S. Parvaneh, Zaniar Ardalan, Joomyung Song, Kathan Vyas, C. Potes
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引用次数: 0
摘要
数字心音图(PCG)为资源受限环境下的自动筛查提供了机会。作为2022年George B. Moody PhysioNet挑战赛的一部分,我们的团队Life_Is _Now开发了一种使用深度学习分类器集合的计算方法,用于从PCG中识别异常心功能。分层5重交叉验证用于模型开发和评估杂音和临床结果识别。我们训练的分类器的主干是基于AudioSet-Youtube语料库(YAMNet)和迁移学习的改进预训练深度卷积神经网络。YAMNet模型在公开可用的PhysioNet数据集上进行修改和微调。我们的杂音和临床结果分类器在公共训练集的交叉验证中获得了0.831的加权准确率分数和14850的挑战成本分数。在隐藏验证集上,我们的杂音得分为0.678,结果得分为10,518。但是,我们没有收到隐藏测试集的官方分数,因为我们的条目在测试集的评估中崩溃了。
Heart Murmur Detection Using Ensemble of Deep Learning Classifiers for Phonocardiograms Recorded from Multiple Auscultation Locations
A digital phonocardiogram (PCG) provides an opportunity for automated screening in resource-constrained environments. As part of the George B. Moody PhysioNet Challenge 2022, our team, Life_Is _Now, developed a computational approach using an ensemble of deep learning classifiers for identifying abnormal cardiac function from PCG. A stratified 5-fold cross-validation was used for model development and evaluation for murmur and clinical outcome identification. The backbone of our trained classifiers is a modified pre-trained deep convolutional neural network on AudioSet-Youtube corpus (YAMNet) and transfer learning. The YAMNet model is modified and finetuned on the publicly available PhysioNet dataset. Our murmur and clinical outcome classifiers received a weighted accuracy score of 0.831 and a Challenge cost score of 14,850 from cross-validation on the public training set. Our murmur scores were 0.678 and outcome score were 10,518 on the hidden validation set. However, we did not receive the official score for the hidden test set as our entry crashed in evaluation on the test set.