KIS*MED - AI Systems in Medicine, Technische Universität Darmstadt, Darmstadt, Germany.
Institute of Scientific Instruments of the Czech Academy of Sciences, Brno, Czech Republic.
Physiol Meas. 2022 Jul 7;43(7):074001. doi: 10.1088/1361-6579/ac7840.
During the lockdown of universities and the COVID-Pandemic most students were restricted to their homes. Novel and instigating teaching methods were required to improve the learning experience and so recent implementations of the annual PhysioNet/Computing in Cardiology (CinC) Challenges posed as a reference. For over 20 years, the challenges have proven repeatedly to be of immense educational value, besides leading to technological advances for specific problems. In this paper, we report results from the class 'Artificial Intelligence in Medicine Challenge', which was implemented as an online project seminar at Technical University Darmstadt, Germany, and which was heavily inspired by the PhysioNet/CinC Challenge 2017 'AF Classification from a Short Single Lead ECG Recording'. Atrial fibrillation is a common cardiac disease and often remains undetected. Therefore, we selected the two most promising models of the course and give an insight into the Transformer-based DualNet architecture as well as into the CNN-LSTM-based model and finally a detailed analysis for both. In particular, we show the model performance results of our internal scoring process for all submitted models and the near state-of-the-art model performance for the two named models on the official 2017 challenge test set. Several teams were able to achieve Fscores above/close to 90% on a hidden test-set of Holter recordings. We highlight themes commonly observed among participants, and report the results from the self-assessed student evaluation. Finally, the self-assessment of the students reported a notable increase in machine learning knowledge.
在大学封锁和 COVID-19 大流行期间,大多数学生都被限制在家中。需要新的和有启发性的教学方法来改善学习体验,因此最近实施的年度 PhysioNet/Computing in Cardiology (CinC) 挑战赛就是一个很好的参考。20 多年来,这些挑战一再被证明具有巨大的教育价值,除了为特定问题带来技术进步外。在本文中,我们报告了在德国达姆施塔特工业大学实施的“人工智能在医学挑战赛”的结果,该挑战赛是作为在线项目研讨会实施的,深受 PhysioNet/CinC 挑战赛 2017“从单导联 ECG 记录中进行房颤分类”的启发。房颤是一种常见的心脏病,常常未被发现。因此,我们选择了课程中最有前途的两个模型,并深入探讨了基于 Transformer 的 DualNet 架构以及基于 CNN-LSTM 的模型,最后对这两个模型进行了详细分析。特别是,我们展示了我们内部评分过程的所有提交模型的模型性能结果,以及在官方 2017 年挑战赛测试集中这两个命名模型的接近最新技术水平的模型性能。几个团队能够在 Holter 记录的隐藏测试集中实现 F 分数高于/接近 90%。我们强调了参与者中常见的主题,并报告了学生自我评估的结果。最后,学生的自我评估报告显示,他们的机器学习知识有了显著提高。