Papers
arxiv:2512.06531

Novel Deep Learning Architectures for Classification and Segmentation of Brain Tumors from MRI Images

Published on Dec 6
· Submitted by Arghadip Biswas on Dec 10

Abstract

Two novel deep learning architectures, SAETCN and SAS-Net, achieve high accuracy in classifying and segmenting brain tumors from MRI scans.

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Brain tumors pose a significant threat to human life, therefore it is very much necessary to detect them accurately in the early stages for better diagnosis and treatment. Brain tumors can be detected by the radiologist manually from the MRI scan images of the patients. However, the incidence of brain tumors has risen amongst children and adolescents in recent years, resulting in a substantial volume of data, as a result, it is time-consuming and difficult to detect manually. With the emergence of Artificial intelligence in the modern world and its vast application in the medical field, we can make an approach to the CAD (Computer Aided Diagnosis) system for the early detection of Brain tumors automatically. All the existing models for this task are not completely generalized and perform poorly on the validation data. So, we have proposed two novel Deep Learning Architectures - (a) SAETCN (Self-Attention Enhancement Tumor Classification Network) for the classification of different kinds of brain tumors. We have achieved an accuracy of 99.38% on the validation dataset making it one of the few Novel Deep learning-based architecture that is capable of detecting brain tumors accurately. We have trained the model on the dataset, which contains images of 3 types of tumors (glioma, meningioma, and pituitary tumors) and non-tumor cases. and (b) SAS-Net (Self-Attentive Segmentation Network) for the accurate segmentation of brain tumors. We have achieved an overall pixel accuracy of 99.23%.

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edited 1 day ago

We are excited to share our new work tackling the critical challenge of brain tumor detection from MRI scans. Due to high data volume and generalization issues in existing systems, we developed two novel deep learning architectures:

  1. SAETCN (Self-Attention Enhancement Tumor Classification Network): A classification model achieving a state-of-the-art 99.38% validation accuracy in classifying four classes (glioma, meningioma, pituitary, and non-tumor). Its self-attention mechanism significantly improves generalization and robustness, overcoming common pitfalls in CAD systems.

  2. SAS-Net (Self-Attentive Segmentation Network): For precise tumor localization, achieving 99.23% overall pixel accuracy in segmentation.

This paper proposes one of the most accurate and generalized DL architectures for early, automatic brain tumor detection. We hope this work can serve as a strong baseline for future Computer-Aided Diagnosis systems.

Check out the paper, and we welcome your feedback and discussions! #MedicalImaging #DeepLearning #SelfAttention #CAD #BrainTumor

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