Research Article Open Access

不同类型非药物干预延缓老年认知衰退的核心统一神经标志物挖掘及其因果验证

张 三1
1 Hebei Normal University
DOI:
Received 29 May 2026
Revised 25 May 2026
Accepted 25 May 2026
Published 29 May 2026

Abstract

This paper presents a novel deep learning framework for detecting and classifying multiple abnormalities in chest X-ray images. The proposed architecture integrates a convolutional neural network with attention mechanisms to focus on clinically relevant regions. We evaluate our method on the public ChestX-ray14 dataset [1], achieving state‑of‑the‑art performance with an average AUC of 0.85 across 14 pathologies. The framework is designed to assist radiologists by highlighting suspicious areas and providing confidence scores. Our results demonstrate that deep learning can significantly improve the accuracy and efficiency of abnormality detection in X‑ray interpretation.

Keywords: deep learning X-ray images medical imaging classification

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