+/? mutant mice using short ECG s'/> Deep Learning Applied to Attractor Images Derived from ECG Signals for Detection of Genetic Mutation
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Deep Learning Applied to Attractor Images Derived from ECG Signals for Detection of Genetic Mutation

机译:深入学习应用于吸引源自ECG信号的吸引子图像,以检测基因突变

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The aim of this work is to distinguish between wild-type mice and Scn5a+/? mutant mice using short ECG signals. This mutation results in impaired cardiac sodium channel function and is associated with increased ventricular arrhythmogenic risk which can result in sudden cardiac death. Lead I and Lead II ECG signals from wild-type and Scn5a+/? mice are used and the mice are also grouped as female/male and young/old.We use our novel Symmetric Projection Attractor Reconstruction (SPAR) method to generate an attractor from the ECG signal using all of the available waveform data. We have previously manually extracted a variety of quantitative measures from the attractor and used machine learning to classify each animal as either wild-type or mutant. In this work, we take the attractor images and use these as input to a deep learning algorithm in order to perform the same classification. As there is only data available from 42 mice, we use a transfer learning approach in which a network that has been pretrained on millions of images is used as a starting point and the last few layers are changed in order to fine tune the network for the attractor images.The results for the transfer learning approach are not as good as for the manual features, which is not too surprising as the networks have not been trained on attractor images. However, this approach shows the potential for using deep learning for classification of attractor images.
机译:这项工作的目的是区分野生型小鼠和SCN5A + /? 使用短ECG信号的突变小鼠。这种突变导致心脏钠通道功能受损,并且与可能导致突然心脏死亡的心室心律失常风险增加。来自野生型和SCN5A的引导I和铅II eCG信号 + /? 使用小鼠,小鼠也被分组为女性/雄性和年轻/旧的。我们使用我们的新型对称投影吸引子​​重建(SPAR)方法使用所有可用波形数据从ECG信号产生吸引子。我们之前手动提取了吸引子和使用过的机器学习的各种定量措施,以将每只动物分类为野生型或突变体。在这项工作中,我们采用吸引子图像并使用这些作为输入到深度学习算法,以便执行相同的分类。由于只有42只小鼠提供的数据,我们使用转移学习方法,其中已经用数百万图像预先磨削的网络用作起始点,并且最后几层改变,以便微调网络吸引人的图像。转移学习方法的结果并不像手动功能那么好,因为网络尚未在吸引子图像上培训并不令人惊讶。然而,这种方法表明了利用深度学习进行吸引子图像分类的可能性。

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