Optimized U-net segmentation and hybrid res-net for brain tumor MRI images classification

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Abstract

A brain tumor is a portion of uneven cells, need to be detected earlier for treatment. Magnetic Resonance Imaging (MRI) is a routinely utilized proce-dure to take brain tumor images. Manual segmentation of tumor is a crucial task and laborious. There is a need for an automated system for segmentation and classification for tumor surgery and medical treatments. This work suggests an efficient brain tumor segmentation and classification based on deep learning techniques. Initially, Squirrel search optimized bidirectional ConvLSTM U-net with attention gate proposed for brain tumour segmentation. Then, the Hybrid Deep ResNet and Inception Model used for classification. Squirrel search optimizer mimics the searching behavior of southern flying squirrels and their well-orga-nized way of movement. Here, the squirrel optimizer is utilized to tune the hyperparameters of the U-net model. In addition, bidirectional attention modules of position and channel modules were added in U-Net to extract more character-istic features. Implementation results on BraTS 2018 datasets show that proposed segmentation and classification outperforms in terms of accuracy, dice score, pre-cision rate, recall rate, and Hausdorff Distance.

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Rajaragavi, R., & Palanivel Rajan, S. (2022). Optimized U-net segmentation and hybrid res-net for brain tumor MRI images classification. Intelligent Automation and Soft Computing, 32(1), 1–14. https://doi.org/10.32604/iasc.2022.021206

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