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AF classification from a short single lead ECG recording: The PhysioNet/computing in cardiology challenge 2017

机译:自动对自动对焦分类,短单引脚ECG记录:2017年心脏病学挑战中的物理仪/计算

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The PhysioNet/Computing in Cardiology (CinC) Challenge 2017 focused on differentiating AF from noise, normal or other rhythms in short term (from 9-61 s) ECG recordings performed by patients. A total of 12,186 ECGs were used: 8,528 in the public training set and 3,658 in the private hidden test set. Due to the high degree of inter-expert disagreement between a significant fraction of the expert labels we implemented a mid-competition bootstrap approach to expert relabeling of the data, levering the best performing Challenge entrants' algorithms to identify contentious labels. A total of 75 independent teams entered the Challenge using a variety of traditional and novel methods, ranging from random forests to a deep learning approach applied to the raw data in the spectral domain. Four teams won the Challenge with an equal high F1 score (averaged across all classes) of 0.83, although the top 11 algorithms scored within 2% of this. A combination of 45 algorithms identified using LASSO achieved an F1 of 0.87, indicating that a voting approach can boost performance.
机译:2017年心脏病学(CINC)挑战的物理仪/计算集中在短期内的噪音,正常或其他节奏(从9-61秒的9-61秒)ECG录音。共使用12,186个ECG:公共培训集8,528,私人隐藏试验集中为3,658。由于专家标签的大部分大部分之间的高度专业间分歧,我们实施了中竞争对重的抢夺方法,以衡量最佳表现挑战进入者的算法来识别有争议的标签。共有75名独立团队使用各种传统和新方法进入挑战,从随机林到应用于频谱域中原始数据的深度学习方法。四个团队赢得了0.83的平等高F1得分(平均围绕所有课程平均)赢得了挑战,尽管前面11个算法在其它的2 %之内。使用套索识别的45种算法的组合实现了0.87的F1,表明投票方法可以提高性能。

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