Exploring the limitations of blood pressure estimation using the photoplethysmography signal
Felipe M. Dias, Diego A.C. Cardenas, Marcelo A.F. Toledo, Filipe A.C., Oliveira, Estela Ribeiro, Jose E. Krieger, Marco A. Gutierrez

TL;DR
This study evaluates the potential and limitations of using photoplethysmography signals for blood pressure estimation, comparing it to invasive arterial measurements and establishing realistic performance benchmarks.
Contribution
We developed a calibration-based Siamese ResNet model and benchmarked PPG against invasive BP signals, highlighting the constraints of PPG in accurate blood pressure estimation.
Findings
N-IABP signals meet AAMI standards with low error margins.
N-PPG signals show inferior performance compared to N-IABP.
Filtering conditions impact the accuracy of BP estimation.
Abstract
Hypertension, a leading contributor to cardiovascular morbidity, underscores the need for accurate and continuous blood pressure (BP) monitoring. Photoplethysmography (PPG) presents a promising approach to this end. However, the precision of BP estimates derived from PPG signals has been the subject of ongoing debate, necessitating a comprehensive evaluation of their effectiveness and constraints. We developed a calibration-based Siamese ResNet model for BP estimation, using a signal input paired with a reference BP reading. We compared the use of normalized PPG (N-PPG) against the normalized Invasive Arterial Blood Pressure (N-IABP) signals as input. The N-IABP signals do not directly present systolic and diastolic values but theoretically provide a more accurate BP measure than PPG signals since it is a direct pressure sensor inside the body. Our strategy establishes a critical…
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Taxonomy
TopicsNon-Invasive Vital Sign Monitoring
MethodsConvolution · Average Pooling · Max Pooling · Global Average Pooling · Kaiming Initialization
