College of Computer and Information Sciences, Jouf University, Sakaka, Aljouf, Saudi Arabia.
Institute of Computer Science & IT, The University of Agriculture Peshawar, Peshawar, Pakistan.
Comput Intell Neurosci. 2022 May 2;2022:6447769. doi: 10.1155/2022/6447769. eCollection 2022.
Magnetic resonance imaging (MRI) is an accurate and noninvasive method employed for the diagnosis of various kinds of diseases in medical imaging. Most of the existing systems showed significant performances on small MRI datasets, while their performances decrease against large MRI datasets. Hence, the goal was to design an efficient and robust classification system that sustains a high recognition rate against large MRI dataset. Accordingly, in this study, we have proposed the usage of a novel feature extraction technique that has the ability to extract and select the prominent feature from MRI image. The proposed algorithm selects the best features from the MRI images of various diseases. Further, this approach discriminates various classes based on recursive values such as partial -value. The proposed approach only extracts a minor feature set through, respectively, forward and backward recursion models. The most interrelated features are nominated in the forward regression model that depends on the values of partial -test, while the minimum interrelated features are diminished from the corresponding feature space under the presence of the backward model. In both cases, the values of -test are estimated through the defined labels of the diseases. The proposed model is efficiently looking the localized features, which is one of the benefits of this method. After extracting and selecting the best features, the model is trained by utilizing support vector machine (SVM) to provide the predicted labels to the corresponding MRI images. To show the significance of the proposed model, we utilized a publicly available standard dataset such as Harvard Medical School and Open Access Series of Imaging Studies (OASIS), which contains 24 various brain diseases including normal. The proposed approach achieved the best classification accuracy against existing state-of-the-art systems.
磁共振成像(MRI)是一种在医学成像中用于诊断各种疾病的准确、非侵入性的方法。大多数现有的系统在小的 MRI 数据集上表现出了显著的性能,而在大的 MRI 数据集上性能则下降。因此,目标是设计一个高效、稳健的分类系统,能够在大的 MRI 数据集上保持高的识别率。因此,在本研究中,我们提出了使用一种新的特征提取技术,该技术能够从 MRI 图像中提取和选择突出的特征。所提出的算法从各种疾病的 MRI 图像中选择最佳特征。此外,该方法基于递归值(如偏值)来区分各种类别。该方法仅通过前向和后向递归模型分别提取少量的特征集。前向回归模型中根据偏测试值提名最相关的特征,而后向模型则从相应的特征空间中减少最小相关的特征。在这两种情况下,-test 的值都是通过疾病的定义标签来估计的。该模型能够有效地寻找局部特征,这是该方法的优势之一。在提取和选择最佳特征后,模型通过支持向量机(SVM)进行训练,为相应的 MRI 图像提供预测标签。为了展示所提出模型的重要性,我们利用了哈佛医学院和开放访问成像研究系列(OASIS)等公开可用的标准数据集,其中包含 24 种不同的脑部疾病,包括正常。所提出的方法在现有的最先进系统中实现了最佳的分类准确性。