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Published:2026/1/5 13:20:10

口腔がんAI診断、データ拡張で精度UP✨

超要約: 口腔がんをAIで診断!データ増やして精度爆上げ!

🌟 ギャル的キラキラポイント✨ ● 口腔がんを早期発見するAI技術、開発されたんだって! ● 画像データ(がぞうデータ)を増やして、診断の精度(せいど)をめっちゃ上げたみたい! ● AIとVR(バーチャルリアリティ)の組み合わせで、未来の医療がアガる予感💖

詳細解説 ● 背景 口腔がんって、早期発見が難しいらしいの。でもAIを使えば、画像を見て診断できる可能性があるんだって!画像データが少ないと、AIの精度(せいど)もイマイチだから、データ量を増やす工夫が必要なのね。

● 方法 画像データを加工したり、他の情報も組み合わせたりして、AIの学習をサポートしたみたい!具体的には、画像データをもっと増やしたり、年齢とか性別の情報も一緒に使ったりしたんだって!

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Data-Augmented Multimodal Feature Fusion for Multiclass Visual Recognition of Oral Cancer Lesions

Joy Naoum / Revana Salama / Ali Hamdi

Oral cancer is frequently diagnosed at later stages due to its similarity to other lesions. Existing research on computer aided diagnosis has made progress using deep learning; however, most approaches remain limited by small, imbalanced datasets and a dependence on single-modality features, which restricts model generalization in real-world clinical settings. To address these limitations, this study proposes a novel data-augmentation driven multimodal feature-fusion framework integrated within a (Vision Recognition)VR assisted oral cancer recognition system. Our method combines extensive data centric augmentation with fused clinical and image-based representations to enhance model robustness and reduce diagnostic ambiguity. Using a stratified training pipeline and an EfficientNetV2 B1 backbone, the system improves feature diversity, mitigates imbalance, and strengthens the learned multimodal embeddings. Experimental evaluation demonstrates that the proposed framework achieves an overall accuracy of 82.57 percent on 2 classes, 65.13 percent on 3 classes, and 54.97 percent on 4 classes, outperforming traditional single stream CNN models. These results highlight the effectiveness of multimodal feature fusion combined with strategic augmentation for reliable early oral cancer lesion recognition and serve as a foundation for immersive VR based clinical decision support tools.

cs / cs.CV