Litcius/Paper detail

A benchmark for machine-learning based non-invasive blood pressure estimation using photoplethysmogram

Sergio González, Wan‐Ting Hsieh, Trista Pei-Chun Chen

2023Scientific Data77 citationsDOIOpen Access PDF

Abstract

Blood Pressure (BP) is an important cardiovascular health indicator. BP is usually monitored non-invasively with a cuff-based device, which can be bulky and inconvenient. Thus, continuous and portable BP monitoring devices, such as those based on a photoplethysmography (PPG) waveform, are desirable. In particular, Machine Learning (ML) based BP estimation approaches have gained considerable attention as they have the potential to estimate intermittent or continuous BP with only a single PPG measurement. Over the last few years, many ML-based BP estimation approaches have been proposed with no agreement on their modeling methodology. To ease the model comparison, we designed a benchmark with four open datasets with shared preprocessing, the right validation strategy avoiding information shift and leak, and standard evaluation metrics. We also adapted Mean Absolute Scaled Error (MASE) to improve the interpretability of model evaluation, especially across different BP datasets. The proposed benchmark comes with open datasets and codes. We showcase its effectiveness by comparing 11 ML-based approaches of three different categories.

Topics & Concepts

PhotoplethysmogramBenchmark (surveying)InterpretabilityComputer sciencePreprocessorArtificial intelligenceMachine learningMean absolute errorData miningPattern recognition (psychology)Mean squared errorStatisticsMathematicsFilter (signal processing)Computer visionGeographyGeodesyNon-Invasive Vital Sign MonitoringHeart Rate Variability and Autonomic ControlHemodynamic Monitoring and Therapy
A benchmark for machine-learning based non-invasive blood pressure estimation using photoplethysmogram | Litcius