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Published:2025/10/23 7:39:00

脳腫瘍をAIで診断!?最強モデル爆誕☆(DB-FGA-Net)

超カンタンに言うと、脳腫瘍(のうしゅよう)をAI(人工知能)で見つけるスゴい技術の話だよ!✨

💎 ギャル的キラキラポイント✨ ● データ追加ナシで高精度!余計なことしなくても優秀ってこと💖 ● AIがなんでそう判断したか、理由がわかる!透明性って大事~! ● 脳腫瘍の種類をほぼ正確に分類!早期発見に役立つって最高じゃん?

詳細解説いくね~!

背景 脳腫瘍って、早期発見がめっちゃ大事なの!MRIとかの画像で診断するんだけど、コレをAIでやったらもっとスゴイんじゃない?🤔って研究だよ。AIは画像解析得意だし、診断の精度アップも期待できるよね!

続きは「らくらく論文」アプリで

DB-FGA-Net: Dual Backbone Frequency Gated Attention Network for Multi-Class Classification with Grad-CAM Interpretability

Saraf Anzum Shreya / MD. Abu Ismail Siddique / Sharaf Tasnim

Brain tumors are a challenging problem in neuro-oncology, where early and precise diagnosis is important for successful treatment. Deep learning-based brain tumor classification methods often rely on heavy data augmentation which can limit generalization and trust in clinical applications. In this paper, we propose a double-backbone network integrating VGG16 and Xception with a Frequency-Gated Attention (FGA) Block to capture complementary local and global features. Unlike previous studies, our model achieves state-of-the-art performance without augmentation which demonstrates robustness to variably sized and distributed datasets. For further transparency, Grad-CAM is integrated to visualize the tumor regions based on which the model is giving prediction, bridging the gap between model prediction and clinical interpretability. The proposed framework achieves 99.24\% accuracy on the 7K-DS dataset for the 4-class setting, along with 98.68\% and 99.85\% in the 3-class and 2-class settings, respectively. On the independent 3K-DS dataset, the model generalizes with 95.77\% accuracy, outperforming baseline and state-of-the-art methods. To further support clinical usability, we developed a graphical user interface (GUI) that provides real-time classification and Grad-CAM-based tumor localization. These findings suggest that augmentation-free, interpretable, and deployable deep learning models such as DB-FGA-Net hold strong potential for reliable clinical translation in brain tumor diagnosis.

cs / cs.LG / cs.AI