Daniel Enériz, Antonio Rodriguez-Almeida, H. Fabelo, S. Ortega, Francisco Balea-Fernández, N. Medrano, Belén Calvo, G. Callicó
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引用次数: 0
摘要
这项工作展示了UZ-ULPGC团队在心音记录心脏杂音检测方面的进展:George B. Moody PhysioNet挑战2022。由于2016年的挑战证明了分割算法和分类器结合的成功,因此使用序列分割分类开发了基于深度学习的杂音检测器。使用基于u - net的分割模型以最先进的精度从PCG中提取每个心动周期。对三种深度模型进行了分类测试:基于四个独立的一维卷积特征提取器的模型;它的变化使特征组合;还有一个自动编码器。此外,为了实现独特的患者诊断,增加了一个决策模型,收集所有与患者相关的心脏周期信息。所有分类器都显示出有限的性能,这可能是由于在心脏周期水平上数据的严重类不平衡以及在体系结构中选择的最小预处理。请注意,我们的模型没有在隐藏挑战数据中进行测试,因此我们没有排名。因此,在训练集上进行10倍交叉验证来评估它们的性能,最佳模型在存在任务中的加权精度得分为0.58\pm 0.10$和10$ 735\pm 2208$的挑战成本得分。
Exploring a Segmentation-Classification Deep Learning-based Heart Murmurs Detector
This work presents the advances of the UZ-ULPGC team in the Heart Murmur Detection from Phonocardiogram Recordings: The George B. Moody PhysioNet Challenge 2022. As the 2016 challenge proved the success of the combination of a segmentation algorithm and a classifier, a deep learning-based murmur detector is developed using the sequence segmentation-classification. A U-Net-based segmentation model is used to extract each cardiac cycle from the PCG with state-of-the-art accuracy. Three deep models are tested for the classification: a model based on four independent 1D-convolutional feature extractors; its variation enabling combination of the features; and an autoencoder. Furthermore, to enable unique patient diagnostic, a decision model gathering all the patient-related cardiac cycles information is added. All classifiers show limited performance, probably due to the heavy class imbalance of the data at the cardiac cycle level and the minimal preprocessing chosen in the architecture. Note that our models have not been tested in the hidden challenge data and therefore we are not ranked. Hence, a 10-fold cross-validation over the training set is used to evaluate their performance, with the best model getting a weighted accuracy score in the presence task of $0.58\pm 0.10$ and 10 $735\pm 2208$ in Challenge cost score for the outcome.