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INN-PAR: Invertible Neural Network for PPG to ABP Reconstruction

Abstract

Non-invasive and continuous blood pressure (BP) monitoring is essential for the early prevention of many cardiovascular diseases. Estimating arterial blood pressure (ABP) from photoplethysmography (PPG) has emerged as a promising solution. However, existing deep learning approaches for PPG-to-ABP reconstruction (PAR) encounter certain information loss, impacting the precision of the reconstructed signal. To overcome this limitation, we introduce an invertible neural network for PPG to ABP reconstruction (INN-PAR), which employs a series of invertible blocks to jointly learn the mapping between PPG and its gradient with the ABP signal and its gradient. INN-PAR efficiently captures both forward and inverse mappings simultaneously, thereby preventing information loss. By integrating signal gradients into the learning process, INN-PAR enhances the network's ability to capture essential high-frequency details, leading to more accurate signal reconstruction. Moreover, we propose a multi-scale convolution module (MSCM) within the invertible block, enabling the model to learn features across multiple scales effectively. We have experimented on two benchmark datasets, which show that INN-PAR significantly outperforms the state-of-the-art methods in both waveform reconstruction and BP measurement accuracy. Codes can be found at:this https URL.

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@article{kundu2025_2409.09021,
  title={ INN-PAR: Invertible Neural Network for PPG to ABP Reconstruction },
  author={ Soumitra Kundu and Gargi Panda and Saumik Bhattacharya and Aurobinda Routray and Rajlakshmi Guha },
  journal={arXiv preprint arXiv:2409.09021},
  year={ 2025 }
}
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