Feasibility of Transfer Learning from Finger PPG to In-Ear PPG.

Harry J Davies, Marek Zylinski, Matteo Bermond, Zhuang Liu, Morteza Khaleghimeybodi, Danilo P Mandic
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Abstract

The success of deep learning methods has enabled many modern wearable health applications, but has also highlighted the critical caveat of their extremely data hungry nature. While the widely explored wrist and finger photoplethysmography (PPG) sites are less affected, given the large available databases, this issue is prohibitive to exploring the full potential of novel recording locations such as in-ear wearables. To this end, we assess the feasibility of transfer learning from finger PPG to in-ear PPG in the context of deep learning for respiratory monitoring. This is achieved by introducing an encoder-decoder framework which is set up to extract respiratory waveforms from PPG, whereby simultaneously recorded gold standard respiratory waveforms (capnography, impedance pneumography and air flow) are used as a training reference. Next, the data augmentation and training pipeline is examined for both training on finger PPG and the subsequent fine tuning on in-ear PPG. The results indicate that, through training on two large finger PPG data sets (95 subjects) and then retraining on our own small in-ear PPG data set (6 subjects), the model achieves lower and more consistent test error for the prediction of the respiratory waveforms, compared to training on the small in-ear data set alone. This conclusively demonstrates the feasibility of transfer learning from finger PPG to in-ear PPG, leading to better generalisation across a wide range of respiratory rates.

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从手指 PPG 向入耳式 PPG 转移学习的可行性。
深度学习方法的成功为许多现代可穿戴健康应用提供了可能,但也凸显了其对数据极度饥渴的特性这一重要缺陷。虽然广泛使用的手腕和手指血压计(PPG)受到的影响较小,但由于现有数据库庞大,这一问题阻碍了我们充分挖掘耳内可穿戴设备等新型记录位置的潜力。为此,我们在呼吸监测深度学习的背景下,评估了从手指 PPG 向耳内式 PPG 转移学习的可行性。为此,我们引入了一个编码器-解码器框架,该框架用于从 PPG 中提取呼吸波形,并将同时记录的金标准呼吸波形(毛细血管造影、阻抗气动造影和气流)作为训练参考。接下来,对数据增强和训练管道进行了检查,包括手指 PPG 训练和随后的耳内 PPG 微调。结果表明,通过在两个大型手指 PPG 数据集(95 名受试者)上进行训练,然后在我们自己的小型耳内 PPG 数据集(6 名受试者)上进行再训练,与单独在小型耳内数据集上进行训练相比,该模型在预测呼吸波形方面的测试误差更小、更一致。这充分证明了从手指 PPG 向耳内式 PPG 转移学习的可行性,从而在广泛的呼吸频率范围内实现更好的泛化。
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