"Matheus Araujo, Dewen Zeng, João Palotti, Xinrong Hu, Yiyu Shi, L. Pyles, Q. Ni
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引用次数: 3
摘要
先天性心脏病(CHD)是新生儿死亡的主要原因,特别是在资源匮乏的国家,因为获得心脏病专家及时诊断的机会有限。作为George B. Moody PhysioNet Challenge 2022的一部分,我们提出了一种自动算法,从专家注释的数字记录的心音中检测冠心病杂音。为了训练和验证我们的模型,我们使用了一个包含5282个心音的数据集,这些心音来自巴西帕拉伊巴州的1568名儿童,记录于多个听诊位置。我们的团队名为One_Heart_Health,采用了两阶段策略,将音频片段生成的Mel谱图的嵌入和最终分类器结合起来,最终分类器将这些嵌入结合起来,为每个人提供最终分类。在官方的隐藏测试中,我们的加权准确率得分为0.729(在40个中排名第17),挑战成本得分为13283(在39个中排名第23)。在我们的内部5倍交叉验证实验中,我们的方法达到了0.76±0.10的灵敏度和0.85±0.11的特异性。我们已经证明,一种用于杂音检测的深度学习方法有可能模仿心脏病专家,及时识别冠心病。
Maiby's Algorithm: A Two-Stage Deep Learning Approach for Murmur Detection in Mel Spectrograms for Automatic Auscultation of Congenital Heart Disease
Congenital heart disease (CHD) is a major cause of death for newborns, especially in low resources countries, due to limited access to heart specialists for timely diagnosis. As part of the George B. Moody PhysioNet Challenge 2022, we propose an automatic algorithm to detect CHD murmurs from digitally recorded heart sounds annotated by specialists. To train and validate our model, we use a dataset with 5282 heart sounds collected from 1568 children in the Paraiba state of Brazil recorded from multiple auscultation locations. Our team, named One_Heart_Health, used a two-stage strategy that combines embeddings from Mel spectrograms generated from audio segments and a final classifier that combine those embeddings to deliver the final classification per individual. On the official hidden test, we reached a weighted accuracy score of 0.729 (ranked 17th out of 40) and a challenge cost score of 13283 (ranked 23th out of 39). In our internal 5-fold cross-validation experiments, our approach reached a sensitivity of 0.76 ± 0.10 and a specificity of 0.85 ± 0.11. We have shown that a deep learning approach for murmur detection has the potential to mimic heart specialists to provide timely identification of CHD.