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Published:2025/12/3 13:54:33

最強ギャルAI降臨〜!✨ EfficientECGで心電図(しんでんず)診断を爆速(ばくはや)にしちゃう論文だって!

EfficientECGで心電図分析を爆アゲ!💖(15字)

✨ キラキラポイント ✨ ● ECGデータ分析をAIが高速化! 診断時間短縮も夢じゃないってこと~! ● クロスアテンション(多角的分析)で、患者さん一人ひとりに合った診断ができるようになるかも💖 ● 医療業界へのAI導入を加速させる、IT企業にとって激アツな研究なの!

詳細解説いくよ~!

● 背景 心電図(ECG)って、心臓の電気的な動きを測るやつ💖 診断にめっちゃ大事なんだけど、データが膨大(ぼうだい)で、診断するのにも時間かかるのが悩みだったみたい💦

続きは「らくらく論文」アプリで

EfficientECG: Cross-Attention with Feature Fusion for Efficient Electrocardiogram Classification

Hanhui Deng / Xinglin Li / Jie Luo / Zhanpeng Jin / Di Wu

Electrocardiogram is a useful diagnostic signal that can detect cardiac abnormalities by measuring the electrical activity generated by the heart. Due to its rapid, non-invasive, and richly informative characteristics, ECG has many emerging applications. In this paper, we study novel deep learning technologies to effectively manage and analyse ECG data, with the aim of building a diagnostic model, accurately and quickly, that can substantially reduce the burden on medical workers. Unlike the existing ECG models that exhibit a high misdiagnosis rate, our deep learning approaches can automatically extract the features of ECG data through end-to-end training. Specifically, we first devise EfficientECG, an accurate and lightweight classification model for ECG analysis based on the existing EfficientNet model, which can effectively handle high-frequency long-sequence ECG data with various leading types. On top of that, we next propose a cross-attention-based feature fusion model of EfficientECG for analysing multi-lead ECG data with multiple features (e.g., gender and age). Our evaluations on representative ECG datasets validate the superiority of our model against state-of-the-art works in terms of high precision, multi-feature fusion, and lightweights.

cs / cs.LG