Song Guanghui, Xie Guanbao, Nie Yan, Majid Mohammed Sh, Yavari Iman
School of Computer and Data Engineering, Ningbo Tech University, Ningbo, 315100, Zhejiang, China.
College of Science & Technology, Ningbo University, Ningbo, 315100, Zhejiang, China.
J Cancer Res Clin Oncol. 2023 Dec;149(18):16293-16309. doi: 10.1007/s00432-023-05389-4. Epub 2023 Sep 12.
Convolutional Neural Networks (ConvNets) have quickly become popular machine learning techniques in recent years, particularly in the classification and segmentation of medical images. One of the most prevalent types of brain cancers is glioma, and early, accurate diagnosis is essential for both treatment and survival. In this study, MRI scans were examined utilizing deep learning techniques to examine glioma diagnosis studies.
In this systematic review, keywords were used to obtain English-language studies from the Arxiv, IEEE, Springer, ScienceDirect, and PubMed databases for the years 2010-2022. The material needed for review was then collected from the articles once they had been chosen based on the entry and exit criteria and in accordance with the research's goal.
Finally, 77 different academic articles were chosen. According to a study of published articles, glioma brain tumors were discovered, categorized, and segmented utilizing a coordinated approach that included image collecting, pre-processing, model design and execution, and model output evaluation. The majority of investigations have used publicly accessible photo databases and already-trained algorithms. The bulk of studies have employed Dice's classification accuracy and similarity coefficient metrics to assess model performance.
The results of this study indicate that glioma segmentation has received more attention from researchers than glioma detection and classification. It is advised that more research be done in the areas of glioma detection and, particularly, grading in order to be included in systems that support medical diagnosis.
近年来,卷积神经网络(ConvNets)迅速成为流行的机器学习技术,尤其是在医学图像的分类和分割方面。最常见的脑癌类型之一是神经胶质瘤,早期准确诊断对于治疗和生存至关重要。在本研究中,利用深度学习技术对磁共振成像(MRI)扫描进行检查,以研究神经胶质瘤的诊断。
在本系统评价中,使用关键词从2010 - 2022年的Arxiv、IEEE、Springer、ScienceDirect和PubMed数据库中获取英文研究。然后,根据纳入和排除标准并按照研究目标选择文章后,从文章中收集综述所需的材料。
最终,选择了77篇不同的学术文章。根据对已发表文章的研究,利用包括图像采集、预处理、模型设计与执行以及模型输出评估在内的协同方法发现、分类和分割神经胶质瘤脑肿瘤。大多数研究使用了公开可用的照片数据库和已训练的算法。大多数研究采用了Dice分类准确率和相似系数指标来评估模型性能。
本研究结果表明,与神经胶质瘤检测和分类相比,神经胶质瘤分割受到了研究人员更多的关注。建议在神经胶质瘤检测领域,特别是分级方面开展更多研究,以便纳入支持医学诊断的系统。