P. Sundararajan, Kevin Moses, C. Potes, S. Parvaneh
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引用次数: 0
摘要
心电图是临床诊断心电异常的重要工具。作为PhysioNet/Computing in Cardiology Challenge 2021的一部分,公共训练数据集的10倍迭代分割中的8倍和2倍被用作内部训练和内部验证集。我们使用从随机卷积核变换(RandOm Convolutional KErnel Transforms, ROCKETs)中提取的特征,并使用XGBoost进行多标签分类来预测心脏异常。我们的团队,LINC,开发了一种预处理最少的方法(例如,将数据重新采样到500Hz),没有QRS检测或深度神经网络设计,这导致了内部验证集上有希望的性能。我们没有收到验证和测试集的官方分数,因为我们在官方阶段的训练中提交了一个不完整的条目,导致我们的条目失败。在挑战评估指标(10秒ECG)的内部验证集上,我们的分类器对12导联、6导联、4导联、3导联和2导联版本的评分分别为0.504、0.466、0.459、0.458和0.438。
Automatic Diagnosis of Cardiac Disease from Twelve-Lead and Reduced-Lead ECGs Using Multilabel Classification
ECG is an essential tool for the clinical diagnosis of cardiac electrical abnormalities. As part of the PhysioNet/Computing in Cardiology Challenge 2021, eight and two folds from the 10-folds iterative splitting of public training data set were used as in-house training and internal validation sets. We used extracted features from RandOm Convolutional KErnel Transforms (ROCKETs) with a multilabel classification using XGBoost to predict cardiac abnormalities. Our team, LINC, developed an approach with minimal pre-processing (e.g., resampling data to 500Hz) and with no QRS detection or deep neural network design, which led to promising performance on the internal validation set. We didn't receive the official scores for the validation and test sets, because our entry failed during training in the official phase as we submitted an incomplete entry. Our classifiers received scores of 0.504, 0.466, 0.459, 0.458, and 0.438 for the 12-lead, 6-lead, 4-lead, 3-lead, and 2-lead versions on the internal validation set with the challenge evaluation metric (10 seconds ECG).