Feasibility of Unobtrusively Estimating Blood Pressure Using Load Cells under the Legs of a Bed.
Gary Garcia-MolinaPublished in: Sensors (Basel, Switzerland) (2023)
The ability to monitor blood pressure unobtrusively and continuously, even during sleep, may promote the prevention of cardiovascular diseases, enable the early detection of cardiovascular risk, and facilitate the timely administration of treatment. Publicly available data from forty participants containing synchronously recorded signals from four force sensors (load cells located under each leg of a bed) and continuous blood pressure waveforms were leveraged in this research. The focus of this study was on using a deep neural network with load-cell data as input composed of three recurrent layers to reconstruct blood pressure (BP) waveforms. Systolic (SBP) and diastolic (DBP) blood pressure values were estimated from the reconstructed BP waveform. The dataset was partitioned into training, validation, and testing sets, such that the data from a given participant were only used in a single set. The BP waveform reconstruction performance resulted in an R 2 of 0.61 and a mean absolute error < 0.1 mmHg. The estimation of the mean SBP and DBP values was characterized by Bland-Altman-derived limits of agreement in intervals of [-11.99 to 15.52 mmHg] and [-7.95 to +3.46 mmHg], respectively. These results may enable the detection of abnormally large or small variations in blood pressure, which indicate cardiovascular health degradation. The apparent contrast between the small reconstruction error and the limit-of-agreement width owes to the fact that reconstruction errors manifest more prominently at the maxima and minima, which are relevant for SBP and DBP estimation. While the focus here was on SBD and DBP estimation, reconstructing the entire BP waveform enables the calculation of additional hemodynamic parameters.
Keyphrases
- blood pressure
- hypertensive patients
- heart rate
- induced apoptosis
- cardiovascular disease
- electronic health record
- neural network
- cell cycle arrest
- big data
- blood glucose
- physical activity
- oxidative stress
- magnetic resonance imaging
- machine learning
- signaling pathway
- computed tomography
- mesenchymal stem cells
- metabolic syndrome
- emergency department
- patient safety
- coronary artery disease
- artificial intelligence
- ejection fraction
- depressive symptoms
- skeletal muscle
- adverse drug
- cardiovascular events
- single cell
- smoking cessation
- monte carlo
- sensitive detection