An efficient hybrid bert model for brain tumor classification

S. S. P. Kumar, C. A. Kumar, Anita Venugopal, Aditi Sharma
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Abstract

The central nervous system can develop complex and deadly neoplastic growths called brain tumors. Despite being relatively uncommon in comparison to other cancers, brain tumors pose particular challenges because of their delicate anatomical placement and interactions with critical brain regions. The data are taken from TCIA (The Cancer Image Archive) and Kaggle Datasets. Images are first pre-processed using amplified median filter techniques. The pre-processed images are then segmented using the Grabcut method. Feature extraction is extracted using the Shape, ABCD rule, and GLCM are the features were retrieved. The MRI images are then classified into several classes using the Bi-directional Encoder Representations from Transformers-Bidirectional Long Short Term Memory (BERT-Bi-LSTM) model. Kaggle and TICA datasets are used to simulate the proposed approach, and the results are evaluated in terms of F1-score, recall, precision and accuracy. The proposed model shows improved brain tumour identification and classification. To evaluate the expected technique’s efficacy, a thorough comparison of the current techniques with preceding methods is made. The trial results showed that an efficient hybrid bert model for brain tumor classification suggested strategy provided precision of 98.65%, F1-score of 98.25%, recall of 99.25%, and accuracy of 99.75% .
用于脑肿瘤分类的高效混合伯特模型
中枢神经系统会出现复杂而致命的肿瘤性生长,即脑瘤。尽管与其他癌症相比,脑肿瘤并不常见,但由于其微妙的解剖位置以及与关键脑区的相互作用,脑肿瘤带来了特殊的挑战。数据来自 TCIA(癌症图像档案)和 Kaggle 数据集。首先使用放大中值滤波技术对图像进行预处理。然后使用 Grabcut 方法对预处理后的图像进行分割。使用形状、ABCD 规则和 GLCM 提取特征。然后使用变压器双向编码器表示-双向长短期记忆(BERT-Bi-LSTM)模型将核磁共振成像图像分为几类。Kaggle 和 TICA 数据集被用来模拟所提出的方法,并根据 F1 分数、召回率、精确度和准确度对结果进行评估。所提出的模型改进了脑肿瘤的识别和分类。为了评估预期技术的功效,对当前技术与之前的方法进行了全面比较。试验结果表明,所建议的用于脑肿瘤分类的高效混合伯特模型的精确度为 98.65%,F1 分数为 98.25%,召回率为 99.25%,准确率为 99.75%。
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