人工智能
计算机科学
接收机工作特性
抓住
机器学习
特征(语言学)
人的心脏
心脏病
儿科医学
试验装置
模式识别(心理学)
医学
内科学
儿科
哲学
程序设计语言
语言学
作者
Jintai Chen,Shuai Huang,Ying Zhang,Qing Chang,Yixiao Zhang,Dantong Li,Jia Qiu,Lianting Hu,Xiaoting Peng,Yunmei Du,Yunfei Gao,Danny Z. Chen,Abdelouahab Bellou,Jian Wu,Huiying Liang
标识
DOI:10.1038/s41467-024-44930-y
摘要
Abstract Early detection is critical to achieving improved treatment outcomes for child patients with congenital heart diseases (CHDs). Therefore, developing effective CHD detection techniques using low-cost and non-invasive pediatric electrocardiogram are highly desirable. We propose a deep learning approach for CHD detection, CHDdECG, which automatically extracts features from pediatric electrocardiogram and wavelet transformation characteristics, and integrates them with key human-concept features. Developed on 65,869 cases, CHDdECG achieved ROC-AUC of 0.915 and specificity of 0.881 on a real-world test set covering 12,000 cases. Additionally, on two external test sets with 7137 and 8121 cases, the overall ROC-AUC were 0.917 and 0.907 while specificities were 0.937 and 0.907. Notably, CHDdECG surpassed cardiologists in CHD detection performance comparison, and feature importance scores suggested greater influence of automatically extracted electrocardiogram features on CHD detection compared with human-concept features, implying that CHDdECG may grasp some knowledge beyond human cognition. Our study directly impacts CHD detection with pediatric electrocardiogram and demonstrates the potential of pediatric electrocardiogram for broader benefits.
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