Estimating blood pressure trends and the nocturnal dip from photoplethysmograph
Mustafa Radha, Koen de Groot, Nikita Rajani, Cybele CP Wong, Nadja, Kobold, Valentina Vos, Pedro Fonseca, Nikolaos Mastellos, Petra A Wark,, Nathalie Velthoven, Reinder Haakma, Ronald M Aarts

TL;DR
This study demonstrates that deep neural networks, specifically LSTM models, can accurately estimate nocturnal systolic blood pressure dips from wrist-worn PPG sensors, offering a non-intrusive method for monitoring blood pressure trends in free-living individuals.
Contribution
It introduces a novel approach using deep LSTM neural networks to unobtrusively estimate nocturnal blood pressure dips from PPG data in real-world settings.
Findings
LSTM achieved RMSE of 3.12 mmHg for SBP dip estimation.
PPG-based models tracked BP trends with RMSE of 8.22 mmHg (SBP) and 6.55 mmHg (DBP).
First large-scale validation of unobtrusive BP measurement in free-living individuals.
Abstract
Objective: Evaluate a method for the estimation of the nocturnal systolic blood pressure (SBP) dip from 24-hour blood pressure trends using a wrist-worn photoplethysmography (PPG) sensor and a deep neural network in free-living individuals, comparing the deep neural network to traditional machine learning and non-machine learning baselines. Approach: A wrist-worn PPG sensor was worn by 106 healthy individuals for 226 days during which 5111 reference values for blood pressure (BP) were obtained with a 24-hour ambulatory BP monitor and matched with the PPG sensor data. Features based on heart rate variability and pulse morphology were extracted from the PPG waveforms. Long- and short term memory (LSTM) networks, dense networks, random forests and linear regression models were trained and evaluated in their capability of tracking trends in BP, as well as the estimation of the SBP dip.…
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