Aim: The George B. Moody PhysioNet Challenge 2022 raised problems of heart murmur detection and related abnormal cardiac function identification from phonocardiograms (PCGs). This work describes the novel approaches developed by our team, Revenger, to solve these problems. Methods: PCGs were resampled to 1000 Hz, then filtered with a Butterworth band-pass filter of order 3, cutoff frequencies 25 - 400 Hz, and z-score normalized. We used the multi-task learning (MTL) method via hard parameter sharing to train one neural network (NN) model for all the Challenge tasks. We performed neural architecture searching among a set of network backbones, including multi-branch convolutional neural networks (CNNs), SE-ResNets, TResNets, simplified wav2vec2, etc. Based on a stratified splitting of the subjects, 20% of the public data was left out as a validation set for model selection. The AdamW optimizer was adopted, along with the OneCycle scheduler, to optimize the model weights. Results: Our murmur detection classifier received a weighted accuracy score of 0.736 (ranked 14th out of 40 teams) and a Challenge cost score of 12944 (ranked 19th out of 39 teams) on the hidden validation set. Conclusion: We provided a practical solution to the problems of detecting heart murmurs and providing clinical diagnosis suggestions from PCGs.
翻译:目标: George B. Mody PhysioNet 挑战 2022 提出了心脏杂音检测问题和通过光心成像(PCGs)确定异常心脏功能的问题。 这项工作描述了我们团队Revenger为解决这些问题而开发的新型方法。 方法: PCGs被重新打压到1000赫兹, 然后用 Butterworth 带宽过滤器过滤到3号订单, 切断频率 25 - 400赫兹, 和z-score 正常化。 我们通过硬参数共享多任务学习(MTL)方法, 为所有挑战任务培训一个神经网络(NN)模型。 我们在一组网络主干线中进行了神经结构搜索, 包括多分支革命神经网络(CNNs)、 SE-ResNets、 TResNets、 简化的 wav2vec2 等。 在对主题进行分解的基础上, 20%的公共数据被留作验证, 用于选择模型。 AdamW 优化了与 OneCle Centrial Clinal Centrial Transmission (我们从 Oral Creval) 收到的40 Crial Crial Crial Crial Sal Sal Schal Sal Sal 的40: 我们提供了一个40分级标准的40分级标准, 标准, 。</s>