Balcı Mehmet Ali, Batrancea Larissa M, Akgüller Ömer, Nichita Anca
Faculty of Science, Mathematics Department, Muğla Sıtkı Koçman University, 48000 Muğla, Turkey.
Department of Business, Babeş-Bolyai University, 400174 Cluj-Napoca, Romania.
Cancers (Basel). 2023 Jan 30;15(3):843. doi: 10.3390/cancers15030843.
Although many studies have shown that deep learning approaches yield better results than traditional methods based on manual features, CADs methods still have several limitations. These are due to the diversity in imaging modalities and clinical pathologies. This diversity creates difficulties because of variation and similarities between classes. In this context, the new approach from our study is a hybrid method that performs classifications using both medical image analysis and radial scanning series features. Hence, the areas of interest obtained from images are subjected to a radial scan, with their centers as poles, in order to obtain series. A U-shape convolutional neural network model is then used for the 4D data classification problem. We therefore present a novel approach to the classification of 4D data obtained from lung nodule images. With radial scanning, the eigenvalue of nodule images is captured, and a powerful classification is performed. According to our results, an accuracy of 92.84% was obtained and much more efficient classification scores resulted as compared to recent classifiers.
尽管许多研究表明,深度学习方法比基于手动特征的传统方法能产生更好的结果,但计算机辅助诊断(CAD)方法仍存在一些局限性。这些局限性是由于成像模态和临床病理的多样性所致。由于类别之间的差异和相似性,这种多样性带来了困难。在这种背景下,我们研究中的新方法是一种混合方法,它使用医学图像分析和径向扫描序列特征进行分类。因此,从图像中获得的感兴趣区域以其中心为极点进行径向扫描,以获得序列。然后,将一个U形卷积神经网络模型用于4D数据分类问题。因此,我们提出了一种对从肺结节图像中获得的4D数据进行分类的新方法。通过径向扫描,捕获结节图像的特征值,并进行有力的分类。根据我们的结果,获得了92.84%的准确率,与最近的分类器相比,得到了更高效的分类分数。