Centre for Advanced Electronic and Communication Engineering, Department of Electrical, Electronic and Systems Engineering, Faculty of Engineering and Built Environment, Universiti Kebangsaan Malaysia, Bangi 43600, Malaysia.
Department of Computer Science and Engineering, Dhaka University of Engineering and Technology, Gazipur, Gazipur 1707, Bangladesh.
Biosensors (Basel). 2023 Feb 21;13(3):302. doi: 10.3390/bios13030302.
Automated brain tumor segmentation from reconstructed microwave (RMW) brain images and image classification is essential for the investigation and monitoring of the progression of brain disease. The manual detection, classification, and segmentation of tumors are extremely time-consuming but crucial tasks due to the tumor's pattern. In this paper, we propose a new lightweight segmentation model called MicrowaveSegNet (MSegNet), which segments the brain tumor, and a new classifier called the BrainImageNet (BINet) model to classify the RMW images. Initially, three hundred (300) RMW brain image samples were obtained from our sensors-based microwave brain imaging (SMBI) system to create an original dataset. Then, image preprocessing and augmentation techniques were applied to make 6000 training images per fold for a 5-fold cross-validation. Later, the MSegNet and BINet were compared to state-of-the-art segmentation and classification models to verify their performance. The MSegNet has achieved an Intersection-over-Union (IoU) and Dice score of 86.92% and 93.10%, respectively, for tumor segmentation. The BINet has achieved an accuracy, precision, recall, F1-score, and specificity of 89.33%, 88.74%, 88.67%, 88.61%, and 94.33%, respectively, for three-class classification using raw RMW images, whereas it achieved 98.33%, 98.35%, 98.33%, 98.33%, and 99.17%, respectively, for segmented RMW images. Therefore, the proposed cascaded model can be used in the SMBI system.
从重建微波 (RMW) 脑图像中自动分割脑肿瘤和图像分类对于研究和监测脑疾病的进展至关重要。由于肿瘤的模式,手动检测、分类和分割肿瘤是极其耗时但至关重要的任务。在本文中,我们提出了一种新的轻量级分割模型,称为微波分割网络 (MSegNet),用于分割脑肿瘤,以及一种新的分类器,称为脑图像网络 (BINet) 模型,用于对 RMW 图像进行分类。最初,我们从基于传感器的微波脑成像 (SMBI) 系统中获得了三百 (300) 个 RMW 脑图像样本,以创建原始数据集。然后,应用图像预处理和增强技术,为 5 折交叉验证中的每折生成 6000 个训练图像。之后,将 MSegNet 和 BINet 与最先进的分割和分类模型进行比较,以验证它们的性能。MSegNet 在肿瘤分割方面实现了 86.92%的交并比 (IoU) 和 93.10%的 Dice 得分。BINet 在使用原始 RMW 图像进行三分类时,实现了 89.33%的准确率、88.74%的精确率、88.67%的召回率、88.61%的 F1 得分和 94.33%的特异性,而对于分割后的 RMW 图像,它实现了 98.33%的准确率、98.35%的精确率、98.33%的召回率、98.33%的 F1 得分和 99.17%的特异性。因此,所提出的级联模型可以用于 SMBI 系统。