分割在四种情况下运行,并根据最小损失和最大准确度值选出最佳方案。在这项研究中,我们使用了 277 幅图像进行训练,69 幅图像进行验证,14 幅图像进行测试。验证是通过比较分割结果和医学基本真实值来提供正确分类率(CCR)。这项研究成功地检测出了脑肿瘤,并提供了清晰的脑肿瘤区域,CCR 高达约 97%。
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YOLO-UNet Architecture for Detecting and Segmenting the Localized MRI Brain Tumor Image
Brain tumor detection and segmentation are the main issues in biomedical engineering research fields, and it is always challenging due to its heterogeneous shape and location in MRI. The quality of the MR images also plays an important role in providing a clear sight of the shape and boundary of the tumor. The clear shape and boundary of the tumor will increase the probability of safe medical surgery. Analysis of this different scope of image types requires refined computerized quantification and visualization tools. This paper employed deep learning to detect and segment brain tumor MRI images by combining the convolutional neural network (CNN) and fully convolutional network (FCN) methodology in serial. The fundamental finding is to detect and localize the tumor area with YOLO-CNN and segment it with the FCN-UNet architecture. This analysis provided automatic detection and segmentation as well as the location of the tumor. The segmentation using the UNet is run under four scenarios, and the best one is chosen by the minimum loss and maximum accuracy value. In this research, we used 277 images for training, 69 images for validation, and 14 images for testing. The validation is carried out by comparing the segmentation results with the medical ground truth to provide the correct classification ratio (CCR). This study succeeded in the detection of brain tumors and provided a clear area of the brain tumor with a high CCR of about 97%.
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来源期刊
Applied Computational Intelligence and Soft Computing
Applied Computational Intelligence and Soft Computing COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE-
CiteScore
6.10
自引率
3.40%
发文量
59
审稿时长
21 weeks
期刊介绍: Applied Computational Intelligence and Soft Computing will focus on the disciplines of computer science, engineering, and mathematics. The scope of the journal includes developing applications related to all aspects of natural and social sciences by employing the technologies of computational intelligence and soft computing. The new applications of using computational intelligence and soft computing are still in development. Although computational intelligence and soft computing are established fields, the new applications of using computational intelligence and soft computing can be regarded as an emerging field, which is the focus of this journal.
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