Constraint Latent Space Matters: An Anti-anomalous Waveform Transformation Solution from Photoplethysmography to Arterial Blood Pressure

Authors

  • Cheng Bian OPPO Health Lab
  • Xiaoyu Li OPPO Health Lab
  • Qi Bi OPPO Health Lab
  • Guangpu Zhu OPPO Health Lab
  • Jiegeng Lyu OPPO Health Lab
  • Weile Zhang OPPO Health Lab
  • Yelei Li OPPO Health Lab
  • Zijing Zeng OPPO Health Lab

DOI:

https://doi.org/10.1609/aaai.v38i10.28985

Keywords:

ML: Time-Series/Data Streams, ML: Deep Generative Models & Autoencoders

Abstract

Arterial blood pressure (ABP) holds substantial promise for proactive cardiovascular health management. Notwithstanding its potential, the invasive nature of ABP measurements confines their utility primarily to clinical environments, limiting their applicability for continuous monitoring beyond medical facilities. The conversion of photoplethysmography (PPG) signals into ABP equivalents has garnered significant attention due to its potential in revolutionizing cardiovascular disease management. Recent strides in PPG-to-ABP prediction encompass the integration of generative and discriminative models. Despite these advances, the efficacy of these models is curtailed by the latent space shift predicament, stemming from alterations in PPG data distribution across disparate hardware and individuals, potentially leading to distorted ABP waveforms. To tackle this problem, we present an innovative solution named the Latent Space Constraint Transformer (LSCT), leveraging a quantized codebook to yield robust latent spaces by employing multiple discretizing bases. To facilitate improved reconstruction, the Correlation-boosted Attention Module (CAM) is introduced to systematically query pertinent bases on a global scale. Furthermore, to enhance expressive capacity, we propose the Multi-Spectrum Enhancement Knowledge (MSEK), which fosters local information flow within the channels of latent code and provides additional embedding for reconstruction. Through comprehensive experimentation on both publicly available datasets and a private downstream task dataset, the proposed approach demonstrates noteworthy performance enhancements compared to existing methods. Extensive ablation studies further substantiate the effectiveness of each introduced module.

Published

2024-03-24

How to Cite

Bian, C., Li, X., Bi, Q., Zhu, G., Lyu, J., Zhang, W., … Zeng, Z. (2024). Constraint Latent Space Matters: An Anti-anomalous Waveform Transformation Solution from Photoplethysmography to Arterial Blood Pressure. Proceedings of the AAAI Conference on Artificial Intelligence, 38(10), 11087–11095. https://doi.org/10.1609/aaai.v38i10.28985

Issue

Section

AAAI Technical Track on Machine Learning I