Gupta Subhash Chand, Vijayvargiya Shripal, Bhattacharjee Vandana
Department of CSE, Birla Institute of Technology, Ranchi 835215, India.
Diagnostics (Basel). 2025 Jul 24;15(15):1863. doi: 10.3390/diagnostics15151863.
: Brain tumor, marked by abnormal and rapid cell growth, poses severe health risks and requires accurate diagnosis for effective treatment. Classifying brain tumors using deep learning techniques applied to Magnetic Resonance Imaging (MRI) images has attracted the attention of many researchers, and specifically, reducing the bias of models and enhancing robustness is still a very pertinent active topic of attention. : For capturing diverse information from different feature sets, we propose a For this, we have chosen three pretrained models-ResNet50; VGG16; and DensetNet121-as the baseline models. Our proposed hybrid models are built by the fusion of feature vectors. : The testing phase results show that, for the FCBTC Model-3, values for Precision, Recall, F1-score, and Accuracy are 98.33%, 98.26%, 98.27%, and 98.40%, respectively. This reinforces our idea that feature diversity does improve the classifier's performance. Comparative performance evaluation of our work shows that, the proposed hybrid FCBTC Models have performed better than other proposed baseline models.
脑肿瘤以细胞异常快速生长为特征,会带来严重的健康风险,需要准确诊断以进行有效治疗。利用应用于磁共振成像(MRI)图像的深度学习技术对脑肿瘤进行分类已引起许多研究人员的关注,具体而言,减少模型偏差并提高鲁棒性仍然是一个非常相关的活跃关注话题。为了从不同特征集中捕获多样信息,我们提出了一种方法。为此,我们选择了三个预训练模型——ResNet50、VGG16和DensetNet121——作为基线模型。我们提出的混合模型通过特征向量融合构建。测试阶段结果表明,对于FCBTC模型3,精确率、召回率、F1分数和准确率的值分别为98.33%、98.26%、98.27%和98.40%。这强化了我们的观点,即特征多样性确实能提高分类器的性能。我们工作的比较性能评估表明,所提出的混合FCBTC模型比其他提出 的基线模型表现更好。